示例#1
0
def attribute_sampled_shapley_values(text_input_ids: torch.Tensor, target: int,
                                     model: BertForSequenceClassification,
                                     settings: Dict[str, Any],
                                     **kwargs) -> Tuple[np.ndarray, None]:
    def forward(model_input):
        pred = model(model_input)
        return torch.softmax(pred[0], dim=1)

    svs = ShapleyValueSampling(forward)

    attributions = svs.attribute(inputs=text_input_ids,
                                 target=target,
                                 n_samples=settings.get("n_samples", 25))

    scores = attributions.cpu().detach().numpy().flatten()

    return scores, None
示例#2
0
def get_shap_attributions(text, tech_tv, tech_bb, true_label):
    try:
        model, tokenizer = get_model(settings.MODEL_NAME, settings.MODEL_STAGE)
    except Exception as e:
        logger.info(f"wtf is going on here: {e}")
    ref_token_id = tokenizer.pad_token_id  # A token used for generating token reference
    sep_token_id = (
        tokenizer.sep_token_id
    )  # A token used as a separator between question and text and it is also added to the end of the text.
    cls_token_id = tokenizer.cls_token_id  # A token used for prepending to the concatenated question-text word sequence

    bert_string = data_utils.stitch_bert_string("", text, tech_tv, tech_bb)

    input_ids, ref_input_ids, _ = construct_input_ref_pair(tokenizer, bert_string, ref_token_id, sep_token_id, cls_token_id)

    indices = input_ids[0].detach().tolist()
    all_tokens = tokenizer.convert_ids_to_tokens(indices)

    pred = model(input_ids)[0]
    pred_proba = torch.softmax(pred, dim=1)[0]
    model_custom = ModelWrapper(model)

    shap = ShapleyValueSampling(model_custom.custom_forward)
    attributions = shap.attribute(
        inputs=input_ids,
        baselines=ref_input_ids,
        target=torch.argmax(pred[0]),
    )

    score_vis = viz.VisualizationDataRecord(
        attributions[0, :],
        torch.softmax(pred, dim=1)[0][torch.argmax(pred[0]).cpu().numpy().item()],
        model.config.id2label[torch.argmax(pred[0]).cpu().numpy().item()],
        true_label,
        model.config.id2label[torch.argmax(pred[0]).cpu().numpy().item()],
        attributions.sum(),
        all_tokens,
        0,
    )

    labels = list(model.config.id2label.values())

    return score_vis, pred_proba, labels
def main(args):

    train_loader, test_loader = data_generator(args.data_dir,1)

    for m in range(len(models)):

        model_name = "model_{}_NumFeatures_{}".format(models[m],args.NumFeatures)
        model_filename = args.model_dir + 'm_' + model_name + '.pt'
        pretrained_model = torch.load(open(model_filename, "rb"),map_location=device) 
        pretrained_model.to(device)



        if(args.GradFlag):
            Grad = Saliency(pretrained_model)
        if(args.IGFlag):
            IG = IntegratedGradients(pretrained_model)
        if(args.DLFlag):
            DL = DeepLift(pretrained_model)
        if(args.GSFlag):
            GS = GradientShap(pretrained_model)
        if(args.DLSFlag):
            DLS = DeepLiftShap(pretrained_model)                 
        if(args.SGFlag):
            Grad_ = Saliency(pretrained_model)
            SG = NoiseTunnel(Grad_)
        if(args.ShapleySamplingFlag):
            SS = ShapleyValueSampling(pretrained_model)
        if(args.GSFlag):
            FP = FeaturePermutation(pretrained_model)
        if(args.FeatureAblationFlag):
            FA = FeatureAblation(pretrained_model)         
        if(args.OcclusionFlag):
            OS = Occlusion(pretrained_model)

        timeMask=np.zeros((args.NumTimeSteps, args.NumFeatures),dtype=int)
        featureMask=np.zeros((args.NumTimeSteps, args.NumFeatures),dtype=int)
        for i in  range (args.NumTimeSteps):
            timeMask[i,:]=i

        for i in  range (args.NumTimeSteps):
            featureMask[:,i]=i

        indexes = [[] for i in range(5,10)]
        for i ,(data, target) in enumerate(test_loader):
            if(target==5 or target==6 or target==7 or target==8 or target==9):
                index=target-5

                if(len(indexes[index])<1):
                    indexes[index].append(i)
        for j, index in enumerate(indexes):
            print(index)
        # indexes = [[21],[17],[84],[9]]

        for j, index in enumerate(indexes):
            print("Getting Saliency for number", j+1)
            for i, (data, target) in enumerate(test_loader):
                if(i in index):
                        
                    labels =  target.to(device)
             
                    input = data.reshape(-1, args.NumTimeSteps, args.NumFeatures).to(device)
                    input = Variable(input,  volatile=False, requires_grad=True)

                    baseline_single=torch.Tensor(np.random.random(input.shape)).to(device)
                    baseline_multiple=torch.Tensor(np.random.random((input.shape[0]*5,input.shape[1],input.shape[2]))).to(device)
                    inputMask= np.zeros((input.shape))
                    inputMask[:,:,:]=timeMask
                    inputMask =torch.Tensor(inputMask).to(device)
                    mask_single= torch.Tensor(timeMask).to(device)
                    mask_single=mask_single.reshape(1,args.NumTimeSteps, args.NumFeatures).to(device)

                    Data=data.reshape(args.NumTimeSteps, args.NumFeatures).data.cpu().numpy()
                    
                    target_=int(target.data.cpu().numpy()[0])

                    plotExampleBox(Data,args.Graph_dir+'Sample_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)




                    if(args.GradFlag):
                        attributions = Grad.attribute(input, \
                                                      target=labels)
                        
                        saliency_=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,attributions)

                        plotExampleBox(saliency_[0],args.Graph_dir+models[m]+'_Grad_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)
                        if(args.TSRFlag):
                            TSR_attributions =  getTwoStepRescaling(Grad,input, args.NumFeatures,args.NumTimeSteps, labels,hasBaseline=None)
                            TSR_saliency=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,TSR_attributions,isTensor=False)
                            plotExampleBox(TSR_saliency,args.Graph_dir+models[m]+'_TSR_Grad_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)



                    if(args.IGFlag):
                        attributions = IG.attribute(input,  \
                                                    baselines=baseline_single, \
                                                    target=labels)
                        saliency_=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,attributions)

