首页 > 其他分享 >电商产品评论数据情感分析

电商产品评论数据情感分析

时间:2023-05-04 22:56:15浏览次数:42  
标签:index word neg pos content 情感 评论 result 电商

1.评论去重的代码,数据清洗、分词、词性标注、去除停用词代码。

 

import pandas as pd
import re
import jieba.posseg as psg
import numpy as np


# 去重,去除完全重复的数据
reviews = pd.read_csv("./reviews.csv")
reviews = reviews[['content', 'content_type']].drop_duplicates()
content = reviews['content']
# 去除去除英文、数字等
# 由于评论主要为京东美的电热水器的评论,因此去除这些词语
strinfo = re.compile('[0-9a-zA-Z]|京东|美的|电热水器|热水器|')
content = content.apply(lambda x: strinfo.sub('', x))
worker = lambda s: [(x.word, x.flag) for x in psg.cut(s)] # 自定义简单分词函数
seg_word = content.apply(worker)

# 将词语转为数据框形式,一列是词,一列是词语所在的句子ID,最后一列是词语在该句子的位置
n_word = seg_word.apply(lambda x: len(x)) # 每一评论中词的个数

n_content = [[x+1]*y for x,y in zip(list(seg_word.index), list(n_word))]
index_content = sum(n_content, []) # 将嵌套的列表展开,作为词所在评论的id

seg_word = sum(seg_word, [])
word = [x[0] for x in seg_word] # 词

nature = [x[1] for x in seg_word] # 词性

content_type = [[x]*y for x,y in zip(list(reviews['content_type']), list(n_word))]
content_type = sum(content_type, []) # 评论类型

result = pd.DataFrame({"index_content":index_content,
"word":word,
"nature":nature,
"content_type":content_type})
# 删除标点符号
result = result[result['nature'] != 'x'] # x表示标点符号

# 删除停用词
stop_path = open("./stoplist.txt", 'r',encoding='UTF-8')
stop = stop_path.readlines()
stop = [x.replace('\n', '') for x in stop]
word = list(set(word) - set(stop))
result = result[result['word'].isin(word)]

# 构造各词在对应评论的位置列
n_word = list(result.groupby(by = ['index_content'])['index_content'].count())
index_word = [list(np.arange(0, y)) for y in n_word]
index_word = sum(index_word, []) # 表示词语在改评论的位置

# 合并评论id,评论中词的id,词,词性,评论类型
result['index_word'] = index_word

  2.提取含有名词的评论,绘制词云

# 提取含有名词类的评论
ind = result[['n' in x for x in result['nature']]]['index_content'].unique()
result = result[[x in ind for x in result['index_content']]]
import matplotlib.pyplot as plt
from wordcloud import WordCloud

frequencies = result.groupby(by = ['word'])['word'].count()
frequencies = frequencies.sort_values(ascending = False)
backgroud_Image=plt.imread('./pl.jpg')
wordcloud = WordCloud(font_path="D:\STZHONGS.ttf",
max_words=100,
background_color='white',
mask=backgroud_Image)
my_wordcloud = wordcloud.fit_words(frequencies)
plt.imshow(my_wordcloud)
plt.axis('off')
plt.show()

# 将结果写出
result.to_csv("./word.csv", index = False, encoding = 'utf-8')

 

  3.匹配情感词,修正情感倾向,查看情感分析的结果

import pandas as pd
import numpy as np
word = pd.read_csv("./word.csv")

# 读入正面、负面情感评价词
pos_comment = pd.read_csv("./正面评价词语(中文).txt", header=None,sep="\n",
encoding = 'utf-8', engine='python')
neg_comment = pd.read_csv("./负面评价词语(中文).txt", header=None,sep="\n",
encoding = 'utf-8', engine='python')
pos_emotion = pd.read_csv("./正面情感词语(中文).txt", header=None,sep="\n",
encoding = 'utf-8', engine='python')
neg_emotion = pd.read_csv("./负面情感词语(中文).txt", header=None,sep="\n",
encoding = 'utf-8', engine='python')

