outline_extractor.py 15 KB

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  1. #!/usr/bin/env python3
  2. # -*- coding: utf-8 -*-
  3. """
  4. @author: bidikeji
  5. @time: 2024/7/19 10:05
  6. """
  7. import re
  8. from BiddingKG.dl.interface.htmlparser import ParseDocument,get_childs
  9. class Sentence2():
  10. def __init__(self,text,sentence_index,wordOffset_begin,wordOffset_end):
  11. self.name = 'sentence2'
  12. self.text = text
  13. self.sentence_index = sentence_index
  14. self.wordOffset_begin = wordOffset_begin
  15. self.wordOffset_end = wordOffset_end
  16. def get_text(self):
  17. return self.text
  18. def extract_sentence_list(sentence_list):
  19. new_sentence2_list = []
  20. new_sentence2_list_attach = []
  21. for sentence in sentence_list:
  22. sentence_index = sentence.sentence_index
  23. sentence_text = sentence.sentence_text
  24. begin_index = 0
  25. end_index = 0
  26. for it in re.finditer('([^一二三四五六七八九十,。][一二三四五六七八九十]{1,3}|[^\d\.、,。a-zA-Z]\d{1,2}(\.\d{1,2}){,2})、', sentence_text): # 例:289699210 1、招标内容:滑触线及配件2、招标品牌:3、参标供应商经营形式要求:厂家4、参标供应商资质要求:5、
  27. temp = it.group(0)
  28. sentence_text = sentence_text.replace(temp, temp[0] + ',' + temp[1:])
  29. for item in re.finditer('[,。;;!!?]+', sentence_text): # 20240725去掉英文问号,避免网址被分隔
  30. end_index = item.end()
  31. # if end_index!=len(sentence_text):
  32. # # if end_index-begin_index<6 and item.group(0) in [',', ';', ';'] and re.match('[一二三四五六七八九十\d.]+、', sentence_text[begin_index:end_index])==None: # 20240725 注销,避免标题提取错误
  33. # # continue
  34. if end_index != len(sentence_text) and re.match('[一二三四五六七八九十\d.]{1,2}[、,.]+$', sentence_text[begin_index:end_index]): # 避免表格序号和内容在不同表格情况 例:293178161
  35. continue
  36. new_sentence_text = sentence_text[begin_index:end_index]
  37. sentence2 = Sentence2(new_sentence_text,sentence_index,begin_index,end_index)
  38. if sentence.in_attachment:
  39. new_sentence2_list_attach.append(sentence2)
  40. else:
  41. new_sentence2_list.append(sentence2)
  42. begin_index = end_index
  43. if end_index!=len(sentence_text):
  44. end_index = len(sentence_text)
  45. new_sentence_text = sentence_text[begin_index:end_index]
  46. sentence2 = Sentence2(new_sentence_text, sentence_index, begin_index, end_index)
  47. if sentence.in_attachment:
  48. new_sentence2_list_attach.append(sentence2)
  49. else:
  50. new_sentence2_list.append(sentence2)
  51. return new_sentence2_list, new_sentence2_list_attach
  52. requirement_pattern = "(采购需求|需求分析|项目说明|(采购|合同|招标|询比?价|项目|服务|工程|标的|需求|建设)(的?(主要|简要|基本|具体|名称及))?" \
  53. "(内容|概况|概述|范围|信息|规模|简介|介绍|说明|摘要|情况)([及与和]((其它|\w{,2})[要需]求|发包范围|数量))?" \
  54. "|招标项目技术要求|服务要求|服务需求|项目目标|需求内容如下|建设规模)为?([::,]|$)"
  55. aptitude_pattern = "(资格要求|资质要求)([::,]|$)"
  56. addr_bidopen_pattern = "([开评]标|开启|评选|比选|磋商|遴选|寻源|采购|招标|竞价|议价|委托|询比?价|比价|谈判|邀标|邀请|洽谈|约谈|选取|抽取|抽选|递交\w{,4}文件)[))]?(时间[与及和、])?(地址|地点)([与及和、]时间)?([::,]|$)|开启([::,]|$)"
  57. addr_bidsend_pattern = "((\w{,4}文件)?(提交|递交)(\w{,4}文件)?|投标)(截止时间[与及和、])?地[点址]([与及和、]截止时间)?([::,]|$)"
  58. out_lines = []
  59. def extract_parameters(parse_document):
  60. '''
  61. 通过大纲、预处理后文本正则获取需要字段
  62. :param parse_document: ParseDocument() 方法返回结果
  63. :return:
  64. '''
  65. list_data = parse_document.tree