                        plotExampleBox(saliency_[0],args.Graph_dir+models[m]+'_IG_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)
                        if(args.TSRFlag):
                            TSR_attributions =  getTwoStepRescaling(IG,input, args.NumFeatures,args.NumTimeSteps, labels,hasBaseline=baseline_single)
                            TSR_saliency=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,TSR_attributions,isTensor=False)
                            plotExampleBox(TSR_saliency,args.Graph_dir+models[m]+'_TSR_IG_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)




                    if(args.DLFlag):
                        attributions = DL.attribute(input,  \
                                                    baselines=baseline_single, \
                                                    target=labels)
                        saliency_=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,attributions)
                        plotExampleBox(saliency_[0],args.Graph_dir+models[m]+'_DL_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)


                        if(args.TSRFlag):
                            TSR_attributions =  getTwoStepRescaling(DL,input, args.NumFeatures,args.NumTimeSteps, labels,hasBaseline=baseline_single)
                            TSR_saliency=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,TSR_attributions,isTensor=False)
                            plotExampleBox(TSR_saliency,args.Graph_dir+models[m]+'_TSR_DL_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)




                    if(args.GSFlag):

                        attributions = GS.attribute(input,  \
                                                    baselines=baseline_multiple, \
                                                    stdevs=0.09,\
                                                    target=labels)
                        saliency_=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,attributions)
                        plotExampleBox(saliency_[0],args.Graph_dir+models[m]+'_GS_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)

 
                        if(args.TSRFlag):
                            TSR_attributions =  getTwoStepRescaling(GS,input, args.NumFeatures,args.NumTimeSteps, labels,hasBaseline=baseline_multiple)
                            TSR_saliency=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,TSR_attributions,isTensor=False)
                            plotExampleBox(TSR_saliency,args.Graph_dir+models[m]+'_TSR_GS_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)


                    if(args.DLSFlag):

                        attributions = DLS.attribute(input,  \
                                                    baselines=baseline_multiple, \
                                                    target=labels)
                        saliency_=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,attributions)
                        plotExampleBox(saliency_[0],args.Graph_dir+models[m]+'_DLS_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)
                        if(args.TSRFlag):
                            TSR_attributions =  getTwoStepRescaling(DLS,input, args.NumFeatures,args.NumTimeSteps, labels,hasBaseline=baseline_multiple)
                            TSR_saliency=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,TSR_attributions,isTensor=False)
                            plotExampleBox(TSR_saliency,args.Graph_dir+models[m]+'_TSR_DLS_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)



                    if(args.SGFlag):
                        attributions = SG.attribute(input, \
                                                    target=labels)
                        saliency_=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,attributions)
                        plotExampleBox(saliency_[0],args.Graph_dir+models[m]+'_SG_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)
                        if(args.TSRFlag):
                            TSR_attributions =  getTwoStepRescaling(SG,input, args.NumFeatures,args.NumTimeSteps, labels)
                            TSR_saliency=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,TSR_attributions,isTensor=False)
                            plotExampleBox(TSR_saliency,args.Graph_dir+models[m]+'_TSR_SG_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)


                    if(args.ShapleySamplingFlag):
                        attributions = SS.attribute(input, \
                                        baselines=baseline_single, \
                                        target=labels,\
                                        feature_mask=inputMask)
                        saliency_=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,attributions)
                        plotExampleBox(saliency_[0],args.Graph_dir+models[m]+'_SVS_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)
                        if(args.TSRFlag):
                            TSR_attributions =  getTwoStepRescaling(SS,input, args.NumFeatures,args.NumTimeSteps, labels,hasBaseline=baseline_single,hasFeatureMask=inputMask)
                            TSR_saliency=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,TSR_attributions,isTensor=False)
                            plotExampleBox(TSR_saliency,args.Graph_dir+models[m]+'_TSR_SVS_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)
                    # if(args.FeaturePermutationFlag):
                    #     attributions = FP.attribute(input, \
                    #                     target=labels),
                    #                     # perturbations_per_eval= 1,\
                    #                     # feature_mask=mask_single)
                    #     saliency_=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,attributions)
                    #     plotExampleBox(saliency_[0],args.Graph_dir+models[m]+'_FP',greyScale=True)


                    if(args.FeatureAblationFlag):
                        attributions = FA.attribute(input, \
                                        target=labels)
                                        # perturbations_per_eval= input.shape[0],\
                                        # feature_mask=mask_single)
                        saliency_=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,attributions)
                        plotExampleBox(saliency_[0],args.Graph_dir+models[m]+'_FA_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)
                        if(args.TSRFlag):
                            TSR_attributions =  getTwoStepRescaling(FA,input, args.NumFeatures,args.NumTimeSteps, labels)
                            TSR_saliency=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,TSR_attributions,isTensor=False)
                            plotExampleBox(TSR_saliency,args.Graph_dir+models[m]+'_TSR_FA_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)

                    if(args.OcclusionFlag):
                        attributions = OS.attribute(input, \
                                        sliding_window_shapes=(1,int(args.NumFeatures/10)),
                                        target=labels,
                                        baselines=baseline_single)
                        saliency_=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,attributions)

                        plotExampleBox(saliency_[0],args.Graph_dir+models[m]+'_FO_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)
                        if(args.TSRFlag):
                            TSR_attributions =  getTwoStepRescaling(OS,input, args.NumFeatures,args.NumTimeSteps, labels,hasBaseline=baseline_single,hasSliding_window_shapes= (1,int(args.NumFeatures/10)))
                            TSR_saliency=Helper.givenAttGetRescaledSaliency(args.NumTimeSteps, args.NumFeatures,TSR_attributions,isTensor=False)
                            plotExampleBox(TSR_saliency,args.Graph_dir+models[m]+'_TSR_FO_MNIST_'+str(target_)+'_index_'+str(i+1),greyScale=True)
示例#4
0
 def extract_SV(self, X_test):
     Sv = ShapleyValueSampling(self.net)
     start = time.time()
     sv_attr_test = Sv.attribute(X_test.to(self.device))
     print("temps train", time.time() - start)
     return sv_attr_test.detach().cpu().numpy()
示例#5
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# heloc_checkpoint = "cchvae/classifier-heloc.ckpt"
heloc_checkpoint = "checkpoints/stl-21-04-21-08-11-33/heloc-epoch=196-loss_validate=0.37-top-validate.ckpt"

heloc = pd.read_csv("data/heloc/heloc_dataset_v1_pruned.csv", index_col=False)
# print(heloc)
heloc_c = pd.read_csv("data/heloc/counterfactuals.csv",
                      header=None,
                      index_col=False)
amplified_heloc_c = pd.read_csv("data/heloc/augmented_counterfactuals.csv",
                                index_col=False)

heloc_t = heloc["RiskPerformance"].map(lambda target: 1
                                       if target == "Good" else 0)
heloc["RiskPerformance"] = heloc_t

classifier = SingleTaskLearner.load_from_checkpoint(heloc_checkpoint)
sv = ShapleyValueSampling(classifier)