# 合并情感词与评价词
positive = set(pos_comment.iloc[:,0])|set(pos_emotion.iloc[:,0])
negative = set(neg_comment.iloc[:,0])|set(neg_emotion.iloc[:,0])
intersection = positive&negative # 正负面情感词表中相同的词语
positive = list(positive - intersection)
negative = list(negative - intersection)
positive = pd.DataFrame({"word":positive,
"weight":[1]*len(positive)})
negative = pd.DataFrame({"word":negative,
"weight":[-1]*len(negative)})

posneg = positive.append(negative)

# 将分词结果与正负面情感词表合并,定位情感词
data_posneg = posneg.merge(word, left_on = 'word', right_on = 'word',
how = 'right')
data_posneg = data_posneg.sort_values(by = ['index_content','index_word'])
# 根据情感词前时候有否定词或双层否定词对情感值进行修正
# 载入否定词表
notdict = pd.read_csv("./not.csv")

# 处理否定修饰词
data_posneg['amend_weight'] = data_posneg['weight'] # 构造新列,作为经过否定词修正后的情感值
data_posneg['id'] = np.arange(0, len(data_posneg))
only_inclination = data_posneg.dropna() # 只保留有情感值的词语
only_inclination.index = np.arange(0, len(only_inclination))
index = only_inclination['id']

for i in np.arange(0, len(only_inclination)):
review = data_posneg[data_posneg['index_content'] ==
only_inclination['index_content'][i]] # 提取第i个情感词所在的评论
review.index = np.arange(0, len(review))
affective = only_inclination['index_word'][i] # 第i个情感值在该文档的位置
if affective == 1:
ne = sum([i in notdict['term'] for i in review['word'][affective - 1]])
if ne == 1:
data_posneg['amend_weight'][index[i]] = -\
data_posneg['weight'][index[i]]
elif affective > 1:
ne = sum([i in notdict['term'] for i in review['word'][[affective - 1,
affective - 2]]])
if ne == 1:
data_posneg['amend_weight'][index[i]] = -\
data_posneg['weight'][index[i]]

# 更新只保留情感值的数据
only_inclination = only_inclination.dropna()

# 计算每条评论的情感值
emotional_value = only_inclination.groupby(['index_content'],
as_index=False)['amend_weight'].sum()

# 去除情感值为0的评论
emotional_value = emotional_value[emotional_value['amend_weight'] != 0]
# 给情感值大于0的赋予评论类型(content_type)为pos,小于0的为neg
emotional_value['a_type'] = ''
emotional_value['a_type'][emotional_value['amend_weight'] > 0] = 'pos'
emotional_value['a_type'][emotional_value['amend_weight'] < 0] = 'neg'

# 查看情感分析结果
result = emotional_value.merge(word,
left_on = 'index_content',
right_on = 'index_content',
how = 'left')

result = result[['index_content','content_type', 'a_type']].drop_duplicates()
confusion_matrix = pd.crosstab(result['content_type'], result['a_type'],
margins=True) # 制作交叉表
(confusion_matrix.iat[0,0] + confusion_matrix.iat[1,1])/confusion_matrix.iat[2,2]

# 提取正负面评论信息
ind_pos = list(emotional_value[emotional_value['a_type'] == 'pos']['index_content'])
ind_neg = list(emotional_value[emotional_value['a_type'] == 'neg']['index_content'])
posdata = word[[i in ind_pos for i in word['index_content']]]
negdata = word[[i in ind_neg for i in word['index_content']]]

