Py学习  »  Python

用 Python 爬取了《扫黑风暴》数据,并将其可视化分析后,终于知道它为什么这么火了~

程序员的那些事 • 2 年前 • 318 次点击  


今天来跟大家分享一下从数据可视化角度看扫黑风暴~

  • 绪论
  • 如何查找视频id
  • 项目结构
    • 制作词云图
    • 制作最近评论数条形图与折线图
    • 制作每小时评论条形图与折线图
    • 制作最近评论数饼图
    • 制作每小时评论饼图
    • 制作观看时间区间评论统计饼图
    • 制作扫黑风暴主演提及占比饼图
    • 制作评论内容情感分析图
    • 评论的时间戳转换为正常时间
    • 评论内容读入CSV
    • 统计一天各个时间段内的评论数
    • 统计最近评论数
    • 爬取评论内容
    • 爬取评论时间
    • 一.爬虫部分
    • 二.数据处理部分
    • 三. 数据分析

绪论

本期是对腾讯热播剧——扫黑风暴的一次爬虫与数据分析,耗时两个小时,总爬取条数3W条评论,总体来说比较普通,值得注意的一点是评论的情绪文本分析处理,这是第一次接触的知识。

爬虫方面:由于腾讯的评论数据是封装在json里面,所以只需要找到json文件,对需要的数据进行提取保存即可。

  • 视频网址:https://v.qq.com/x/cover/mzc00200lxzhhqz.html
  • 评论json数据网址:https://video.coral.qq.com/varticle/7225749902/comment/v2
  • 注:只要替换视频数字id的值,即可爬取其他视频的评论

如何查找视频id?

项目结构:

一. 爬虫部分:

1.爬取评论内容代码:spiders.py

import requests
import re
import random


def get_html(url, params):
uapools = [
'Mozilla/5.0 (Macintosh; Intel Mac OS X 10_9_2) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/35.0.1916.153 Safari/537.36',
'Mozilla/5.0 (Windows NT 6.1; WOW64; rv:30.0) Gecko/20100101 Firefox/30.0',
'Mozilla/5.0 (Macintosh; Intel Mac OS X 10_9_2) AppleWebKit/537.75.14 (KHTML, like Gecko) Version/7.0.3 Safari/537.75.14'
]

thisua = random.choice(uapools)
headers = {"User-Agent": thisua}
r = requests.get(url, headers=headers, params=params)
r.raise_for_status()
r.encoding = r.apparent_encoding
r.encoding = 'utf-8' # 不加此句出现乱码
return r.text


def parse_page(infolist, data):
commentpat = '"content":"(.*?)"'
lastpat = '"last":"(.*?)"'

commentall = re.compile(commentpat, re.S).findall(data)
next_cid = re.compile(lastpat).findall(data)[0]

infolist.append(commentall)

return next_cid



def print_comment_list(infolist):
j = 0
for page in infolist:
print('第' + str(j + 1) + '页\n')
commentall = page
for i in range(0, len(commentall)):
print(commentall[i] + '\n')
j += 1


def save_to_txt(infolist, path):
fw = open(path, 'w+', encoding='utf-8')
j = 0
for page in infolist:
#fw.write('第' + str(j + 1) + '页\n')
commentall = page
for i in range(0, len(commentall)):
fw.write(commentall[i] + '\n')
j += 1
fw.close()


def main():
infolist = []
vid = '7225749902';
cid = "0";
page_num = 3000
url = 'https://video.coral.qq.com/varticle/' + vid + '/comment/v2'
#print(url)

for i in range(page_num):
params = {'orinum': '10', 'cursor': cid}
html = get_html(url, params)
cid = parse_page(infolist, html)


print_comment_list(infolist)
save_to_txt(infolist, 'content.txt')


main()

