Python爬取新楼盘近况数据,并进行可视化分析数据

十三届全国人大四次会议5日上午9时在人民大会堂开幕,其中住房政策:“房住不炒”,解决好大城市住房突出问题 。
本文通过爬取全国各城市在售新房,进行可视化分析 。
数据获取
通过爬取全国城市在售预售新盘,下面以获取单个城市为例,介绍爬取数据部门主要代码 。
定义函数
定义好获取每个项目信息的函数 。
def get_house_status(soup):"""获取房屋状态信息"""house_status = []status = soup.find_all(attrs={'class': 'fangyuan'})for state in status:_status = state.span.texthouse_status.append(_status)return house_statusdef get_house_price(soup):"""获取房屋价格信息"""house_price = []regex = re.compile('\s(\S+)\s')prices = soup.find_all(attrs={'class': 'nhouse_price'})for price in prices:_prices = regex.findall(price.text)_price = ''if _prices[0] == '价格待定':passelse:p = _prices[0].split('元')[0]if '万' in p:_price = p + '元/套'else:_price = p + '元/m2'house_price.append(_price)return house_pricedef get_house_address(soup, c_city):"""获取房屋地址信息"""house_address = []region = []regex = re.compile('\s(\S+)\s')addresses = soup.find_all(attrs={'class': 'address'})for address in addresses:_address = regex.findall(address.text)if len(_address) > 1:region.append(_address[0].split('[')[1].split(']')[0])else:region.append(c_city)house_address.append(address.a['title'])return region, house_addressdef get_house_type(soup):"""获取房屋类型信息"""house_type = []regex = re.compile('\s(\S+)\s')house_types = soup.find_all(attrs={'class': 'house_type clearfix'})for _house_type in house_types:type_list = regex.findall(_house_type.text)type_str = ''for i in type_list:type_str += ihouse_type.append(type_str)return house_typedef get_house_name(soup):"""获取项目名称信息"""house_name = []regex = re.compile('\s(\S+)\s')nlcd_names = soup.find_all(attrs={'class': 'nlcd_name'})for nlcd_name in nlcd_names:name = ''names = regex.findall(nlcd_name.text)if len(names) > 1:for n in names:name += nhouse_name.append(name)else:house_name.extend(names)return house_name
获取数据的主函数
def get_data(c_city, city, start_page, cache):"""获取数据"""requests_cache.install_cache()requests_cache.clear()session = requests_cache.CachedSession()# 创建缓存会话session.hooks = {'response': make_throttle_hook(np.random.randint(8, 12))}# 配置钩子函数print(f'现在爬取{c_city}'.center(50, '*'))last_page = get_last_page(city)print(f'{c_city}共有{last_page}页')time.sleep(np.random.randint(15, 20))df_city = pd.DataFrame()user_agent = UserAgent().randomfor page in range(start_page, last_page):try:cache['start_page'] = pageprint(cache)cache_json = json.dumps(cache, ensure_ascii=False)with open('cache.txt', 'w', encoding='utf-8') as fout:fout.write(cache_json)print(f'现在爬取{c_city}的第{page + 1}页.')if page == 0:df_city = pd.DataFrame()else:df_city = pd.read_csv(f'df_{c_city}.csv', encoding='utf-8')url = html_url(city, page + 1)if page % 2 == 0:user_agent = UserAgent().random# 创建随机请求头header = {"User-Agent": user_agent}res = session.post(url, headers=header)if res.status_code == 200:res.encoding = 'gb18030'soup = BeautifulSoup(res.text, features='lxml')# 对html进行解析,完成初始化region, house_address = get_house_address(soup, c_city)house_name = get_house_name(soup)house_type = get_house_type(soup)house_price = get_house_price(soup)house_status = get_house_status(soup)df_page = to_df(c_city, region, house_name, house_address, house_type, house_price, house_status)df_city = pd.concat([df_city, df_page])df_city.head(2)time.sleep(np.random.randint(5, 10))df_city.to_csv(f'df_{c_city}.csv', encoding='utf-8', index=False)except:# 若报错则保存数据、以便继续df_city.to_csv(f'df_{c_city}.csv', encoding='utf-8', index=False)cache_json = json.dumps(cache, ensure_ascii=False)with open('cache.txt', 'w', encoding='utf-8') as fout:fout.write(cache_json)return df_city
