def basic_accuracy(self, y_true, y_pred, go_backwards=False): """训练过程中显示逐帧准确率的函数,排除了mask的影响 此处y_true需要是整数形式(非one hot) """ # 导出mask并转换数据类型 mask = K.all(K.greater(y_pred, -1e6), axis=2) mask = K.cast(mask, K.floatx()) # y_true需要重新明确一下shape和dtype y_true = K.reshape(y_true, K.shape(y_pred)[:-1]) y_true = K.cast(y_true, 'int32') # 反转相关 if self.hidden_dim is None: if go_backwards: # 是否反转序列 y_true, y_pred = self.reverse_sequence([y_true, y_pred], mask) trans = K.transpose(self.trans) else: trans = self.trans histoty = K.gather(trans, y_true) else: if go_backwards: # 是否反转序列 y_true, y_pred = self.reverse_sequence([y_true, y_pred], mask) r_trans, l_trans = self.l_trans, self.r_trans else: l_trans, r_trans = self.l_trans, self.r_trans histoty = K.gather(l_trans, y_true) histoty = tf.einsum('bnd,kd->bnk', histoty, r_trans) # 计算逐标签accuracy histoty = K.concatenate([y_pred[:, :1], histoty[:, :-1]], 1) y_pred = (y_pred + histoty) / 2 y_pred = K.cast(K.argmax(y_pred, 2), 'int32') isequal = K.cast(K.equal(y_true, y_pred), K.floatx()) return K.sum(isequal * mask) / K.sum(mask)
def basic_loss(self, y_true, y_pred, go_backwards=False): """y_true需要是整数形式(非one hot) """ # 导出mask并转换数据类型 mask = K.all(K.greater(y_pred, -1e6), axis=2) mask = K.cast(mask, K.floatx()) # y_true需要重新明确一下shape和dtype y_true = K.reshape(y_true, K.shape(y_pred)[:-1]) y_true = K.cast(y_true, 'int32') # 反转相关 if self.hidden_dim is None: if go_backwards: # 是否反转序列 y_true, y_pred = self.reverse_sequence([y_true, y_pred], mask) trans = K.transpose(self.trans) else: trans = self.trans histoty = K.gather(trans, y_true) else: if go_backwards: # 是否反转序列 y_true, y_pred = self.reverse_sequence([y_true, y_pred], mask) r_trans, l_trans = self.l_trans, self.r_trans else: l_trans, r_trans = self.l_trans, self.r_trans histoty = K.gather(l_trans, y_true) histoty = tf.einsum('bnd,kd->bnk', histoty, r_trans) # 计算loss histoty = K.concatenate([y_pred[:, :1], histoty[:, :-1]], 1) y_pred = (y_pred + histoty) / 2 loss = K.sparse_categorical_crossentropy(y_true, y_pred, from_logits=True) return K.sum(loss * mask) / K.sum(mask)
def new_update(x, new_x): if x is var and self._do_lazy_optimization(x): if indices is None: r = K.any(K.not_equal(grad, 0.0), axis=-1, keepdims=True) new_x = x + (new_x - x) * K.cast(r, K.floatx()) return old_update(x, new_x) else: return self._resource_scatter_add( x, indices, K.gather(new_x - x, indices)) return old_update(x, new_x)
def call(self, inputs): """如果custom_position_ids,那么第二个输入为自定义的位置id """ if self.custom_position_ids: inputs, position_ids = inputs if K.dtype(position_ids) != 'int32': position_ids = K.cast(position_ids, 'int32') pos_embeddings = K.gather(self.embeddings, position_ids) else: input_shape = K.shape(inputs) batch_size, seq_len = input_shape[0], input_shape[1] pos_embeddings = self.embeddings[:seq_len] pos_embeddings = K.expand_dims(pos_embeddings, 0) if self.merge_mode != 'add': pos_embeddings = K.tile(pos_embeddings, [batch_size, 1, 1]) if self.merge_mode == 'add': return inputs + pos_embeddings else: return K.concatenate([inputs, pos_embeddings])
def call(self, inputs): pos_ids = self.compute_position_ids(inputs) return K.gather(self.embeddings, pos_ids)