2.爬取评论时间代码:sp.py

import requests
import re
import random


def get_html(url, params):
uapools = [
'Mozilla/5.0 (Macintosh; Intel Mac OS X 10_9_2) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/35.0.1916.153 Safari/537.36',
'Mozilla/5.0 (Windows NT 6.1; WOW64; rv:30.0) Gecko/20100101 Firefox/30.0',
'Mozilla/5.0 (Macintosh; Intel Mac OS X 10_9_2) AppleWebKit/537.75.14 (KHTML, like Gecko) Version/7.0.3 Safari/537.75.14'
]

thisua = random.choice(uapools)
headers = {"User-Agent": thisua}
r = requests.get(url, headers=headers, params=params)
r.raise_for_status()
r.encoding = r.apparent_encoding
r.encoding = 'utf-8' # 不加此句出现乱码
return r.text


def parse_page(infolist, data):
commentpat = '"time":"(.*?)"'
lastpat = '"last":"(.*?)"'

commentall = re.compile(commentpat, re.S).findall(data)
next_cid = re.compile(lastpat).findall(data)[0]

infolist.append(commentall)

return next_cid



def print_comment_list(infolist):
j = 0
for page in infolist:
print('第' + str(j + 1) + '页\n')
commentall = page
for i in range(0, len(commentall)):
print(commentall[i] + '\n')
j += 1


def save_to_txt(infolist, path):
fw = open(path, 'w+', encoding='utf-8')
j = 0
for page in infolist:
#fw.write('第' + str(j + 1) + '页\n')
commentall = page
for i in range(0, len(commentall)):
fw.write(commentall[i] + '\n')
j += 1
fw.close()


def main():
infolist = []
vid = '7225749902';
cid = "0";
page_num =3000
url = 'https://video.coral.qq.com/varticle/' + vid + '/comment/v2'
#print(url)

for i in range(page_num):
params = {'orinum': '10', 'cursor': cid}
html = get_html(url, params)
cid = parse_page(infolist, html)


print_comment_list(infolist)
save_to_txt(infolist, 'time.txt')


main()

二.数据处理部分

1.评论的时间戳转换为正常时间 time.py

# coding=gbk
import csv
import time

csvFile = open("data.csv",'w',newline='',encoding='utf-8')
writer = csv.writer(csvFile)
csvRow = []
#print(csvRow)
f = open("time.txt",'r',encoding='utf-8')
for line in f:
csvRow = int(line)
#print(csvRow)

timeArray = time.localtime(csvRow)
csvRow = time.strftime("%Y-%m-%d %H:%M:%S", timeArray)
print(csvRow)
csvRow = csvRow.split()
writer.writerow(csvRow)

f.close()
csvFile.close()

2.评论内容读入csv  CD.py

# coding=gbk
import csv
csvFile = open("content.csv",'w',newline='',encoding='utf-8')
writer = csv.writer(csvFile)
csvRow = []

f = open("content.txt",'r',encoding='utf-8')
for line in f:
csvRow = line.split()
writer.writerow(csvRow)

f.close()
csvFile.close()

3.统计一天各个时间段内的评论数 py.py

# coding=gbk
import csv

from pyecharts import options as opts
from sympy.combinatorics import Subset
from wordcloud import WordCloud

with open('../Spiders/data.csv') as csvfile:
reader = csv.reader(csvfile)

data1 = [str(row[1])[0:2] for row in reader]

print(data1)
print(type(data1))


#先变成集合得到seq中的所有元素,避免重复遍历
set_seq = set(data1)
rst = []
for item in set_seq:
rst.append((item,data1.count(item))) #添加元素及出现个数
rst.sort()
print(type(rst))
print(rst)

with open("time2.csv", "w+", newline='', encoding='utf-8') as f:
writer = csv.writer(f, delimiter=',')
for i in rst: # 对于每一行的,将这一行的每个元素分别写在对应的列中
writer.writerow(i)

with open('time2.csv') as csvfile:
reader = csv.reader(csvfile)
x = [str(row[0]) for row in reader]
print(x)
with open('time2.csv') as csvfile:
reader = csv.reader(csvfile)
y1 = [float(row[1]) for row in reader]
print(y1)

处理结果(评论时间,评论数)

4.统计最近评论数 py1.py

# coding=gbk
import csv

from pyecharts import options as opts
from sympy.combinatorics import Subset
from wordcloud import WordCloud

with open('../Spiders/data.csv') as csvfile:
reader = csv.reader(csvfile)

data1 = [str(row[0 ]) for row in reader]
#print(data1)
print(type(data1))


