代码

#!/usr/bin/python
# -*- coding:utf-8 -*-

import pandas as pd
import numpy as np
import matplotlib as mpl
import math
import warnings
import gc
from gensim import corpora, models, similarities
from sklearn.preprocessing import LabelEncoder
import datetime as dt
from pandas.tseries.offsets import Day,MonthEnd,MonthBegin
from multiprocessing import Pool
from dask import dataframe as dd
from dask.multiprocessing import get
from multiprocessing import cpu_count
import  jieba

mpl.rcParams['font.sans-serif'] = ['SimHei']
mpl.rcParams['font.serif'] = ['SimHei']
warnings.filterwarnings("ignore")



def getlda(doc_topics, x, num_show_topic, col):
    '''
    :param doc_topics: 主题
    :param x: 样本
    :param num_show_topic:主题个数
    :param col: 列名
    :return:
    '''
    # print(x,len(doc_topics))
    topic = np.array(doc_topics[x])
    topic_id=topic[np.argsort(topic[:,1])]
    if topic_id.shape[0]<num_show_topic:
        settopici=set(topic_id[:,0])
        settopicadd=set([x for x in range(num_show_topic)])-settopici# 补上没出现的topic
        dfall=pd.concat([pd.DataFrame({0:list(settopicadd),1:[0 for x in range(len(settopicadd))]}),pd.DataFrame(topic_id)],axis=0)
    else:
        dfall=pd.DataFrame(topic_id)
    dfall.sort_values(0,inplace=True)#0~num_show_topic 个主题所占概率
    df =pd.DataFrame([dfall[1].values])# 第i个主题概率
    df=df.astype(np.float32)
    L = range(num_show_topic)
    df.columns = [col + 'lda' + str(i) for i in L]
    return df

# 读取数据
test = pd.read_csv('../data/age_test.csv', header=None)
test.columns = ['uid']
train = pd.read_csv('../data/age_train.csv', header=None)
train.columns = ['uid', 'label']
app_actived = pd.read_csv('../data/app_actived.csv', header=None)
app_actived.columns = ['uid', 'appid']
print(app_actived.shape)
print(train.shape)
print(test.shape)
# 拆分app_actived表
test_actived = pd.merge(test, app_actived, on='uid', how='left')
train_actived = pd.merge(train, app_actived, on='uid', how='left')
print(test_actived.shape)
print(train_actived.shape)

#




































# 预处理user_taglist这张表
user_taglist = pd.read_csv('/home/sxtj/han/PPAI/data/user_taglist.csv', parse_dates=['insertdate'], )
print(user_taglist.shape)
# tfidf要从总体提取每个特征提取一个weight 这部分有穿越!
columstfidf = ['taglist']
def fundic(x):
    x = x.split('|')
    return x
print('processing taglist')
for index, item in enumerate(columstfidf):
    # 做成文本
    testdata = list(user_taglist[item].map(lambda x: fundic(x)))
    user_taglist.drop(item, axis=1, inplace=True)
    dictionary = corpora.Dictionary(testdata)
    corpus = [dictionary.doc2bow(text) for text in testdata]
    corpus_tfidf = models.TfidfModel(corpus)[corpus]# tfidf
    # weight = corpus_tfidf.obj.idfs
    lda = models.LdaMulticore(corpus_tfidf, num_topics=100, id2word=dictionary,
                              chunksize=2000, passes=1, random_state=0, minimum_probability=0.005, workers=11)
    # lda.save('./model/' + item + '_ldanew.model')  # 留给test集合用
    doc_topics = lda.get_document_topics(corpus_tfidf)
    # 提取前num_topicsuese个主题
    print('num_topicsuese……')
    dfjoin = pd.concat([cols for cols in
                        user_taglist.reset_index()['index'].apply(lambda x: getlda(doc_topics, x, 100, item))],
                       ignore_index=True)  # 前80个主题



print(dfjoin.head())




























    # print(dfjoin.head(5))
    # print('saving taglist')
    # # dfjoin.to_hdf('dfjoin.h5','dfjoin')
    # del testdata,dictionary,corpus,corpus_tfidf,doc_topics
    # gc.collect()
    # user_taglistfe = user_taglist.join(dfjoin)
    # del dfjoin,user_taglist
    # gc.collect()
原文地址:https://www.cnblogs.com/xxswkl/p/10949010.html