  66. requirement_text = '' # 采购内容
  67. aptitude_text = '' # 资质要求
  68. addr_bidopen_text = '' # 开标地址
  69. addr_bidsend_text = '' # 投标地址
  70. requirement_scope = [] # 采购内容始末位置
  71. _find_count = 0
  72. _data_i = -1
  73. while _data_i<len(list_data)-1:
  74. _data_i += 1
  75. _data = list_data[_data_i]
  76. _type = _data["type"]
  77. _text = _data["text"].strip()
  78. # print(_data.keys())
  79. if _type=="sentence":
  80. if _data["sentence_title"] is not None:
  81. if re.search('[((][一二三四五六七八九十}]+[))]|[一二三四五六七八九十]+\s*、|^\d{1,2}[.、][\u4e00-\u9fa5]', _text[:10]):
  82. out_lines.append((_text, _data['sentence_index'], _data['wordOffset_begin']))
  83. if re.search(requirement_pattern,_text[:30]) is not None and re.search('符合采购需求,', _text[:30])==None:
  84. b = (_data['sentence_index'], _data['wordOffset_begin'])
  85. childs = get_childs([_data])
  86. for c in childs:
  87. # requirement_text += c["text"]+"\n"
  88. requirement_text += c["text"]
  89. e = (c['sentence_index'], c["wordOffset_end"]) if len(childs)>0 else (_data['sentence_index'], _data['wordOffset_end'])
  90. requirement_scope.append(b)
  91. requirement_scope.append(e)
  92. _data_i += len(childs)
  93. _data_i -= 1
  94. _data_i = -1
  95. while _data_i<len(list_data)-1:
  96. _data_i += 1
  97. _data = list_data[_data_i]
  98. _type = _data["type"]
  99. _text = _data["text"].strip()
  100. # print(_data.keys())
  101. if _type=="sentence":
  102. # print("aptitude_pattern", _text)
  103. if _data["sentence_title"] is not None:
  104. # print("aptitude_pattern",_text)
  105. # outline = re.sub('(?[一二三四五六七八九十\d.]+)?\s*、?', '',
  106. # re.split('[::,]', _text)[0].replace('(', '(').replace(')', ')'))
  107. if re.search(aptitude_pattern,_text[:30]) is not None:
  108. childs = get_childs([_data])
  109. for c in childs:
  110. aptitude_text += c["text"]
  111. # if c["sentence_title"]:
  112. # aptitude_text += c["text"]+"\n"
  113. # else:
  114. # aptitude_text += c["text"]
  115. _data_i += len(childs)
  116. _data_i -= 1
  117. # elif re.match('[((\s★▲\*]?[一二三四五六七八九十\dⅠⅡⅢⅣⅤⅥⅦⅧⅨⅩⅪⅫ]+', _text) and len(_text)<30 and re.search('资质|资格', _text):
  118. # out_lines.append(outline)
  119. if _type=="table":
  120. list_table = _data["list_table"]
  121. parent_title = _data["parent_title"]
  122. if list_table is not None:
  123. for line in list_table[:2]:
  124. for cell_i in range(len(line)):
  125. cell = line[cell_i]
  126. cell_text = cell[0]
  127. if len(cell_text)>120 and re.search(aptitude_pattern,cell_text) is not None:
  128. aptitude_text += cell_text+"\n"
  129. _data_i = -1
  130. while _data_i < len(list_data) - 1:
  131. _data_i += 1
  132. _data = list_data[_data_i]
  133. _type = _data["type"]
  134. _text = _data["text"].strip()
  135. # print(_data.keys())
  136. if _type == "sentence":
  137. if _data["sentence_title"] is not None:
  138. if re.search(addr_bidopen_pattern, _text[:20]) is not None:
  139. childs = get_childs([_data], max_depth=1)
  140. for c in childs:
  141. addr_bidopen_text += c["text"]
  142. _data_i += len(childs)
  143. _data_i -= 1
  144. elif re.search(addr_bidsend_pattern, _text[:20]):
  145. childs = get_childs([_data], max_depth=1)