#先变成集合得到seq中的所有元素,避免重复遍历
set_seq = set(data1)
rst = []
for item in set_seq:
rst.append((item,data1.count(item))) #添加元素及出现个数
rst.sort()
print(type(rst))
print(rst)



with open("time1.csv", "w+", newline='', encoding='utf-8') as f:
writer = csv.writer(f, delimiter=',')
for i in rst: # 对于每一行的,将这一行的每个元素分别写在对应的列中
writer.writerow(i)

with open('time1.csv') as csvfile:
reader = csv.reader(csvfile)
x = [str(row[0]) for row in reader]
print(x)
with open('time1.csv') as csvfile:
reader = csv.reader(csvfile)
y1 = [float(row[1]) for row in reader]

print(y1)



处理结果(评论时间,评论数)

三. 数据分析

数据分析方面:涉及到了词云图,条形,折线,饼图,后三者是对评论时间与主演占比的分析,然而腾讯的评论时间是以时间戳的形式显示,所以要进行转换,再去统计出现次数,最后,新加了对评论内容的情感分析。

1.制作词云图

wc.py

import numpy as np
import re
import jieba
from wordcloud import WordCloud
from matplotlib import pyplot as plt
from PIL import Image

# 上面的包自己安装,不会的就百度

f = open('../Spiders/content.txt', 'r', encoding='utf-8') # 这是数据源,也就是想生成词云的数据
txt = f.read() # 读取文件
f.close() # 关闭文件,其实用with就好,但是懒得改了
# 如果是文章的话,需要用到jieba分词,分完之后也可以自己处理下再生成词云
newtxt = re.sub("[A-Za-z0-9\!\%\[\]\,\。]", "", txt)
print(newtxt)
words = jieba.lcut(newtxt)

img = Image.open(r'wc.jpg') # 想要搞得形状
img_array = np.array(img)

# 相关配置,里面这个collocations配置可以避免重复
wordcloud = WordCloud(
background_color="white",
width=1080,
height=960,
font_path="../文悦新青年.otf",
max_words=150,
scale=10,#清晰度
max_font_size=100,
mask=img_array,
collocations=False).generate(newtxt)

plt.imshow(wordcloud)
plt.axis('off')
plt.show()
wordcloud.to_file('wc.png')

轮廓图:wc.jpg

词云图:result.png (注:这里要把英文字母过滤掉)

2.制作最近评论数条形图与折线图  DrawBar.py

# encoding: utf-8
import csv
import pyecharts.options as opts
from pyecharts.charts import Bar
from pyecharts.globals import ThemeType


class DrawBar(object):

"""绘制柱形图类"""
def __init__(self):
"""创建柱状图实例,并设置宽高和风格"""
self.bar = Bar(init_opts=opts.InitOpts(width='1500px', height='700px', theme=ThemeType.LIGHT))

def add_x(self):
"""为图形添加X轴数据"""
with open('time1.csv') as csvfile:
reader = csv.reader(csvfile)
x = [str(row[0]) for row in reader]
print(x)


self.bar.add_xaxis(
xaxis_data=x,

)

def add_y(self):
with open('time1.csv') as csvfile:
reader = csv.reader(csvfile)
y1 = [float(row[1]) for row in reader]

print(y1)



"""为图形添加Y轴数据,可添加多条"""
self.bar.add_yaxis( # 第一个Y轴数据
series_name="评论数", # Y轴数据名称
y_axis=y1, # Y轴数据
label_opts=opts.LabelOpts(is_show=True,color="black"), # 设置标签
bar_max_width='100px', # 设置柱子最大宽度
)


def set_global(self):
"""设置图形的全局属性"""
#self.bar(width=2000,height=1000)
self.bar.set_global_opts(
title_opts=opts.TitleOpts( # 设置标题
title='扫黑风暴近日评论统计',title_textstyle_opts=opts.TextStyleOpts(font_size=35)