爬取过程中,将每个城市单独保存为一个csv文件:
合并数据
import osimport pandas as pddf_total = pd.DataFrame()for root, dirs, files in os.path.walk('./全国房价数据集'):for file in files:split_file = os.path.splitext(file)file_ext = split_file[1]if file_ext == '.csv':path = root + os.sep + filedf_city = pd.read_csv(path, encoding='utf-8')df_total = pd.concat([df_total, df_city])df_total.to_csv(root+os.sep+'全国新房202102.csv', encoding='utf-8', index=False)
数据清洗
导入需要用的模块
import pandas as pdimport numpy as npimport matplotlib.pyplot as pltimport seaborn as snsimport missingno as msno
读取数据
raw_data = http://www.kingceram.com/post/pd.read_csv('全国新房202102.csv', encoding='utf-8')raw_data.sample(5)
查看下数据基本情况
>>> raw_data.shape(54733, 7)>>> len(raw_data.city.drop_duplicates())581
爬取了全国581个城市,共计54733个在售、预售房产项目 。
由于获取到的数据存在缺失值、异常值以及不能直接使用的数据 , 因此在分析前需要先处理缺失值、异常值等 , 以便后续分析 。
缺失值分析
msno.matrix(raw_data)
整体来看,处理存在缺失值,这是因为这部分楼盘是预售状态,暂未公布售价 。

Python爬取新楼盘近况数据,并进行可视化分析数据

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再仔细分析,有两种形式
除了预售缺失值外,有单价和总价两种,为方便统计 , 需将总价除以面积 , 将价格统一为单均价 。因此需要对户型进行处理,如下:
def deal_house_type(data):res = []if data is np.nan:return [np.nan, np.nan, np.nan]else:if '-'in data:types = data.split('-')[0]areas = data.split('-')[1]area = areas.split('~')if len(area) == 1:min_area = areas.split('~')[0][0:-2]max_area = areas.split('~')[0][0:-2]else:min_area = areas.split('~')[0]max_area = areas.split('~')[1][0:-2]res = [types, int(min_area), int(max_area)]return reselse:return [np.nan, np.nan, np.nan]
series_type = raw_data.house_type.map(lambda x: deal_house_type(x))df_type = pd.DataFrame(series_type.to_dict(), index=['house_type', 'min_area', 'max_area']).Tdata_type = pd.concat([data_copy.drop(labels='house_type',axis=1), df_type], axis=1)data_type.head()
得到下表
得到户型面积后,接下来处理房屋价格 。
def deal_house_price(data):try:if data.house_price is np.nan:return np.nanelse:if "价格待定" in data.house_price:return np.nanelif "万" not in data.house_price:price = int(data.house_price.split('元')[0])else:price_total = int(float(data.house_price.split('万')[0])* 10000)if data.min_area is np.nan and data.max_area is np.nan:return np.nanelif data.min_area is np.nan:price = price_total/ data.max_areaelif data.max_area is np.nan:price = price_total / data.min_areaelse:price = price_total / (data.min_area + data.max_area)return int(price)except:return np.nanseries_price = data_type.apply(lambda x:deal_house_price(x), axis=1 )data_type['house_price'] = series_pricedata_type.head()
得到结果
缺失值处理
data = http://www.kingceram.com/post/data_type.copy()# 房价缺失值用0填充data['house_price'] = data_type.house_price.fillna(0)data['house_type'] = data_type.house_type.fillna('未知')