heloc_shapley_values = []
labels = Labels(heloc.to_numpy())
targets, predictors = split_normalized(labels.labels)
with tqdm(total=len(targets)) as progress_bar:
    for predictor in predictors.values:
        inp = torch.tensor(predictor, dtype=torch.float32).unsqueeze(0)
        attributions = sv.attribute(inp, target=0)
        heloc_shapley_values.append(attributions)
        progress_bar.update(1)

df = DataFrame(heloc_shapley_values, index=None)
df.to_csv("data/heloc/shapley_heloc_pruned.csv")
示例#6
0
def run_saliency_methods(saliency_methods,
                         pretrained_model,
                         test_shape,
                         train_loader,
                         test_loader,
                         device,
                         model_type,
                         model_name,
                         saliency_dir,
                         tsr_graph_dir=None,
                         tsr_inputs_to_graph=()):
    _, num_timesteps, num_features = test_shape

    run_grad = "Grad" in saliency_methods
    run_grad_tsr = "Grad_TSR" in saliency_methods
    run_ig = "IG" in saliency_methods
    run_ig_tsr = "IG_TSR" in saliency_methods
    run_dl = "DL" in saliency_methods
    run_gs = "GS" in saliency_methods
    run_dls = "DLS" in saliency_methods
    run_dls_tsr = "DLS_TSR" in saliency_methods
    run_sg = "SG" in saliency_methods
    run_shapley_sampling = "ShapleySampling" in saliency_methods
    run_feature_permutation = "FeaturePermutation" in saliency_methods
    run_feature_ablation = "FeatureAblation" in saliency_methods
    run_occlusion = "Occlusion" in saliency_methods
    run_fit = "FIT" in saliency_methods
    run_ifit = "IFIT" in saliency_methods
    run_wfit = "WFIT" in saliency_methods
    run_iwfit = "IWFIT" in saliency_methods

    if run_grad or run_grad_tsr:
        Grad = Saliency(pretrained_model)
    if run_grad:
        rescaledGrad = np.zeros(test_shape)
    if run_grad_tsr:
        rescaledGrad_TSR = np.zeros(test_shape)

    if run_ig or run_ig_tsr:
        IG = IntegratedGradients(pretrained_model)
    if run_ig:
        rescaledIG = np.zeros(test_shape)
    if run_ig_tsr:
        rescaledIG_TSR = np.zeros(test_shape)

    if run_dl:
        rescaledDL = np.zeros(test_shape)
        DL = DeepLift(pretrained_model)

    if run_gs:
        rescaledGS = np.zeros(test_shape)
        GS = GradientShap(pretrained_model)

    if run_dls or run_dls_tsr:
        DLS = DeepLiftShap(pretrained_model)
    if run_dls:
        rescaledDLS = np.zeros(test_shape)
    if run_dls_tsr:
        rescaledDLS_TSR = np.zeros(test_shape)

    if run_sg:
        rescaledSG = np.zeros(test_shape)
        Grad_ = Saliency(pretrained_model)
        SG = NoiseTunnel(Grad_)

    if run_shapley_sampling:
        rescaledShapleySampling = np.zeros(test_shape)
        SS = ShapleyValueSampling(pretrained_model)

    if run_gs:
        rescaledFeaturePermutation = np.zeros(test_shape)
        FP = FeaturePermutation(pretrained_model)

    if run_feature_ablation:
        rescaledFeatureAblation = np.zeros(test_shape)
        FA = FeatureAblation(pretrained_model)

    if run_occlusion:
        rescaledOcclusion = np.zeros(test_shape)
        OS = Occlusion(pretrained_model)

    if run_fit:
        rescaledFIT = np.zeros(test_shape)
        FIT = FITExplainer(pretrained_model, ft_dim_last=True)
        generator = JointFeatureGenerator(num_features, data='none')
        # TODO: Increase epochs
        FIT.fit_generator(generator, train_loader, test_loader, n_epochs=300)

    if run_ifit:
        rescaledIFIT = np.zeros(test_shape)
    if run_wfit:
        rescaledWFIT = np.zeros(test_shape)
    if run_iwfit:
        rescaledIWFIT = np.zeros(test_shape)

    idx = 0
    mask = np.zeros((num_timesteps, num_features), dtype=int)
    for i in range(num_timesteps):
        mask[i, :] = i

    for i, (samples, labels) in enumerate(test_loader):
        input = samples.reshape(-1, num_timesteps, num_features).to(device)
        input = Variable(input, volatile=False, requires_grad=True)

        batch_size = input.shape[0]
        baseline_single = torch.from_numpy(np.random.random(
            input.shape)).to(device)
        baseline_multiple = torch.from_numpy(
            np.random.random((input.shape[0] * 5, input.shape[1],
                              input.shape[2]))).to(device)
        inputMask = np.zeros((input.shape))
        inputMask[:, :, :] = mask
        inputMask = torch.from_numpy(inputMask).to(device)
        mask_single = torch.from_numpy(mask).to(device)
        mask_single = mask_single.reshape(1, num_timesteps,
                                          num_features).to(device)
        labels = torch.tensor(labels.int().tolist()).to(device)

        if run_grad:
            attributions = Grad.attribute(input, target=labels)
            rescaledGrad[
                idx:idx +
                batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                    num_timesteps, num_features, attributions)
        if run_grad_tsr:
            rescaledGrad_TSR[idx:idx + batch_size, :, :] = get_tsr_saliency(
                Grad,
                input,
                labels,
                graph_dir=tsr_graph_dir,
                graph_name=f'{model_name}_{model_type}_Grad_TSR',
                inputs_to_graph=tsr_inputs_to_graph,
                cur_batch=i)

        if run_ig:
            attributions = IG.attribute(input,
                                        baselines=baseline_single,
                                        target=labels)
            rescaledIG[idx:idx +
                       batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                           num_timesteps, num_features, attributions)
        if run_ig_tsr:
            rescaledIG_TSR[idx:idx + batch_size, :, :] = get_tsr_saliency(
                IG,
                input,
                labels,
                baseline=baseline_single,
                graph_dir=tsr_graph_dir,
                graph_name=f'{model_name}_{model_type}_IG_TSR',
                inputs_to_graph=tsr_inputs_to_graph,
                cur_batch=i)

        if run_dl:
            attributions = DL.attribute(input,
                                        baselines=baseline_single,
                                        target=labels)
            rescaledDL[idx:idx +
                       batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                           num_timesteps, num_features, attributions)

        if run_gs:
            attributions = GS.attribute(input,
                                        baselines=baseline_multiple,
                                        stdevs=0.09,
                                        target=labels)
            rescaledGS[idx:idx +
                       batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                           num_timesteps, num_features, attributions)