),
tooltip_opts=opts.TooltipOpts( # 提示框配置项(鼠标移到图形上时显示的东西)
is_show=True, # 是否显示提示框
trigger="axis", # 触发类型(axis坐标轴触发,鼠标移到时会有一条垂直于X轴的实线跟随鼠标移动,并显示提示信息)
axis_pointer_type="cross" # 指示器类型(cross将会生成两条分别垂直于X轴和Y轴的虚线,不启用trigger才会显示完全)
),
toolbox_opts=opts.ToolboxOpts(), # 工具箱配置项(什么都不填默认开启所有工具)

)

def draw(self):
"""绘制图形"""

self.add_x()
self.add_y()
self.set_global()
self.bar.render('../Html/DrawBar.html') # 将图绘制到 test.html 文件内,可在浏览器打开
def run(self):
"""执行函数"""
self.draw()



if __name__ == '__main__':
app = DrawBar()

app.run()

效果图:DrawBar.html

3.制作每小时评论条形图与折线图  DrawBar2.py

# encoding: utf-8
# encoding: utf-8
import csv
import pyecharts.options as opts
from pyecharts.charts import Bar
from pyecharts.globals import ThemeType


class DrawBar(object):

"""绘制柱形图类"""
def __init__(self):
"""创建柱状图实例,并设置宽高和风格"""
self.bar = Bar(init_opts=opts.InitOpts(width='1500px', height='700px', theme=ThemeType.MACARONS))

def add_x(self):
"""为图形添加X轴数据"""
str_name1 = '点'

with open('time2.csv') as csvfile:
reader = csv.reader(csvfile)
x = [str(row[0] + str_name1) for row in reader]
print(x)


self.bar.add_xaxis(
xaxis_data=x
)

def add_y(self):
with open('time2.csv') as csvfile:
reader = csv.reader(csvfile)
y1 = [int(row[1]) for row in reader]

print(y1)



"""为图形添加Y轴数据,可添加多条"""
self.bar.add_yaxis( # 第一个Y轴数据
series_name="评论数", # Y轴数据名称
y_axis=y1, # Y轴数据
label_opts=opts.LabelOpts(is_show=False), # 设置标签
bar_max_width='50px', # 设置柱子最大宽度

)


def set_global(self):
"""设置图形的全局属性"""
#self.bar(width=2000,height=1000)
self.bar.set_global_opts(
title_opts=opts.TitleOpts( # 设置标题
title='扫黑风暴各时间段评论统计',title_textstyle_opts=opts.TextStyleOpts(font_size=35)

),
tooltip_opts=opts.TooltipOpts( # 提示框配置项(鼠标移到图形上时显示的东西)
is_show=True, # 是否显示提示框
trigger="axis", # 触发类型(axis坐标轴触发,鼠标移到时会有一条垂直于X轴的实线跟随鼠标移动,并显示提示信息)
axis_pointer_type="cross" # 指示器类型(cross将会生成两条分别垂直于X轴和Y轴的虚线,不启用trigger才会显示完全)
),
toolbox_opts=opts.ToolboxOpts(), # 工具箱配置项(什么都不填默认开启所有工具)

)

def draw(self):
"""绘制图形"""

self.add_x()
self.add_y()
self.set_global()
self.bar.render('../Html/DrawBar2.html') # 将图绘制到 test.html 文件内,可在浏览器打开
def run(self):
"""执行函数"""
self.draw()



if __name__ == '__main__':
app = DrawBar()

app.run()

效果图:DrawBar2.html

4.制作最近评论数饼图   pie_pyecharts.py

import csv

from pyecharts import options as opts
from pyecharts.charts import Pie
from random import randint

from pyecharts.globals import ThemeType

with open('time1.csv') as csvfile:
reader = csv.reader(csvfile)
x = [str(row[0]) for row in reader]
print(x)
with open('time1.csv') as csvfile:
reader = csv.reader(csvfile)
y1 = [float(row[1]) for row in reader]

print(y1)



