analyzer.py 28 KB

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  1. # coding=utf-8
  2. """
  3. 统计分析模块
  4. 提供新闻统计和分析功能:
  5. - calculate_news_weight: 计算新闻权重
  6. - format_time_display: 格式化时间显示
  7. - count_word_frequency: 统计词频
  8. """
  9. from typing import Dict, List, Tuple, Optional, Callable
  10. from trendradar.core.frequency import matches_word_groups
  11. def calculate_news_weight(
  12. title_data: Dict,
  13. rank_threshold: int,
  14. weight_config: Dict,
  15. ) -> float:
  16. """
  17. 计算新闻权重,用于排序
  18. Args:
  19. title_data: 标题数据,包含 ranks 和 count
  20. rank_threshold: 排名阈值
  21. weight_config: 权重配置 {RANK_WEIGHT, FREQUENCY_WEIGHT, HOTNESS_WEIGHT}
  22. Returns:
  23. float: 计算出的权重值
  24. """
  25. ranks = title_data.get("ranks", [])
  26. if not ranks:
  27. return 0.0
  28. count = title_data.get("count", len(ranks))
  29. # 排名权重:Σ(11 - min(rank, 10)) / 出现次数
  30. rank_scores = []
  31. for rank in ranks:
  32. score = 11 - min(rank, 10)
  33. rank_scores.append(score)
  34. rank_weight = sum(rank_scores) / len(ranks) if ranks else 0
  35. # 频次权重:min(出现次数, 10) × 10
  36. frequency_weight = min(count, 10) * 10
  37. # 热度加成:高排名次数 / 总出现次数 × 100
  38. high_rank_count = sum(1 for rank in ranks if rank <= rank_threshold)
  39. hotness_ratio = high_rank_count / len(ranks) if ranks else 0
  40. hotness_weight = hotness_ratio * 100
  41. total_weight = (
  42. rank_weight * weight_config["RANK_WEIGHT"]
  43. + frequency_weight * weight_config["FREQUENCY_WEIGHT"]
  44. + hotness_weight * weight_config["HOTNESS_WEIGHT"]
  45. )
  46. return total_weight
  47. def format_time_display(
  48. first_time: str,
  49. last_time: str,
  50. convert_time_func: Callable[[str], str],
  51. ) -> str:
  52. """
  53. 格式化时间显示(将 HH-MM 转换为 HH:MM)
  54. Args:
  55. first_time: 首次出现时间
  56. last_time: 最后出现时间
  57. convert_time_func: 时间格式转换函数
  58. Returns:
  59. str: 格式化后的时间显示字符串
  60. """
  61. if not first_time:
  62. return ""
  63. # 转换为显示格式
  64. first_display = convert_time_func(first_time)
  65. last_display = convert_time_func(last_time)
  66. if first_display == last_display or not last_display:
  67. return first_display
  68. else:
  69. return f"[{first_display} ~ {last_display}]"
  70. def count_word_frequency(
  71. results: Dict,
  72. word_groups: List[Dict],
  73. filter_words: List[str],
  74. id_to_name: Dict,
  75. title_info: Optional[Dict] = None,
  76. rank_threshold: int = 3,
  77. new_titles: Optional[Dict] = None,
  78. mode: str = "daily",
  79. global_filters: Optional[List[str]] = None,
  80. weight_config: Optional[Dict] = None,
  81. max_news_per_keyword: int = 0,
  82. sort_by_position_first: bool = False,
  83. is_first_crawl_func: Optional[Callable[[], bool]] = None,
  84. convert_time_func: Optional[Callable[[str], str]] = None,
  85. quiet: bool = False,
  86. ) -> Tuple[List[Dict], int]:
  87. """
  88. 统计词频,支持必须词、频率词、过滤词、全局过滤词,并标记新增标题
  89. Args:
  90. results: 抓取结果 {source_id: {title: title_data}}
  91. word_groups: 词组配置列表
  92. filter_words: 过滤词列表
  93. id_to_name: ID 到名称的映射
  94. title_info: 标题统计信息(可选)
  95. rank_threshold: 排名阈值
  96. new_titles: 新增标题(可选)
  97. mode: 报告模式 (daily/incremental/current)
  98. global_filters: 全局过滤词(可选)
  99. weight_config: 权重配置
  100. max_news_per_keyword: 每个关键词最大显示数量
  101. sort_by_position_first: 是否优先按配置位置排序