        if run_dls:
            attributions = DLS.attribute(input,
                                         baselines=baseline_multiple,
                                         target=labels)
            rescaledDLS[idx:idx +
                        batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                            num_timesteps, num_features, attributions)
        if run_dls_tsr:
            rescaledDLS_TSR[idx:idx + batch_size, :, :] = get_tsr_saliency(
                DLS,
                input,
                labels,
                baseline=baseline_multiple,
                graph_dir=tsr_graph_dir,
                graph_name=f'{model_name}_{model_type}_DLS_TSR',
                inputs_to_graph=tsr_inputs_to_graph,
                cur_batch=i)

        if run_sg:
            attributions = SG.attribute(input, target=labels)
            rescaledSG[idx:idx +
                       batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                           num_timesteps, num_features, attributions)

        if run_shapley_sampling:
            attributions = SS.attribute(input,
                                        baselines=baseline_single,
                                        target=labels,
                                        feature_mask=inputMask)
            rescaledShapleySampling[
                idx:idx +
                batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                    num_timesteps, num_features, attributions)

        if run_feature_permutation:
            attributions = FP.attribute(input,
                                        target=labels,
                                        perturbations_per_eval=input.shape[0],
                                        feature_mask=mask_single)
            rescaledFeaturePermutation[
                idx:idx +
                batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                    num_timesteps, num_features, attributions)

        if run_feature_ablation:
            attributions = FA.attribute(input, target=labels)
            # perturbations_per_eval= input.shape[0],\
            # feature_mask=mask_single)
            rescaledFeatureAblation[
                idx:idx +
                batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                    num_timesteps, num_features, attributions)

        if run_occlusion:
            attributions = OS.attribute(input,
                                        sliding_window_shapes=(1,
                                                               num_features),
                                        target=labels,
                                        baselines=baseline_single)
            rescaledOcclusion[
                idx:idx +
                batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                    num_timesteps, num_features, attributions)

        if run_fit:
            attributions = torch.from_numpy(FIT.attribute(input, labels))
            rescaledFIT[idx:idx +
                        batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                            num_timesteps, num_features, attributions)

        if run_ifit:
            attributions = torch.from_numpy(
                inverse_fit_attribute(input,
                                      pretrained_model,
                                      ft_dim_last=True))
            rescaledIFIT[idx:idx + batch_size, :, :] = attributions

        if run_wfit:
            attributions = torch.from_numpy(
                wfit_attribute(input,
                               pretrained_model,
                               N=test_shape[1],
                               ft_dim_last=True,
                               single_label=True))
            rescaledWFIT[idx:idx + batch_size, :, :] = attributions

        if run_iwfit:
            attributions = torch.from_numpy(
                wfit_attribute(input,
                               pretrained_model,
                               N=test_shape[1],
                               ft_dim_last=True,
                               single_label=True,
                               inverse=True))
            rescaledIWFIT[idx:idx + batch_size, :, :] = attributions

        idx += batch_size

    if run_grad:
        print("Saving Grad", model_name + "_" + model_type)
        np.save(
            saliency_dir + model_name + "_" + model_type + "_Grad_rescaled",
            rescaledGrad)
    if run_grad_tsr:
        print("Saving Grad_TSR", model_name + "_" + model_type)
        np.save(
            saliency_dir + model_name + "_" + model_type +
            "_Grad_TSR_rescaled", rescaledGrad_TSR)

    if run_ig:
        print("Saving IG", model_name + "_" + model_type)
        np.save(saliency_dir + model_name + "_" + model_type + "_IG_rescaled",
                rescaledIG)
    if run_ig_tsr:
        print("Saving IG_TSR", model_name + "_" + model_type)
        np.save(
            saliency_dir + model_name + "_" + model_type + "_IG_TSR_rescaled",
            rescaledIG_TSR)

    if run_dl:
        print("Saving DL", model_name + "_" + model_type)
        np.save(saliency_dir + model_name + "_" + model_type + "_DL_rescaled",
                rescaledDL)

    if run_gs:
        print("Saving GS", model_name + "_" + model_type)
        np.save(saliency_dir + model_name + "_" + model_type + "_GS_rescaled",
                rescaledGS)

    if run_dls:
        print("Saving DLS", model_name + "_" + model_type)
        np.save(saliency_dir + model_name + "_" + model_type + "_DLS_rescaled",
                rescaledDLS)
    if run_dls_tsr:
        print("Saving DLS_TSR", model_name + "_" + model_type)
        np.save(
            saliency_dir + model_name + "_" + model_type + "_DLS_TSR_rescaled",
            rescaledDLS_TSR)

    if run_sg:
        print("Saving SG", model_name + "_" + model_type)
        np.save(saliency_dir + model_name + "_" + model_type + "_SG_rescaled",
                rescaledSG)

    if run_shapley_sampling:
        print("Saving ShapleySampling", model_name + "_" + model_type)
        np.save(
            saliency_dir + model_name + "_" + model_type +
            "_ShapleySampling_rescaled", rescaledShapleySampling)

    if run_feature_permutation:
        print("Saving FeaturePermutation", model_name + "_" + model_type)
        np.save(
            saliency_dir + model_name + "_" + model_type +
            "_FeaturePermutation_rescaled", rescaledFeaturePermutation)

    if run_feature_ablation:
        print("Saving FeatureAblation", model_name + "_" + model_type)
        np.save(
            saliency_dir + model_name + "_" + model_type +
            "_FeatureAblation_rescaled", rescaledFeatureAblation)

    if run_occlusion:
        print("Saving Occlusion", model_name + "_" + model_type)
        np.save(
            saliency_dir + model_name + "_" + model_type +
            "_Occlusion_rescaled", rescaledOcclusion)

    if run_fit:
        print("Saving FIT", model_name + "_" + model_type)
        np.save(saliency_dir + model_name + "_" + model_type + "_FIT_rescaled",
                rescaledFIT)

    if run_ifit:
        print("Saving IFIT", model_name + "_" + model_type)
        np.save(
            saliency_dir + model_name + "_" + model_type + "_IFIT_rescaled",
            rescaledIFIT)

    if run_wfit:
        print("Saving WFIT", model_name + "_" + model_type)
        np.save(
            saliency_dir + model_name + "_" + model_type + "_WFIT_rescaled",
            rescaledWFIT)