  146. for c in childs:
  147. addr_bidsend_text += c["text"]
  148. _data_i += len(childs)
  149. _data_i -= 1
  150. if re.search('时间:', addr_bidopen_text) and re.search('([开评]标|开启|评选|比选|递交\w{,4}文件)?地[点址]([((]网址[))])?:[^,;。]{2,100}[,;。]', addr_bidopen_text):
  151. for ser in re.finditer('([开评]标|开启|评选|比选|递交\w{,4}文件)?地[点址]([((]网址[))])?:[^,;。]{2,100}[,;。]', addr_bidopen_text):
  152. b, e = ser.span()
  153. addr_bidopen_text = addr_bidopen_text[b:e]
  154. elif re.search('开启', addr_bidopen_text) and re.search('时间:\d{2,4}年\d{1,2}月\d{1,2}日', addr_bidopen_text) and len(addr_bidopen_text)<40: # 优化类似 364991684只有时间没地址情况
  155. addr_bidopen_text = ""
  156. if re.search('时间:', addr_bidsend_text) and re.search('((\w{,4}文件)?(提交|递交)(\w{,4}文件)?|投标)?地[点址]([((]网址[))])?:[^,;。]{2,100}[,;。]', addr_bidsend_text):
  157. for ser in re.finditer('((\w{,4}文件)?(提交|递交)(\w{,4}文件)?|投标)?地[点址]([((]网址[))])?:[^,;。]{2,100}[,;。]', addr_bidsend_text):
  158. b, e = ser.span()
  159. addr_bidsend_text = addr_bidsend_text[b:e]
  160. return requirement_text, aptitude_text, addr_bidopen_text, addr_bidsend_text, out_lines, requirement_scope
  161. def extract_addr(content):
  162. '''
  163. 通过正则提取地址
  164. :param content: 公告预处理后文本
  165. :return:
  166. '''
  167. addr_bidopen_text = ''
  168. ser = re.search('([开评]标|开启|评选|比选|磋商|遴选|寻源|采购|招标|竞价|议价|委托|询比?价|比价|谈判|邀标|邀请|洽谈|约谈|选取|抽取|抽选|递交\w{,4}文件))?(会议)?地[点址]([((]网址[))])?[:为][^,;。]{2,100}[,;。]', content)
  169. if ser:
  170. addr_bidopen_text = ser.group(0)
  171. return addr_bidopen_text
  172. if __name__ == "__main__":
  173. # with open('D:\html/2.html', 'r', encoding='UTF-8') as f:
  174. # html = f.read()
  175. #
  176. l = []
  177. import pandas as pd
  178. from collections import Counter
  179. from BiddingKG.dl.interface import Preprocessing
  180. from BiddingKG.dl.interface.get_label_dic import get_all_label
  181. from bs4 import BeautifulSoup
  182. import json
  183. df = pd.read_excel('E:/公告招标内容提取结果2.xlsx')
  184. df['len']= df['招标内容'].apply(lambda x: len(x))
  185. print(len(df), sum(df['len']),sum(df['len'])/len(df), max(df['len']), min(df['len']))
  186. print(len([it for it in df['len'] if it>1500]))
  187. # df = pd.read_csv(r'E:\channel分类数据\2022年每月两天数据/指定日期_html2022-12-10.csv')
  188. # df1 = pd.read_excel('E:/公告招标内容提取结果.xlsx')
  189. # df = df[df['docid'].isin(df1['docid'])]
  190. #
  191. # df.drop_duplicates(subset=['docchannel', 'web_source_name', 'exist_table'], inplace=True)
  192. # print(df.columns, len(df))
  193. #
  194. #
  195. # # def get_text(html):
  196. # # soup = BeautifulSoup(html, 'lxml')
  197. # # text = soup.get_text()
  198. # # return text
  199. # # df['content'] = df['dochtmlcon'].apply(lambda x: get_text(x))
  200. # # df['标签'] = df.apply(lambda x: get_all_label(x['doctitle'], x['content']), axis=1)
  201. # # df['标签'] = df['标签'].apply(lambda x: json.dumps(x, ensure_ascii=False, indent=2))
  202. # # df1 = df[['docid', '标签']]
  203. #
  204. # n = 0
  205. # datas = []
  206. # for id,title, html in zip(df['docid'],df['doctitle'], df['dochtmlcon']):
  207. # # if id not in [289647738, 289647739]:
  208. # # continue
  209. # # print(id, type(id))
  210. # # parse_document = ParseDocument(html, True)