# 绘制词云
import matplotlib.pyplot as plt
from wordcloud import WordCloud
# 正面情感词词云
freq_pos = posdata.groupby(by = ['word'])['word'].count()
freq_pos = freq_pos.sort_values(ascending = False)
backgroud_Image=plt.imread('./pl.jpg')
wordcloud = WordCloud(font_path="D:\STZHONGS.ttf",
max_words=100,
background_color='white',
mask=backgroud_Image)
pos_wordcloud = wordcloud.fit_words(freq_pos)
plt.imshow(pos_wordcloud)
plt.rcParams['font.sans-serif'] = 'SimHei' # 设置中文显示
plt.axis('off')
plt.show()
# 负面情感词词云
freq_neg = negdata.groupby(by = ['word'])['word'].count()
freq_neg = freq_neg.sort_values(ascending = False)
neg_wordcloud = wordcloud.fit_words(freq_neg)
plt.imshow(neg_wordcloud)
plt.rcParams['font.sans-serif'] = 'SimHei' # 设置中文显示
plt.axis('off')
plt.show()

# 将结果写出,每条评论作为一行
posdata.to_csv("./posdata.csv", index = False, encoding = 'utf-8')
negdata.to_csv("./negdata.csv", index = False, encoding = 'utf-8')

  4.建立词典及语料库,主题数寻优

import pandas as pd
import numpy as np
import re
import itertools
import matplotlib.pyplot as plt

# 载入情感分析后的数据
posdata = pd.read_csv("./posdata.csv", encoding = 'utf-8')
negdata = pd.read_csv("./negdata.csv", encoding = 'utf-8')

from gensim import corpora, models
# 建立词典
pos_dict = corpora.Dictionary([[i] for i in posdata['word']]) # 正面
neg_dict = corpora.Dictionary([[i] for i in negdata['word']]) # 负面

# 建立语料库
pos_corpus = [pos_dict.doc2bow(j) for j in [[i] for i in posdata['word']]] # 正面
neg_corpus = [neg_dict.doc2bow(j) for j in [[i] for i in negdata['word']]] # 负面
# 构造主题数寻优函数
def cos(vector1, vector2): # 余弦相似度函数
dot_product = 0.0;
normA = 0.0;
normB = 0.0;
for a,b in zip(vector1, vector2):
dot_product += a*b
normA += a**2
normB += b**2
if normA == 0.0 or normB==0.0:
return(None)
else:
return(dot_product / ((normA*normB)**0.5))

# 主题数寻优
def lda_k(x_corpus, x_dict):

# 初始化平均余弦相似度
mean_similarity = []
mean_similarity.append(1)

# 循环生成主题并计算主题间相似度
for i in np.arange(2,11):
lda = models.LdaModel(x_corpus, num_topics = i, id2word = x_dict) # LDA模型训练
for j in np.arange(i):
term = lda.show_topics(num_words = 50)

# 提取各主题词
top_word = []
for k in np.arange(i):
top_word.append([''.join(re.findall('"(.*)"',i)) \
for i in term[k][1].split('+')]) # 列出所有词

# 构造词频向量
word = sum(top_word,[]) # 列出所有的词
unique_word = set(word) # 去除重复的词

# 构造主题词列表,行表示主题号,列表示各主题词
mat = []
for j in np.arange(i):
top_w = top_word[j]
mat.append(tuple([top_w.count(k) for k in unique_word]))

p = list(itertools.permutations(list(np.arange(i)),2))
l = len(p)
top_similarity = [0]
for w in np.arange(l):
vector1 = mat[p[w][0]]
vector2 = mat[p[w][1]]
top_similarity.append(cos(vector1, vector2))

# 计算平均余弦相似度
mean_similarity.append(sum(top_similarity)/l)
return(mean_similarity)

# 计算主题平均余弦相似度
pos_k = lda_k(pos_corpus, pos_dict)
neg_k = lda_k(neg_corpus, neg_dict)

# 绘制主题平均余弦相似度图形
from matplotlib.font_manager import FontProperties
font = FontProperties(size=14)
#解决中文显示问题
plt.rcParams['font.sans-serif']=['SimHei']
plt.rcParams['axes.unicode_minus'] = False
fig = plt.figure(figsize=(10,8))
ax1 = fig.add_subplot(211)
ax1.plot(pos_k)
ax1.set_xlabel(' ', fontproperties=font)

ax2 = fig.add_subplot(212)
ax2.plot(neg_k)
ax2.set_xlabel(' ', fontproperties=font)

 