  102. is_first_crawl_func: 检测是否是当天第一次爬取的函数
  103. convert_time_func: 时间格式转换函数
  104. quiet: 是否静默模式(不打印日志)
  105. Returns:
  106. Tuple[List[Dict], int]: (统计结果列表, 总标题数)
  107. """
  108. # 默认权重配置
  109. if weight_config is None:
  110. weight_config = {
  111. "RANK_WEIGHT": 0.4,
  112. "FREQUENCY_WEIGHT": 0.3,
  113. "HOTNESS_WEIGHT": 0.3,
  114. }
  115. # 默认时间转换函数
  116. if convert_time_func is None:
  117. convert_time_func = lambda x: x
  118. # 默认首次爬取检测函数
  119. if is_first_crawl_func is None:
  120. is_first_crawl_func = lambda: True
  121. # 如果没有配置词组,创建一个包含所有新闻的虚拟词组
  122. if not word_groups:
  123. print("频率词配置为空,将显示所有新闻")
  124. word_groups = [{"required": [], "normal": [], "group_key": "全部新闻"}]
  125. filter_words = [] # 清空过滤词,显示所有新闻
  126. is_first_today = is_first_crawl_func()
  127. # 确定处理的数据源和新增标记逻辑
  128. if mode == "incremental":
  129. if is_first_today:
  130. # 增量模式 + 当天第一次:处理所有新闻,都标记为新增
  131. results_to_process = results
  132. all_news_are_new = True
  133. else:
  134. # 增量模式 + 当天非第一次:只处理新增的新闻
  135. results_to_process = new_titles if new_titles else {}
  136. all_news_are_new = True
  137. elif mode == "current":
  138. # current 模式:只处理当前时间批次的新闻,但统计信息来自全部历史
  139. if title_info:
  140. latest_time = None
  141. for source_titles in title_info.values():
  142. for title_data in source_titles.values():
  143. last_time = title_data.get("last_time", "")
  144. if last_time:
  145. if latest_time is None or last_time > latest_time:
  146. latest_time = last_time
  147. # 只处理 last_time 等于最新时间的新闻
  148. if latest_time:
  149. results_to_process = {}
  150. for source_id, source_titles in results.items():
  151. if source_id in title_info:
  152. filtered_titles = {}
  153. for title, title_data in source_titles.items():
  154. if title in title_info[source_id]:
  155. info = title_info[source_id][title]
  156. if info.get("last_time") == latest_time:
  157. filtered_titles[title] = title_data
  158. if filtered_titles:
  159. results_to_process[source_id] = filtered_titles
  160. if not quiet:
  161. print(
  162. f"当前榜单模式:最新时间 {latest_time},筛选出 {sum(len(titles) for titles in results_to_process.values())} 条当前榜单新闻"
  163. )
  164. else:
  165. results_to_process = results
  166. else:
  167. results_to_process = results
  168. all_news_are_new = False
  169. else:
  170. # 当日汇总模式:处理所有新闻
  171. results_to_process = results
  172. all_news_are_new = False
  173. total_input_news = sum(len(titles) for titles in results.values())
  174. filter_status = (
  175. "全部显示"
  176. if len(word_groups) == 1 and word_groups[0]["group_key"] == "全部新闻"
  177. else "频率词过滤"
  178. )
  179. print(f"当日汇总模式:处理 {total_input_news} 条新闻,模式:{filter_status}")
  180. word_stats = {}
  181. total_titles = 0
  182. processed_titles = {}
  183. matched_new_count = 0
  184. if title_info is None:
  185. title_info = {}
  186. if new_titles is None:
  187. new_titles = {}
  188. for group in word_groups:
  189. group_key = group["group_key"]
  190. word_stats[group_key] = {"count": 0, "titles": {}}
  191. for source_id, titles_data in results_to_process.items():
  192. total_titles += len(titles_data)
  193. if source_id not in processed_titles:
  194. processed_titles[source_id] = {}
  195. for title, title_data in titles_data.items():
  196. if title in processed_titles.get(source_id, {}):