    if run_iwfit:
        print("Saving IWFIT", model_name + "_" + model_type)
        np.save(
            saliency_dir + model_name + "_" + model_type + "_IWFIT_rescaled",
            rescaledIWFIT)
示例#7
0
def visualize_maps(
        model: torch.nn.Module,
        inputs: Union[Tuple[torch.Tensor, torch.Tensor]],
        labels: torch.Tensor,
        title: str,
        second_occlusion: Tuple[int, int, int] = (1, 2, 2),
        baselines: Tuple[int, int] = (0, 0),
        closest: bool = False,
) -> None:
    """
    Visualizes the average of the inputs, or the single input, using various different XAI approaches
    """
    single = inputs[1].ndim == 2
    model.zero_grad()
    model.eval()
    occ = Occlusion(model)
    saliency = Saliency(model)
    saliency = NoiseTunnel(saliency)
    igrad = IntegratedGradients(model)
    igrad_2 = NoiseTunnel(igrad)
    # deep_lift = DeepLift(model)
    grad_shap = ShapleyValueSampling(model)
    output = model(inputs[0], inputs[1])
    output = F.softmax(output, dim=-1).argmax(dim=1, keepdim=True)
    labels = F.softmax(labels, dim=-1).argmax(dim=1, keepdim=True)
    if np.all(labels.cpu().numpy() == 1) and not closest:
        return
    if True:
        targets = labels
    else:
        targets = output
    print(targets)
    correct = targets.cpu().numpy() == labels.cpu().numpy()
    # if correct:
    #   return
    occ_out = occ.attribute(
        inputs,
        baselines=baselines,
        sliding_window_shapes=((1, 5, 5), second_occlusion),
        target=targets,
    )
    # occ_out2 = occ.attribute(inputs, sliding_window_shapes=((1,20,20), second_occlusion), strides=(8,1), target=targets)
    saliency_out = saliency.attribute(inputs,
                                      nt_type="smoothgrad_sq",
                                      n_samples=5,
                                      target=targets,
                                      abs=False)
    # igrad_out = igrad.attribute(inputs, target=targets, internal_batch_size=1)
    igrad_out = igrad_2.attribute(
        inputs,
        baselines=baselines,
        target=targets,
        n_samples=5,
        nt_type="smoothgrad_sq",
        internal_batch_size=1,
    )
    # deep_lift_out = deep_lift.attribute(inputs, target=targets)
    grad_shap_out = grad_shap.attribute(inputs,
                                        baselines=baselines,
                                        target=targets)

    if single:
        inputs = convert_to_image(inputs)
        occ_out = convert_to_image(occ_out)
        saliency_out = convert_to_image(saliency_out)
        igrad_out = convert_to_image(igrad_out)
        # grad_shap_out = convert_to_image(grad_shap_out)
    else:
        inputs = convert_to_image_multi(inputs)
        occ_out = convert_to_image_multi(occ_out)
        saliency_out = convert_to_image_multi(saliency_out)
        igrad_out = convert_to_image_multi(igrad_out)
        grad_shap_out = convert_to_image_multi(grad_shap_out)
    fig, axes = plt.subplots(2, 5)
    (fig, axes[0, 0]) = visualization.visualize_image_attr(
        occ_out[0][0],
        inputs[0][0],
        title="Original Image",
        method="original_image",
        show_colorbar=True,
        plt_fig_axis=(fig, axes[0, 0]),
        use_pyplot=False,
    )
    (fig, axes[0, 1]) = visualization.visualize_image_attr(
        occ_out[0][0],
        None,
        sign="all",
        title="Occ (5x5)",
        show_colorbar=True,
        plt_fig_axis=(fig, axes[0, 1]),
        use_pyplot=False,
    )
    (fig, axes[0, 2]) = visualization.visualize_image_attr(
        saliency_out[0][0],
        None,
        sign="all",
        title="Saliency",
        show_colorbar=True,
        plt_fig_axis=(fig, axes[0, 2]),
        use_pyplot=False,
    )
    (fig, axes[0, 3]) = visualization.visualize_image_attr(
        igrad_out[0][0],
        None,
        sign="all",
        title="Integrated Grad",
        show_colorbar=True,
        plt_fig_axis=(fig, axes[0, 3]),
        use_pyplot=False,
    )
    (fig, axes[0, 4]) = visualization.visualize_image_attr(
        grad_shap_out[0],
        None,
        title="GradSHAP",
        show_colorbar=True,
        plt_fig_axis=(fig, axes[0, 4]),
        use_pyplot=False,
    )
    ##### Second Input Labels #########################################################################################
    (fig, axes[1, 0]) = visualization.visualize_image_attr(
        occ_out[1],
        inputs[1],
        title="Original Aux",
        method="original_image",
        show_colorbar=True,
        plt_fig_axis=(fig, axes[1, 0]),
        use_pyplot=False,
    )
    (fig, axes[1, 1]) = visualization.visualize_image_attr(
        occ_out[1],
        None,
        sign="all",
        title="Occ (1x1)",
        show_colorbar=True,
        plt_fig_axis=(fig, axes[1, 1]),
        use_pyplot=False,
    )
    (fig, axes[1, 2]) = visualization.visualize_image_attr(
        saliency_out[1],
        None,
        sign="all",
        title="Saliency",
        show_colorbar=True,
        plt_fig_axis=(fig, axes[1, 2]),
        use_pyplot=False,
    )
    (fig, axes[1, 3]) = visualization.visualize_image_attr(
        igrad_out[1],
        None,
        sign="all",
        title="Integrated Grad",
        show_colorbar=True,
        plt_fig_axis=(fig, axes[1, 3]),
        use_pyplot=False,
    )
    (fig, axes[1, 4]) = visualization.visualize_image_attr(
        grad_shap_out[1],
        None,
        title="GradSHAP",
        show_colorbar=True,
        plt_fig_axis=(fig, axes[1, 4]),
        use_pyplot=False,
    )

    fig.suptitle(
        title +
        f" Label: {labels.cpu().numpy()} Pred: {targets.cpu().numpy()}")
    plt.savefig(
        f"{title}_{'single' if single else 'multi'}_{'Failed' if correct else 'Success'}_baseline{baselines[0]}.png",
        dpi=300,
    )
    plt.clf()
    plt.cla()
示例#8
0
def compute_attributions(method,
                         subject,
                         freq_name,
                         model,
                         input_tensor,
                         heatmaps_path,
                         electrodes_pos,
                         silent_chan,
                         create_histograms=True,
                         session_sufix=''):
    if method == 'IntegratedGradients':
        interpreter = IntegratedGradients(model)
    elif method == 'ShapleyValueSampling':
        interpreter = ShapleyValueSampling(model)
    elif method == 'KernelShap':
        interpreter = KernelShap(model)
    elif method == 'Lime':
        interpreter = Lime(model)

    min_imp = np.inf
    max_imp = -np.inf
    attrs = []
    for target_state in [0, 1, 2]:
        attr = interpreter.attribute(input_tensor, target=target_state)
        attr = attr.detach().numpy()
        attrs.append(attr)
        min_imp = attr.min() if attr.min() < min_imp else min_imp
        max_imp = attr.max() if attr.max() > max_imp else max_imp