num = y1
lab = x
(
Pie(init_opts=opts.InitOpts(width='1700px',height='450px',theme=ThemeType.LIGHT))#默认900,600
.set_global_opts(
title_opts=opts.TitleOpts(title="扫黑风暴近日评论统计",
title_textstyle_opts=opts.TextStyleOpts(font_size=27)),legend_opts=opts.LegendOpts(

pos_top="10%", pos_left="1%",# 图例位置调整
),)
.add(series_name='',center=[280, 270], data_pair=[(j, i) for i, j in zip(num, lab)])#饼图
.add(series_name='',center=[845, 270],data_pair=[(j,i) for i,j in zip(num,lab)],radius=['40%','75%'])#环图
.add(series_name='', center=[1380, 270],data_pair=[(j, i) for i, j in zip(num, lab)], rosetype='radius')#南丁格尔图
).render('../Html/pie_pyecharts.html')

效果图

在这里插入图片描述

5.制作每小时评论饼图  pie_pyecharts2.py

import csv

from pyecharts import options as opts
from pyecharts.charts import Pie
from random import randint

from pyecharts.globals import ThemeType

str_name1 = '点'

with open('time2.csv') as csvfile:
reader = csv.reader(csvfile)
x = [str(row[0]+str_name1) for row in reader]
print(x)
with open('time2.csv') as csvfile:
reader = csv.reader(csvfile)
y1 = [int(row[1]) for row in reader]

print(y1)



num = y1
lab = x
(
Pie(init_opts=opts.InitOpts(width='1650px',height='500px',theme=ThemeType.LIGHT,))#默认900,600
.set_global_opts(
title_opts=opts.TitleOpts(title="扫黑风暴每小时评论统计"
,title_textstyle_opts=opts.TextStyleOpts(font_size=27)),
legend_opts=opts.LegendOpts(

pos_top="8%", pos_left="4%",# 图例位置调整
),
)
.add(series_name='',center=[250, 300], data_pair=[(j, i) for i, j in zip(num, lab)])#饼图
.add(series_name='',center=[810, 300],data_pair=[(j,i) for i,j in zip(num,lab)],radius=['40%','75%'])#环图
.add(series_name='', center=[1350, 300],data_pair=[(j, i) for i, j in zip(num, lab)], rosetype='radius')#南丁格尔图
).render('../Html/pie_pyecharts2.html')

效果图

6.制作观看时间区间评论统计饼图  pie_pyecharts3.py

# coding=gbk
import csv

from pyecharts import options as opts
from pyecharts.globals import ThemeType
from sympy.combinatorics import Subset
from wordcloud import WordCloud

with open('../Spiders/data.csv') as csvfile:
reader = csv.reader(csvfile)

data2 = [int(row[1].strip('')[0:2]) for row in reader]


#print(data2)
print(type(data2))

#先变成集合得到seq中的所有元素,避免重复遍历
set_seq = set(data2)
list = []
for item in set_seq:
list.append((item,data2.count(item))) #添加元素及出现个数
list.sort()
print(type(list))
#print(list)


with open("time2.csv", "w+", newline='', encoding='utf-8') as f:
writer = csv.writer(f, delimiter=',')
for i in list: # 对于每一行的,将这一行的每个元素分别写在对应的列中
writer.writerow(i)


n = 4 #分成n组
m = int(len(list)/n)
list2 = []
for i in range(0, len(list), m):
list2.append(list[i:i+m])

print("凌晨 : ",list2[0])
print("上午 : ",list2[1])
print("下午 : ",list2[2])
print("晚上 : ",list2[3])

with open('time2.csv') as csvfile:
reader = csv.reader(csvfile)
y1 = [int(row[1]) for row in reader]

print(y1)

n =6
groups = [y1[i:i + n] for i in range(0, len(y1), n)]

print(groups)

x=['凌晨','上午','下午','晚上']
y1=[]
for y1 in groups:
num_sum = 0
for groups in y1:
num_sum += groups

print(x)
print(y1)


import csv

from pyecharts import options as opts
from pyecharts.charts import Pie
from random import randint

str_name1 = '点'