  197. continue
  198. # 使用统一的匹配逻辑
  199. matches_frequency_words = matches_word_groups(
  200. title, word_groups, filter_words, global_filters
  201. )
  202. if not matches_frequency_words:
  203. continue
  204. # 如果是增量模式或 current 模式第一次,统计匹配的新增新闻数量
  205. if (mode == "incremental" and all_news_are_new) or (
  206. mode == "current" and is_first_today
  207. ):
  208. matched_new_count += 1
  209. source_ranks = title_data.get("ranks", [])
  210. source_url = title_data.get("url", "")
  211. source_mobile_url = title_data.get("mobileUrl", "")
  212. # 找到匹配的词组(防御性转换确保类型安全)
  213. title_lower = str(title).lower() if not isinstance(title, str) else title.lower()
  214. for group in word_groups:
  215. required_words = group["required"]
  216. normal_words = group["normal"]
  217. # 如果是"全部新闻"模式,所有标题都匹配第一个(唯一的)词组
  218. if len(word_groups) == 1 and word_groups[0]["group_key"] == "全部新闻":
  219. group_key = group["group_key"]
  220. word_stats[group_key]["count"] += 1
  221. if source_id not in word_stats[group_key]["titles"]:
  222. word_stats[group_key]["titles"][source_id] = []
  223. else:
  224. # 原有的匹配逻辑
  225. if required_words:
  226. all_required_present = all(
  227. req_word.lower() in title_lower
  228. for req_word in required_words
  229. )
  230. if not all_required_present:
  231. continue
  232. if normal_words:
  233. any_normal_present = any(
  234. normal_word.lower() in title_lower
  235. for normal_word in normal_words
  236. )
  237. if not any_normal_present:
  238. continue
  239. group_key = group["group_key"]
  240. word_stats[group_key]["count"] += 1
  241. if source_id not in word_stats[group_key]["titles"]:
  242. word_stats[group_key]["titles"][source_id] = []
  243. first_time = ""
  244. last_time = ""
  245. count_info = 1
  246. ranks = source_ranks if source_ranks else []
  247. url = source_url
  248. mobile_url = source_mobile_url
  249. # 对于 current 模式,从历史统计信息中获取完整数据
  250. if (
  251. mode == "current"
  252. and title_info
  253. and source_id in title_info
  254. and title in title_info[source_id]
  255. ):
  256. info = title_info[source_id][title]
  257. first_time = info.get("first_time", "")
  258. last_time = info.get("last_time", "")
  259. count_info = info.get("count", 1)
  260. if "ranks" in info and info["ranks"]:
  261. ranks = info["ranks"]
  262. url = info.get("url", source_url)
  263. mobile_url = info.get("mobileUrl", source_mobile_url)
  264. elif (
  265. title_info
  266. and source_id in title_info
  267. and title in title_info[source_id]
  268. ):
  269. info = title_info[source_id][title]
  270. first_time = info.get("first_time", "")
  271. last_time = info.get("last_time", "")
  272. count_info = info.get("count", 1)
  273. if "ranks" in info and info["ranks"]:
  274. ranks = info["ranks"]
  275. url = info.get("url", source_url)
  276. mobile_url = info.get("mobileUrl", source_mobile_url)
  277. if not ranks:
  278. ranks = [99]
  279. time_display = format_time_display(first_time, last_time, convert_time_func)
  280. source_name = id_to_name.get(source_id, source_id)
  281. # 判断是否为新增
  282. is_new = False
  283. if all_news_are_new:
  284. # 增量模式下所有处理的新闻都是新增,或者当天第一次的所有新闻都是新增
  285. is_new = True
  286. elif new_titles and source_id in new_titles:
  287. # 检查是否在新增列表中