    # FEATURE IMPORTANCE HEATMAPS FOR EACH LABEL
    if create_histograms:
        ncols = 9
        nrows = np.ceil(attrs[0].shape[1] / ncols).astype(int)
        plt.rcParams.update({'font.size': 8})
        for target_state in [0, 1, 2]:
            attr = attrs[target_state]
            abs_attr = np.abs(attr)
            sample_tot = abs_attr.sum(axis=1)
            attr_perc = abs_attr / sample_tot.reshape(-1, 1)
            if session_sufix == '':
                fig = plt.figure(figsize=(15, 9))
            else:
                fig = plt.figure(figsize=(9, 15))
            fig.tight_layout()
            fig.suptitle(
                f'Features importances on validation set examples using {method}\n'
                f'Subject {subject} - Motivation {target_state} - Frequency {freq_name}'
            )
            for i in range(1, attr.shape[1] + 1):
                plt.subplot(nrows, ncols, i)
                plt.hist(attr_perc[:, i - 1], bins=20)
                if session_sufix == '':
                    plt.xlim(xmin=0, xmax=0.25)
                    plt.title(f'{electrodes_pos[i - 1, 5]}')
                else:
                    plt.title(f'{electrodes_pos[i - 1, 0]}')
            fig.tight_layout(pad=1.0)

            plt.savefig(
                osp.join(
                    heatmaps_path,
                    f'feature_importances_{method}_s{subject}{session_sufix}'
                    f'_t{target_state}_{freq_name}.png'))
            plt.clf()

    return attrs
示例#9
0
def generate_saliency(model_path, saliency_path):
    checkpoint = torch.load(model_path,
                            map_location=lambda storage, loc: storage)
    model_args = Namespace(**checkpoint['args'])
    model_args.batch_size = args.batch_size if args.batch_size != None else \
        model_args.batch_size

    if args.model == 'transformer':
        transformer_config = BertConfig.from_pretrained(
            'bert-base-uncased', num_labels=model_args.labels)
        modelb = BertForSequenceClassification.from_pretrained(
            'bert-base-uncased', config=transformer_config).to(device)
        modelb.load_state_dict(checkpoint['model'])
        model = BertModelWrapper(modelb)
    elif args.model == 'lstm':
        model = LSTM_MODEL(tokenizer,
                           model_args,
                           n_labels=checkpoint['args']['labels'],
                           device=device).to(device)
        model.load_state_dict(checkpoint['model'])
        model.train()
        model = ModelWrapper(model)
    else:
        # model_args.batch_size = 1000
        model = CNN_MODEL(tokenizer,
                          model_args,
                          n_labels=checkpoint['args']['labels']).to(device)
        model.load_state_dict(checkpoint['model'])
        model.train()
        model = ModelWrapper(model)

    ablator = ShapleyValueSampling(model)

    coll_call = get_collate_fn(dataset=args.dataset, model=args.model)

    collate_fn = partial(coll_call,
                         tokenizer=tokenizer,
                         device=device,
                         return_attention_masks=False,
                         pad_to_max_length=False)

    test = get_dataset(args.dataset_dir, mode=args.split)
    test_dl = DataLoader(batch_size=model_args.batch_size,
                         dataset=test,
                         shuffle=False,
                         collate_fn=collate_fn)

    # PREDICTIONS
    predictions_path = model_path + '.predictions'
    if not os.path.exists(predictions_path):
        predictions = defaultdict(lambda: [])
        for batch in tqdm(test_dl, desc='Running test prediction... '):
            logits = model(batch[0])
            logits = logits.detach().cpu().numpy().tolist()
            predicted = np.argmax(np.array(logits), axis=-1)
            predictions['class'] += predicted.tolist()
            predictions['logits'] += logits

        with open(predictions_path, 'w') as out:
            json.dump(predictions, out)

    # COMPUTE SALIENCY

    saliency_flops = []

    with open(saliency_path, 'w') as out_mean:
        for batch in tqdm(test_dl, desc='Running Saliency Generation...'):
            class_attr_list = defaultdict(lambda: [])

            if args.model == 'rnn':
                additional = batch[-1]
            else:
                additional = None

            if not args.no_time:
                high.start_counters([events.PAPI_FP_OPS])
            token_ids = batch[0].detach().cpu().numpy().tolist()

            for cls_ in range(args.labels):
                attributions = ablator.attribute(
                    batch[0].float(),
                    target=cls_,
                    additional_forward_args=additional)
                attributions = attributions.detach().cpu().numpy().tolist()
                class_attr_list[cls_] += attributions

            if not args.no_time:
                x = sum(high.stop_counters())
                saliency_flops.append(x / batch[0].shape[0])

            for i in range(len(batch[0])):
                saliencies = []
                for token_i, token_id in enumerate(token_ids[i]):
                    if token_id == tokenizer.pad_token_id:
                        continue
                    token_sal = {'token': tokenizer.ids_to_tokens[token_id]}
                    for cls_ in range(args.labels):
                        token_sal[int(
                            cls_)] = class_attr_list[cls_][i][token_i]
                    saliencies.append(token_sal)

                out_mean.write(json.dumps({'tokens': saliencies}) + '\n')
                out_mean.flush()

    return saliency_flops
def main(args, DatasetsTypes, DataGenerationTypes, models, device):
    for m in range(len(models)):

        for x in range(len(DatasetsTypes)):
            for y in range(len(DataGenerationTypes)):

                if (DataGenerationTypes[y] == None):
                    args.DataName = DatasetsTypes[x] + "_Box"
                else:
                    args.DataName = DatasetsTypes[
                        x] + "_" + DataGenerationTypes[y]

                Training = np.load(args.data_dir + "SimulatedTrainingData_" +
                                   args.DataName + "_F_" +
                                   str(args.NumFeatures) + "_TS_" +
                                   str(args.NumTimeSteps) + ".npy")
                TrainingMetaDataset = np.load(args.data_dir +
                                              "SimulatedTrainingMetaData_" +
                                              args.DataName + "_F_" +
                                              str(args.NumFeatures) + "_TS_" +
                                              str(args.NumTimeSteps) + ".npy")
                TrainingLabel = TrainingMetaDataset[:, 0]

                Testing = np.load(args.data_dir + "SimulatedTestingData_" +
                                  args.DataName + "_F_" +
                                  str(args.NumFeatures) + "_TS_" +
                                  str(args.NumTimeSteps) + ".npy")
                TestingDataset_MetaData = np.load(args.data_dir +
                                                  "SimulatedTestingMetaData_" +
                                                  args.DataName + "_F_" +
                                                  str(args.NumFeatures) +
                                                  "_TS_" +
                                                  str(args.NumTimeSteps) +
                                                  ".npy")
                TestingLabel = TestingDataset_MetaData[:, 0]