num = y1
lab = x
(
Pie(init_opts=opts.InitOpts(width='1500px',height='450px',theme=ThemeType.LIGHT))#默认900,600
.set_global_opts(
title_opts=opts.TitleOpts(title="扫黑风暴观看时间区间评论统计"
, title_textstyle_opts=opts.TextStyleOpts(font_size=30)),
legend_opts=opts.LegendOpts(

pos_top="8%", # 图例位置调整
),
)
.add(series_name='',center=[260, 270], data_pair=[(j, i) for i, j in zip(num, lab)])#饼图
.add(series_name='',center=[1230, 270],data_pair=[(j,i) for i,j in zip(num,lab)],radius=['40%','75%'])#环图
.add(series_name='', center=[750, 270],data_pair=[(j, i) for i, j in zip(num, lab)], rosetype='radius')#南丁格尔图
).render('../Html/pie_pyecharts3.html')


效果图

7.制作扫黑风暴主演提及占比饼图  pie_pyecharts4.py

import csv

import numpy as np
import re
import jieba
from matplotlib.pyplot import scatter
from wordcloud import WordCloud
from matplotlib import pyplot as plt
from PIL import Image

# 上面的包自己安装,不会的就百度

f = open('../Spiders/content.txt', 'r', encoding='utf-8') # 这是数据源,也就是想生成词云的数据
words = f.read() # 读取文件
f.close() # 关闭文件,其实用with就好,但是懒得改了

name=["孙红雷","张艺兴","刘奕君","吴越","王志飞","刘之冰","江疏影"]

print(name)
count=[float(words.count("孙红雷")),
float(words.count("艺兴")),
float(words.count("刘奕君")),
float(words.count("吴越")),
float(words.count("王志飞")),
float(words.count("刘之冰")),
float(words.count("江疏影"))]
print(count)

import csv

from pyecharts import options as opts
from pyecharts.charts import Pie
from random import randint

from pyecharts.globals import ThemeType

num = count
lab = name
(
Pie(init_opts=opts.InitOpts(width='1650px',height='450px',theme=ThemeType.LIGHT))#默认900,600
.set_global_opts(
title_opts=opts.TitleOpts(title="扫黑风暴主演提及占比",
title_textstyle_opts=opts.TextStyleOpts(font_size=27)),legend_opts=opts.LegendOpts(

pos_top="3%", pos_left="33%",# 图例位置调整
),)
.add(series_name='',center=[280, 270], data_pair=[(j, i) for i, j in zip(num, lab)])#饼图
.add(series_name='',center=[800, 270],data_pair=[(j,i) for i,j in zip(num,lab)],radius=['40%','75%'])#环图
.add(series_name='', center=[1300, 270],data_pair=[(j, i) for i, j in zip(num, lab)], rosetype='radius')#南丁格尔图
).render('../Html/pie_pyecharts4.html')

效果图


8.评论内容情感分析  SnowNLP.py

import numpy as np
from snownlp import SnowNLP
import matplotlib.pyplot as plt

f = open('../Spiders/content.txt', 'r', encoding='UTF-8')
list = f.readlines()
sentimentslist = []
for i in list:
s = SnowNLP(i)

print(s.sentiments)
sentimentslist.append(s.sentiments)
plt.hist(sentimentslist, bins=np.arange(0, 1, 0.01), facecolor='g')
plt.xlabel('Sentiments Probability')
plt.ylabel('Quantity')
plt.title('Analysis of Sentiments')
plt.show()

效果图(情感各分数段出现频率)SnowNLP情感分析是基于情感词典实现的,其简单的将文本分为两类,积极和消极,返回值为情绪的概率,也就是情感评分在[0,1]之间,越接近1,情感表现越积极,越接近0,情感表现越消极。


- EOF -

推荐阅读  点击标题可跳转

1、微软悄悄发布了 Web 版的 VSCode

2、Cache 工作原理,Cache 一致性,你想知道的都在这里

3、童年回忆!做了一个 Game Boy 模拟器,完美运行超级马里奥等游戏


关注「程序员的那些事」加星标,不错过圈内事

点赞和在看就是最大的支持❤️

Python社区是高质量的Python/Django开发社区
本文地址:http://www.python88.com/topic/120184
 
318 次点击