异常值分析
data.describe([.1, .25, .5, .75, .99]).T
很明显有个缺失值,查看原网页,此数值因较特殊 , 清洗过程中多乘 , 因此直接将此值更改过来即可 。
还可以通过可视化(箱图)的方式查看异常值 。
from pyecharts import options as optsfrom pyecharts.charts import Boxplotv = [int(i) for i in data.house_price]c = Boxplot()c.add_xaxis(["house_price"])c.add_yaxis("house_price", v)c.set_global_opts(title_opts=opts.TitleOpts(title="house_price"))c.render_notebook()
可视化分析
全国城市在售新房均价TOP15
全国城市新房均价分析,房价是我们最关心的一个特征之一,因此看下全国均价最高的是哪几个城市 。
# 将空值筛选掉data1 =data.query('house_price != 0')data_pivot = data1.pivot_table(values='house_price',index='city').sort_values(by='house_price', ascending=False)data_pivot
全国城市在售新房均价条形图
from pyecharts.charts import Barfrom pyecharts.globals import ThemeTypex_axis = [i for i in data_pivot.index[0:15]]y_axis = [round(float(i), 1) for i in data_pivot.house_price.values[0:15]]c = (Bar({"theme": ThemeType.DARK}).add_xaxis(x_axis).add_yaxis("house_price_avg", y_axis).set_global_opts(title_opts=opts.TitleOpts(title="全国城市在售新房均价TOP15", subtitle="数据: STUDIO"),brush_opts=opts.BrushOpts(),))c.render_notebook()
Python爬取新楼盘近况数据,并进行可视化分析数据

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结果如下,排名前面的一直都是深圳、北京、上海等一线城市 。
全国房价地理位置图
import pandas as pdfrom pyecharts.globals import ThemeType, CurrentConfig, GeoTypefrom pyecharts import options as optsfrom pyecharts.charts import Geo#自定义各城市的经纬度# geo_cities_coords = {df.iloc[i]['城市']:[df.iloc[i]['经度'],df.iloc[i]['纬度']] for i in range(len(df))}datas = [(i, int(j)) for i, j in zip(data_pivot.index, data_pivot.values)]# print(datas)geo = (Geo(init_opts=opts.InitOpts(width='1000px', height='600px', theme=ThemeType.PURPLE_PASSION),is_ignore_nonexistent_coord = True).add_schema(maptype='china', label_opts=opts.LabelOpts(is_show=True))# 显示label省名.add('均价', data_pair=datas, type_=GeoType.EFFECT_SCATTER, symbol_size=8,# geo_cities_coords=geo_cities_coords).set_series_opts(label_opts=opts.LabelOpts(is_show=False)).set_global_opts(title_opts=opts.TitleOpts(title='全国城市在售新房均价', subtitle="制图: 数据STUDIO"),visualmap_opts=opts.VisualMapOpts(max_=550,is_piecewise=True,pieces=[{"max": 5000, "min": 1000, "label": "1000-5000", "color": "#708090"},{"max": 10000, "min": 5001, "label": "5001-10000", "color": "#00FFFF"},{"max": 20000, "min": 10001, "label": "10001-20000", "color": "#FF69B4"},{"max": 30000, "min": 20001, "label": "20001-30000", "color": "#FFD700"},{"max": 40000, "min": 30001, "label": "30001-40000", "color": "#FF0000"},{"max": 100000, "min": 40001, "label": "40000-100000", "color": "#228B22"},])))geo.render('全国城市在售新房均价.html')
近年来,火热的楼市价格一路飙升,为了稳定房价,各地政府相继出台各项调控政策 。据统计,今年内全国各地累计出台楼市调控政策次数已高达97次(近100次),其中,1月份单月全国各地楼市调控政策次数高达42次,2月份比1月份多3次,共计45次 。
全国新房项目总数排行榜
接下来看看全国在售\预售新房项目总数排行TOP20,排在前五的分别是四川成都--1000个,重庆--938个,湖北武汉--859个,陕西西安--840个,河南郑州--822个,均是新一线城市(成都、杭州、重庆、武汉、苏州、西安、天津、南京、郑州、长沙、沈阳、青岛、宁波、东莞和无锡) 。
现在的新一线城市经济发展速度较快,未来发展前景广阔 , 可以说是仅次于北上广深 。人口都在持续流入,人口流入将会增加对于房产的需求,房产需求增长将会让房产价格稳步攀升 。也是很值得投资的 。
