Esempio n. 1
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def calculate_table_train_tree(str_list,feature_list, trainx, trainy, predictx, predicty):
    positive_table=[]
    nagative_table=[]
    length=len(str_list[0])
    for i in range(0,length):
        positive_table.append(len(str_list))
        nagative_table.append(len(str_list))
    for num in str_list:
        if num_all_zero(num):
            num[0]=1
        feature=num_to_feature(num,feature_list)
        train_sample=read_data_feature(feature,trainx)
        predict_sample=read_data_feature(feature,predictx)
        acc_original = train_tree(train_sample, trainy, predict_sample, predicty)
        for i in range(0,length):
            new_num=reverse_index(num,i)
            feature = num_to_feature(new_num, feature_list)
            train_sample = read_data_feature(feature, trainx)
            predict_sample = read_data_feature(feature, predictx)
            acc_new= train_tree(train_sample, trainy, predict_sample, predicty)
            if acc_new>acc_original:
                if num[i]==0:
                    nagative_table[i]+=1
                else:
                    positive_table[i]+=1
            else:
                if num[i]==1:
                    nagative_table[i]+=1
                else:
                    positive_table[i]+=1
    return positive_table,nagative_table
Esempio n. 2
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def one_point_hybridization_knn(forest_list,feature_list,trainx,trainy,predictx,predicty,neighbor):
    '''
    一次单点杂交
    :param forest_list: 森林列表,双层列表
    :param feature_list:特征集合索引,特征集合的角标
    :param trainx:训练集
    :param trainy:训练集对应的分类
    :param predictx:预测集合
    :param predicty:预测集对应的分类
    :return:森林字典:包括单点杂交后每棵树的准确率和森林的01串
            森林列表:单点杂交后新的森林
    '''
    forest = {}  # 记录森林里的准确率
    forest_list=one_point_hybridization(forest_list)
    for num in forest_list:
        feature=num_to_feature(num,feature_list)
        train_sample=read_data_feature(feature,trainx)
        predict_sample=read_data_feature(feature,predictx)
        acc = train_knn(train_sample, trainy, predict_sample, predicty,neighbor)
        num_string = num_to_string(num)
        forest[num_string] = acc
    return forest,forest_list
Esempio n. 3
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    feature_list = []  # 特征集合索引,特征集合的角标
    for i in range(0, len(trainx[0])):
        feature_list.append(i)

    forest = {}  #记录森林里的准确率

    init_forest = random_init(50, len(trainx[0]))
    # for i in init_forest:
    #     print i

    # print 'trainx',trainx
    # print 'trainy',trainy

    for num in init_forest:
        feature = num_to_feature(num, feature_list)
        train_sample = read_data_feature(feature, trainx)
        predict_sample = read_data_feature(feature, predictx)
        # print 'train_sample',train_sample
        # print 'train_y',trainy
        # print 'predict_sample',predict_sample
        # print 'predict_y',predicty
        acc = train_knn(train_sample, trainy, predict_sample, predicty, 1)

        num_string = num_to_string(num)
        forest[num_string] = acc

    # forest_area = []
    forest_old = init_forest
    res = {}
    for i in range(0, 5):