                Training = Training.reshape(
                    Training.shape[0], Training.shape[1] * Training.shape[2])
                Testing = Testing.reshape(Testing.shape[0],
                                          Testing.shape[1] * Testing.shape[2])

                scaler = MinMaxScaler()
                scaler.fit(Training)
                Training = scaler.transform(Training)
                Testing = scaler.transform(Testing)

                TrainingRNN = Training.reshape(Training.shape[0],
                                               args.NumTimeSteps,
                                               args.NumFeatures)
                TestingRNN = Testing.reshape(Testing.shape[0],
                                             args.NumTimeSteps,
                                             args.NumFeatures)

                train_dataRNN = data_utils.TensorDataset(
                    torch.from_numpy(TrainingRNN),
                    torch.from_numpy(TrainingLabel))
                train_loaderRNN = data_utils.DataLoader(
                    train_dataRNN, batch_size=args.batch_size, shuffle=True)

                test_dataRNN = data_utils.TensorDataset(
                    torch.from_numpy(TestingRNN),
                    torch.from_numpy(TestingLabel))
                test_loaderRNN = data_utils.DataLoader(
                    test_dataRNN, batch_size=args.batch_size, shuffle=False)

                modelName = "Simulated"
                modelName += args.DataName

                saveModelName = "../Models/" + models[m] + "/" + modelName
                saveModelBestName = saveModelName + "_BEST.pkl"

                pretrained_model = torch.load(saveModelBestName,
                                              map_location=device)
                Test_Acc = checkAccuracy(test_loaderRNN, pretrained_model,
                                         args)
                print('{} {} model BestAcc {:.4f}'.format(
                    args.DataName, models[m], Test_Acc))

                if (Test_Acc >= 90):

                    if (args.GradFlag):
                        rescaledGrad = np.zeros((TestingRNN.shape))
                        Grad = Saliency(pretrained_model)

                    if (args.IGFlag):
                        rescaledIG = np.zeros((TestingRNN.shape))
                        IG = IntegratedGradients(pretrained_model)
                    if (args.DLFlag):
                        rescaledDL = np.zeros((TestingRNN.shape))
                        DL = DeepLift(pretrained_model)
                    if (args.GSFlag):
                        rescaledGS = np.zeros((TestingRNN.shape))
                        GS = GradientShap(pretrained_model)
                    if (args.DLSFlag):
                        rescaledDLS = np.zeros((TestingRNN.shape))
                        DLS = DeepLiftShap(pretrained_model)

                    if (args.SGFlag):
                        rescaledSG = np.zeros((TestingRNN.shape))
                        Grad_ = Saliency(pretrained_model)
                        SG = NoiseTunnel(Grad_)

                    if (args.ShapleySamplingFlag):
                        rescaledShapleySampling = np.zeros((TestingRNN.shape))
                        SS = ShapleyValueSampling(pretrained_model)
                    if (args.GSFlag):
                        rescaledFeaturePermutation = np.zeros(
                            (TestingRNN.shape))
                        FP = FeaturePermutation(pretrained_model)
                    if (args.FeatureAblationFlag):
                        rescaledFeatureAblation = np.zeros((TestingRNN.shape))
                        FA = FeatureAblation(pretrained_model)

                    if (args.OcclusionFlag):
                        rescaledOcclusion = np.zeros((TestingRNN.shape))
                        OS = Occlusion(pretrained_model)

                    idx = 0
                    mask = np.zeros((args.NumTimeSteps, args.NumFeatures),
                                    dtype=int)
                    for i in range(args.NumTimeSteps):
                        mask[i, :] = i

                    for i, (samples, labels) in enumerate(test_loaderRNN):

                        print('[{}/{}] {} {} model accuracy {:.2f}'\
                                .format(i,len(test_loaderRNN), models[m], args.DataName, Test_Acc))

                        input = samples.reshape(-1, args.NumTimeSteps,
                                                args.NumFeatures).to(device)
                        input = Variable(input,
                                         volatile=False,
                                         requires_grad=True)

                        batch_size = input.shape[0]
                        baseline_single = torch.from_numpy(
                            np.random.random(input.shape)).to(device)
                        baseline_multiple = torch.from_numpy(
                            np.random.random(
                                (input.shape[0] * 5, input.shape[1],
                                 input.shape[2]))).to(device)
                        inputMask = np.zeros((input.shape))
                        inputMask[:, :, :] = mask
                        inputMask = torch.from_numpy(inputMask).to(device)
                        mask_single = torch.from_numpy(mask).to(device)
                        mask_single = mask_single.reshape(
                            1, args.NumTimeSteps, args.NumFeatures).to(device)
                        labels = torch.tensor(labels.int().tolist()).to(device)

                        if (args.GradFlag):
                            attributions = Grad.attribute(input, \
                                                          target=labels)
                            rescaledGrad[
                                idx:idx +
                                batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                                    args, attributions)

                        if (args.IGFlag):
                            attributions = IG.attribute(input,  \
                                                        baselines=baseline_single, \
                                                        target=labels)
                            rescaledIG[
                                idx:idx +
                                batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                                    args, attributions)

                        if (args.DLFlag):
                            attributions = DL.attribute(input,  \
                                                        baselines=baseline_single, \
                                                        target=labels)
                            rescaledDL[
                                idx:idx +
                                batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                                    args, attributions)

                        if (args.GSFlag):

                            attributions = GS.attribute(input,  \
                                                        baselines=baseline_multiple, \
                                                        stdevs=0.09,\
                                                        target=labels)
                            rescaledGS[
                                idx:idx +
                                batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                                    args, attributions)

                        if (args.DLSFlag):

                            attributions = DLS.attribute(input,  \
                                                        baselines=baseline_multiple, \
                                                        target=labels)
                            rescaledDLS[
                                idx:idx +
                                batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                                    args, attributions)

                        if (args.SGFlag):
                            attributions = SG.attribute(input, \
                                                        target=labels)
                            rescaledSG[
                                idx:idx +
                                batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                                    args, attributions)

                        if (args.ShapleySamplingFlag):
                            attributions = SS.attribute(input, \
                                            baselines=baseline_single, \
                                            target=labels,\
                                            feature_mask=inputMask)
                            rescaledShapleySampling[
                                idx:idx +
                                batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                                    args, attributions)

                        if (args.FeaturePermutationFlag):
                            attributions = FP.attribute(input, \
                                            target=labels,
                                            perturbations_per_eval= input.shape[0],\
                                            feature_mask=mask_single)
                            rescaledFeaturePermutation[
                                idx:idx +
                                batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                                    args, attributions)