from pyecharts import options as optsfrom pyecharts.charts import Barcity_counts = data.city.value_counts()[0:20]x_values = city_counts.index.to_list()y_values = [int(i) for i in city_counts.values]bar = (Bar().add_xaxis(x_values).add_yaxis("",y_values,itemstyle_opts=opts.ItemStyleOpts(color="#749f83")).set_global_opts(title_opts=opts.TitleOpts(title="全国新房项目总数TOP20"),toolbox_opts=opts.ToolboxOpts(),legend_opts=opts.LegendOpts(is_show=False),datazoom_opts=opts.DataZoomOpts(),))bar.render_notebook()
结果
城市各行政区在售新房均价
以在售/预售房产项目最多的成都为例,看城市各行政区在售新房均价 。
在"住房不炒"的大环境下,各大城市限购政策越来越严格 。近日成都更是实行购房资格预审,热点楼盘优先向无房居民家庭销售,是我们这些刚需的一大福音 。接下来一起看看吧 。
成都各行政区在售新房均价
data2 = data.query('house_price != 0 and city=="成都"')data_pivot_cd = data2.pivot_table(values='house_price',index='region').sort_values(by='house_price')x_axis2 = [i for i in data_pivot_cd.index[10:]]y_axis2 = [round(float(i), 1) for i in data_pivot_cd.house_price.values[10:]]c = (Bar({"theme": ThemeType.DARK}).add_xaxis(x_axis2).add_yaxis("house_price_avg", y_axis2).reversal_axis().set_global_opts(title_opts=opts.TitleOpts(title="成都各行政区在售新房均价TOP10", subtitle="制图: 数据STUDIO"),brush_opts=opts.BrushOpts()).set_series_opts(label_opts=opts.LabelOpts(position="right")))c.render_notebook()
结果如下
成都各行政区新房分布
from pyecharts.charts import Piedata_cq = data[data.city=='成都']df_cq = data_cq.region.value_counts()[0:15]regions = df_cq.index.to_list()values = df_cq.to_list()c = (Pie(init_opts=opts.InitOpts(theme=ThemeType.DARK)).add("", list(zip(regions,values))).set_global_opts(legend_opts = opts.LegendOpts(type_="scroll",pos_right="90%",pos_top='20%',orient="vertical"),title_opts=opts.TitleOpts(title="区域新房源数分布",subtitle="制图: 数据STUDIO",pos_top="0.5%",pos_left = 'left')).set_series_opts(label_opts=opts.LabelOpts(formatter="{b}占比:{d}%",font_size=14)))c.render_notebook()
结果如下:
由饼图发现 , 除了成都周边(综合)外 , 天府新区房源总数占比最高,成都直管区天府新区也是成都近年来发展势头很强劲的行政区 。
2014年,四川天府新区正式获批成为中国第11个国家级新区 。2020年,四川天府新区引进重大产业项目86个、协议总投资2285亿元,实现地区生产总值3561亿元、增长6.7% , 居国家级新区第5位 。
from pyecharts.charts import Piedata_cq_notna = data[data.city=='成都']data_cq_notna.dropna(subset=['min_area', 'max_area'], inplace=True)data_cq_notna['min_area'] = data_cq_notna['min_area'].astype('int') data_cq_notna['max_area'] = data_cq_notna['max_area'].astype('int') data_cq_notna_pivot = data_cq_notna.pivot_table(values=['min_area', 'max_area'], index='region')data_cq_notna_pivot.sort_values(by='max_area', ascending=False,inplace=True)regions = data_cq_notna_pivot.index.to_list()avg_area1 = data_cq_notna_pivot.min_area.to_list()avg_area2 = data_cq_notna_pivot.max_area.to_list()c = (Bar(init_opts=opts.InitOpts(theme=ThemeType.LIGHT)).add_xaxis(regions).add_yaxis("平均最大铭面积", avg_area2, stack="stack1").add_yaxis("平均最小铭面积", avg_area1, stack="stack1").set_series_opts(label_opts=opts.LabelOpts(is_show=False)).set_global_opts(xaxis_opts=opts.AxisOpts(axislabel_opts=opts.LabelOpts(font_size=13)),#更改横坐标字体大小yaxis_opts=opts.AxisOpts(axislabel_opts=opts.LabelOpts(font_size=13)), #更改纵坐标字体大小title_opts=opts.TitleOpts(title="区域新房源户型面积",subtitle="制图: 数据STUDIO",pos_top="0.5%",pos_left = 'left'),datazoom_opts=opts.DataZoomOpts()))c.render_notebook()
【Python爬取新楼盘近况数据,并进行可视化分析数据】输出结果