  211. # # requirement_text, aptitude_text = extract_parameters(parse_document)
  212. # # if re.search('资\s*[格质]', html)==None:
  213. # # continue
  214. #
  215. # list_articles, list_sentences, list_entitys, list_outlines, _cost_time = Preprocessing.get_preprocessed([[id,html,"","",title,'', '']],useselffool=True)
  216. # sentence2_list, sentence2_list_attach = extract_sentence_list(list_sentences[0])
  217. #
  218. # # sentence2_list = []
  219. #
  220. # parse_document = ParseDocument(html, True, list_obj=sentence2_list)
  221. # requirement_text, aptitude_text = extract_parameters(parse_document)
  222. # # if len(aptitude_text)>0:
  223. # # datas.append((id, aptitude_text[:1500]))
  224. # # print(id, aptitude_text[:10], aptitude_text[-20:])
  225. # # else:
  226. # # parse_document = ParseDocument(html, True, list_obj=sentence2_list_attach)
  227. # # requirement_text, aptitude_text = extract_parameters(parse_document)
  228. #
  229. # # if 0<len(aptitude_text)<20:
  230. # # l.append(len(aptitude_text))
  231. # # n += 1
  232. # # print(id, aptitude_text)
  233. # # if n > 5:
  234. # # break
  235. #
  236. # if len(requirement_text)>0:
  237. # label_dic = get_all_label(title, list_articles[0].content)
  238. # # datas.append((id, requirement_text))
  239. # datas.append((id, requirement_text, label_dic))
  240. #
  241. # c = Counter(out_lines)
  242. # print(c.most_common(1000))
  243. # #
  244. # # df = pd.DataFrame(datas, columns=['docid', '资质要求'])
  245. # # df.to_excel('E:/公告资质要求提取结果.xlsx')
  246. #
  247. # df = pd.DataFrame(datas, columns=['docid', '招标内容', '标签'])
  248. # df['标签'] = df['标签'].apply(lambda x: json.dumps(x, ensure_ascii=False, indent=2))
  249. # df.to_excel('E:/公告招标内容提取结果2.xlsx')
  250. # if len(aptitude_text)> 1000:
  251. # print(id, aptitude_text[:10], aptitude_text[-20:])
  252. # print(Counter(l).most_common(50))
  253. # print(len(df), len(l), min(l), max(l), sum(l)/len(l))
  254. # n1 = len([it for it in l if it < 500])
  255. # n2 = len([it for it in l if it < 1000])
  256. # n3 = len([it for it in l if it < 1500])
  257. # n4 = len([it for it in l if it < 2000])
  258. # print(n1, n2, n3, n4, n1/len(l), n2/len(l), n3/len(l), n4/len(l))
  259. # parse_document = ParseDocument(html,True)
  260. # requirement_text, new_list_policy, aptitude_text = extract_parameters(parse_document)
  261. # print(aptitude_text)
  262. # sentence_text = '5、要求:3.1投标其他条件:1、中国宝武集团项目未列入禁入名单的投标人。2、具有有效的营业执照;'
  263. # begin_index = 0
  264. # for item in re.finditer('[,。;;!!??]+', sentence_text):
  265. # end_index = item.end()
  266. # if end_index != len(sentence_text):
  267. # if end_index - begin_index < 6:
  268. # continue
  269. # new_sentence_text = sentence_text[begin_index:end_index]
  270. # print(new_sentence_text)
  271. # df = pd.read_excel('E:/公告资质要求提取结果.xlsx')
  272. # docids = []
  273. # pos = neg = 0
  274. # for docid, text in zip(df['docid'], df['资质要求']):
  275. # if re.match('[((\s★▲\*]?[一二三四五六七八九十\dⅠⅡⅢⅣⅤⅥⅦⅧⅨⅩⅪⅫ]+', text) and re.search(aptitude_pattern, text[:15]):
  276. # pos += 1
  277. # pass
  278. # else:
  279. # neg += 1
  280. # print(docid, text[:50])
  281. # docids.append(docid)
  282. # print('异常:%d, 正常:%d'%(neg, pos))
  283. # print(docids)