                        if (args.FeatureAblationFlag):
                            attributions = FA.attribute(input, \
                                            target=labels)
                            # perturbations_per_eval= input.shape[0],\
                            # feature_mask=mask_single)
                            rescaledFeatureAblation[
                                idx:idx +
                                batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                                    args, attributions)

                        if (args.OcclusionFlag):
                            attributions = OS.attribute(input, \
                                            sliding_window_shapes=(1,args.NumFeatures),
                                            target=labels,
                                            baselines=baseline_single)
                            rescaledOcclusion[
                                idx:idx +
                                batch_size, :, :] = Helper.givenAttGetRescaledSaliency(
                                    args, attributions)

                        idx += batch_size

                    if (args.plot):
                        index = random.randint(0, TestingRNN.shape[0] - 1)
                        plotExampleBox(TestingRNN[index, :, :],
                                       args.Saliency_Maps_graphs_dir +
                                       args.DataName + "_" + models[m] +
                                       '_sample',
                                       flip=True)

                        print("Plotting sample", index)
                        if (args.GradFlag):
                            plotExampleBox(rescaledGrad[index, :, :],
                                           args.Saliency_Maps_graphs_dir +
                                           args.DataName + "_" + models[m] +
                                           '_Grad',
                                           greyScale=True,
                                           flip=True)

                        if (args.IGFlag):
                            plotExampleBox(rescaledIG[index, :, :],
                                           args.Saliency_Maps_graphs_dir +
                                           args.DataName + "_" + models[m] +
                                           '_IG',
                                           greyScale=True,
                                           flip=True)

                        if (args.DLFlag):
                            plotExampleBox(rescaledDL[index, :, :],
                                           args.Saliency_Maps_graphs_dir +
                                           args.DataName + "_" + models[m] +
                                           '_DL',
                                           greyScale=True,
                                           flip=True)

                        if (args.GSFlag):
                            plotExampleBox(rescaledGS[index, :, :],
                                           args.Saliency_Maps_graphs_dir +
                                           args.DataName + "_" + models[m] +
                                           '_GS',
                                           greyScale=True,
                                           flip=True)

                        if (args.DLSFlag):
                            plotExampleBox(rescaledDLS[index, :, :],
                                           args.Saliency_Maps_graphs_dir +
                                           args.DataName + "_" + models[m] +
                                           '_DLS',
                                           greyScale=True,
                                           flip=True)

                        if (args.SGFlag):
                            plotExampleBox(rescaledSG[index, :, :],
                                           args.Saliency_Maps_graphs_dir +
                                           args.DataName + "_" + models[m] +
                                           '_SG',
                                           greyScale=True,
                                           flip=True)

                        if (args.ShapleySamplingFlag):
                            plotExampleBox(
                                rescaledShapleySampling[index, :, :],
                                args.Saliency_Maps_graphs_dir + args.DataName +
                                "_" + models[m] + '_ShapleySampling',
                                greyScale=True,
                                flip=True)

                        if (args.FeaturePermutationFlag):
                            plotExampleBox(
                                rescaledFeaturePermutation[index, :, :],
                                args.Saliency_Maps_graphs_dir + args.DataName +
                                "_" + models[m] + '_FeaturePermutation',
                                greyScale=True,
                                flip=True)

                        if (args.FeatureAblationFlag):
                            plotExampleBox(
                                rescaledFeatureAblation[index, :, :],
                                args.Saliency_Maps_graphs_dir + args.DataName +
                                "_" + models[m] + '_FeatureAblation',
                                greyScale=True,
                                flip=True)

                        if (args.OcclusionFlag):
                            plotExampleBox(rescaledOcclusion[index, :, :],
                                           args.Saliency_Maps_graphs_dir +
                                           args.DataName + "_" + models[m] +
                                           '_Occlusion',
                                           greyScale=True,
                                           flip=True)

                    if (args.save):
                        if (args.GradFlag):
                            print("Saving Grad", modelName + "_" + models[m])
                            np.save(
                                args.Saliency_dir + modelName + "_" +
                                models[m] + "_Grad_rescaled", rescaledGrad)

                        if (args.IGFlag):
                            print("Saving IG", modelName + "_" + models[m])
                            np.save(
                                args.Saliency_dir + modelName + "_" +
                                models[m] + "_IG_rescaled", rescaledIG)

                        if (args.DLFlag):
                            print("Saving DL", modelName + "_" + models[m])
                            np.save(
                                args.Saliency_dir + modelName + "_" +
                                models[m] + "_DL_rescaled", rescaledDL)

                        if (args.GSFlag):
                            print("Saving GS", modelName + "_" + models[m])
                            np.save(
                                args.Saliency_dir + modelName + "_" +
                                models[m] + "_GS_rescaled", rescaledGS)

                        if (args.DLSFlag):
                            print("Saving DLS", modelName + "_" + models[m])
                            np.save(
                                args.Saliency_dir + modelName + "_" +
                                models[m] + "_DLS_rescaled", rescaledDLS)

                        if (args.SGFlag):
                            print("Saving SG", modelName + "_" + models[m])
                            np.save(
                                args.Saliency_dir + modelName + "_" +
                                models[m] + "_SG_rescaled", rescaledSG)

                        if (args.ShapleySamplingFlag):
                            print("Saving ShapleySampling",
                                  modelName + "_" + models[m])
                            np.save(
                                args.Saliency_dir + modelName + "_" +
                                models[m] + "_ShapleySampling_rescaled",
                                rescaledShapleySampling)

                        if (args.FeaturePermutationFlag):
                            print("Saving FeaturePermutation",
                                  modelName + "_" + models[m])
                            np.save(
                                args.Saliency_dir + modelName + "_" +
                                models[m] + "_FeaturePermutation_rescaled",
                                rescaledFeaturePermutation)

                        if (args.FeatureAblationFlag):
                            print("Saving FeatureAblation",
                                  modelName + "_" + models[m])
                            np.save(
                                args.Saliency_dir + modelName + "_" +
                                models[m] + "_FeatureAblation_rescaled",
                                rescaledFeatureAblation)

                        if (args.OcclusionFlag):
                            print("Saving Occlusion",
                                  modelName + "_" + models[m])
                            np.save(
                                args.Saliency_dir + modelName + "_" +
                                models[m] + "_Occlusion_rescaled",
                                rescaledOcclusion)

                else:
                    logging.basicConfig(filename=args.log_file,
                                        level=logging.DEBUG)

                    logging.debug('{} {} model BestAcc {:.4f}'.format(
                        args.DataName, models[m], Test_Acc))

                    if not os.path.exists(args.ignore_list):
                        with open(args.ignore_list, 'w') as fp:
                            fp.write(args.DataName + '_' + models[m] + '\n')

                    else:
                        with open(args.ignore_list, "a") as fp:
                            fp.write(args.DataName + '_' + models[m] + '\n')