  5.LDA主题分析

# LDA主题分析
pos_lda = models.LdaModel(pos_corpus, num_topics = 3, id2word = pos_dict)
neg_lda = models.LdaModel(neg_corpus, num_topics = 3, id2word = neg_dict)
pos_lda.print_topics(num_words = 10)

neg_lda.print_topics(num_words = 10)

 

标签:index,word,neg,pos,content,情感,评论,result,电商
From: https://www.cnblogs.com/shizihao/p/17372788.html

相关文章

  • 人类的悲欢虽不相通,但情感分析模型读得懂
    By超神经内容提要:社交媒体逐渐成为当今人们生活的一部分,而它也成为心理学家们进行研究的重要数据来源。与此同时,研究者也尝试利用自然语言处理、机器学习技术,来预测社交媒体用户的情绪波动。关键词:自然语言处理心理学去年突如其来的新冠疫情,深刻地影响着人们的生活。在这一特殊的......
  • 【论文分析】COGMEN:基于上下文化GNN的多模态情感识别
    1.简述COGMEN:基于上下文化图神经网络的多模式情感识别架构,该架构既解决了上下文对语句的影响,也解决了用于预测会话中每个说话者的每一语句情感的相互依赖性和内部依赖性COGMEN有以下特点:基于上下文化图神经网络(GNN)的多模式情感识别架构,用于预测会话中每语句每说话者的情感......
  • 电商产品评论数据情感分析
    1、评论去重的代码importpandasaspdimportreimportjieba.possegaspsgimportnumpyasnp#去重,去除完全重复的数据reviews=pd.read_csv("./reviews.csv")reviews=reviews[['content','content_type']].drop_duplicates()content=reviews......
  • 电商产品评论数据情感分析
    1、评论去重的代码importpandasaspdimportreimportjieba.possegaspsgimportnumpyasnp#去重,去除完全重复的数据reviews=pd.read_csv("./reviews.csv")reviews=reviews[['content','content_type']].drop_duplicates()content=reviews['con......
  • 第十二章.电商产品评论数据情感分析
    1、评论去重的代码importpandasaspdimportreimportjieba.possegaspsgimportnumpyasnp#去重,去除完全重复的数据reviews=pd.read_csv("./reviews.csv")reviews=reviews[['content','content_type']].drop_duplicates()content=revi......
  • 数据挖掘-电商产品评论数据情感分析
    importpandasaspdimportreimportjieba.possegaspsgimportnumpyasnp#去重,去除完全重复的数据reviews=pd.read_csv("./reviews.csv")reviews=reviews[['content','content_type']].drop_duplicates()content=reviews['co......
  • 直播电商平台开发,环形进度条组件
    直播电商平台开发,环形进度条组件 <template> <divclass="content"ref="box">  <svg   :id="idStr"   style="transform:rotate(-90deg)"   :width="width"   :height="width"   xmlns=&......
  • 第十二章——电商产品评论数据情感分析
    1、评论去重的代码importpandasaspdimportreimportjieba.possegaspsgimportnumpyasnp#去重,去除完全重复的数据reviews=pd.read_csv("./reviews.csv")reviews=reviews[['content','content_type']].drop_duplicates()content=revie......
  • 跨境电商出海东南亚,茄子科技助力企业实现品牌出海
    作为亚洲最具潜力的电商市场之一,东南亚地区拥有6亿多人口,电商市场高达218亿美元。人口红利、数字化经济高额投资、移动设备全面普及等,正在为东南亚的跨境电商搭建起庞大的市场基础框架,推动电商多种形态在东南亚崛起,天然的电商发展沃土让东南亚正成为企业品牌出海寻求增量的优质选择......
  • 配置wordpress:用户登录后才可发表评论(wordpress 6.2)
    一,默认设置:发表评论时不需要登录如图:二,设置:设置->讨论->选中用户必须注册并登录才可以发表评论选中后点击:保存更改按钮效果:未登录前的效果:说明:刘宏缔的架构森林是一个专注架构的博客,地址:https://www.cnblogs.com/architectforest     对应的源码......