  288. new_titles_for_source = new_titles[source_id]
  289. is_new = title in new_titles_for_source
  290. word_stats[group_key]["titles"][source_id].append(
  291. {
  292. "title": title,
  293. "source_name": source_name,
  294. "first_time": first_time,
  295. "last_time": last_time,
  296. "time_display": time_display,
  297. "count": count_info,
  298. "ranks": ranks,
  299. "rank_threshold": rank_threshold,
  300. "url": url,
  301. "mobileUrl": mobile_url,
  302. "is_new": is_new,
  303. }
  304. )
  305. if source_id not in processed_titles:
  306. processed_titles[source_id] = {}
  307. processed_titles[source_id][title] = True
  308. break
  309. # 最后统一打印汇总信息
  310. if mode == "incremental":
  311. if is_first_today:
  312. total_input_news = sum(len(titles) for titles in results.values())
  313. filter_status = (
  314. "全部显示"
  315. if len(word_groups) == 1 and word_groups[0]["group_key"] == "全部新闻"
  316. else "频率词匹配"
  317. )
  318. if not quiet:
  319. print(
  320. f"增量模式:当天第一次爬取,{total_input_news} 条新闻中有 {matched_new_count} 条{filter_status}"
  321. )
  322. else:
  323. if new_titles:
  324. total_new_count = sum(len(titles) for titles in new_titles.values())
  325. filter_status = (
  326. "全部显示"
  327. if len(word_groups) == 1
  328. and word_groups[0]["group_key"] == "全部新闻"
  329. else "匹配频率词"
  330. )
  331. if not quiet:
  332. print(
  333. f"增量模式:{total_new_count} 条新增新闻中,有 {matched_new_count} 条{filter_status}"
  334. )
  335. if matched_new_count == 0 and len(word_groups) > 1:
  336. print("增量模式:没有新增新闻匹配频率词,将不会发送通知")
  337. else:
  338. if not quiet:
  339. print("增量模式:未检测到新增新闻")
  340. elif mode == "current":
  341. total_input_news = sum(len(titles) for titles in results_to_process.values())
  342. if is_first_today:
  343. filter_status = (
  344. "全部显示"
  345. if len(word_groups) == 1 and word_groups[0]["group_key"] == "全部新闻"
  346. else "频率词匹配"
  347. )
  348. if not quiet:
  349. print(
  350. f"当前榜单模式:当天第一次爬取,{total_input_news} 条当前榜单新闻中有 {matched_new_count} 条{filter_status}"
  351. )
  352. else:
  353. matched_count = sum(stat["count"] for stat in word_stats.values())
  354. filter_status = (
  355. "全部显示"
  356. if len(word_groups) == 1 and word_groups[0]["group_key"] == "全部新闻"
  357. else "频率词匹配"
  358. )
  359. if not quiet:
  360. print(
  361. f"当前榜单模式:{total_input_news} 条当前榜单新闻中有 {matched_count} 条{filter_status}"
  362. )
  363. stats = []
  364. # 创建 group_key 到位置和最大数量的映射
  365. group_key_to_position = {
  366. group["group_key"]: idx for idx, group in enumerate(word_groups)
  367. }
  368. group_key_to_max_count = {
  369. group["group_key"]: group.get("max_count", 0) for group in word_groups
  370. }
  371. for group_key, data in word_stats.items():
  372. all_titles = []
  373. for source_id, title_list in data["titles"].items():
  374. all_titles.extend(title_list)
  375. # 按权重排序
  376. sorted_titles = sorted(
  377. all_titles,
  378. key=lambda x: (
  379. -calculate_news_weight(x, rank_threshold, weight_config),
  380. min(x["ranks"]) if x["ranks"] else 999,
  381. -x["count"],
  382. ),
  383. )
  384. # 应用最大显示数量限制(优先级:单独配置 > 全局配置)
  385. group_max_count = group_key_to_max_count.get(group_key, 0)
  386. if group_max_count == 0:
  387. # 使用全局配置
  388. group_max_count = max_news_per_keyword
  389. if group_max_count > 0:
  390. sorted_titles = sorted_titles[:group_max_count]
  391. stats.append(
  392. {
  393. "word": group_key,
  394. "count": data["count"],
  395. "position": group_key_to_position.get(group_key, 999),
  396. "titles": sorted_titles,
  397. "percentage": (
  398. round(data["count"] / total_titles * 100, 2)
  399. if total_titles > 0
  400. else 0
  401. ),
  402. }
  403. )
  404. # 根据配置选择排序优先级
  405. if sort_by_position_first:
  406. # 先按配置位置,再按热点条数
  407. stats.sort(key=lambda x: (x["position"], -x["count"]))
  408. else:
  409. # 先按热点条数,再按配置位置(原逻辑)
  410. stats.sort(key=lambda x: (-x["count"], x["position"]))
  411. # 打印过滤后的匹配新闻数
  412. matched_news_count = sum(len(stat["titles"]) for stat in stats if stat["count"] > 0)
  413. if not quiet and mode == "daily":
  414. print(f"当日汇总模式:处理 {total_titles} 条新闻,模式:频率词过滤")
  415. print(f"频率词过滤后:{matched_news_count} 条新闻匹配")
  416. return stats, total_titles
  417. def count_rss_frequency(
  418. rss_items: List[Dict],
  419. word_groups: List[Dict],
  420. filter_words: List[str],
  421. global_filters: Optional[List[str]] = None,
  422. new_items: Optional[List[Dict]] = None,
  423. max_news_per_keyword: int = 0,
  424. sort_by_position_first: bool = False,
  425. timezone: str = "Asia/Shanghai",
  426. rank_threshold: int = 5,
  427. quiet: bool = False,
  428. ) -> Tuple[List[Dict], int]:
  429. """
  430. 按关键词分组统计 RSS 条目(与热榜统计格式一致)
  431. Args:
  432. rss_items: RSS 条目列表,每个条目包含:
  433. - title: 标题
  434. - feed_id: RSS 源 ID
  435. - feed_name: RSS 源名称
  436. - url: 文章链接
  437. - published_at: 发布时间(ISO 格式)
  438. word_groups: 词组配置列表
  439. filter_words: 过滤词列表
  440. global_filters: 全局过滤词(可选)
  441. new_items: 新增条目列表(可选,用于标记 is_new)
  442. max_news_per_keyword: 每个关键词最大显示数量
  443. sort_by_position_first: 是否优先按配置位置排序
  444. timezone: 时区名称(用于时间格式化)
  445. quiet: 是否静默模式
  446. Returns:
  447. Tuple[List[Dict], int]: (统计结果列表, 总条目数)
  448. 统计结果格式与热榜一致:
  449. [
  450. {
  451. "word": "关键词",
  452. "count": 5,
  453. "position": 0,
  454. "titles": [
  455. {
  456. "title": "标题",
  457. "source_name": "Hacker News",
  458. "time_display": "12-29 08:20",
  459. "count": 1,
  460. "ranks": [1], # RSS 用发布时间顺序作为排名
  461. "rank_threshold": 50,
  462. "url": "...",
  463. "mobile_url": "",
  464. "is_new": True/False
  465. }
  466. ],
  467. "percentage": 10.0
  468. }
  469. ]
  470. """
  471. from trendradar.utils.time import format_iso_time_friendly
  472. if not rss_items:
  473. return [], 0
  474. # 如果没有配置词组,创建一个包含所有条目的虚拟词组
  475. if not word_groups:
  476. if not quiet:
  477. print("[RSS] 频率词配置为空,将显示所有 RSS 条目")
  478. word_groups = [{"required": [], "normal": [], "group_key": "全部 RSS"}]
  479. filter_words = []
  480. # 创建新增条目的 URL 集合,用于快速查找
  481. new_urls = set()
  482. if new_items:
  483. for item in new_items:
  484. if item.get("url"):
  485. new_urls.add(item["url"])
  486. # 初始化词组统计
  487. word_stats = {}
  488. for group in word_groups:
  489. group_key = group["group_key"]
  490. word_stats[group_key] = {"count": 0, "titles": []}
  491. total_items = len(rss_items)
  492. processed_urls = set() # 用于去重
  493. # 为每个条目分配一个基于发布时间的"排名"
  494. # 按发布时间排序,最新的排在前面
  495. sorted_items = sorted(
  496. rss_items,
  497. key=lambda x: x.get("published_at", ""),
  498. reverse=True
  499. )
  500. url_to_rank = {item.get("url", ""): idx + 1 for idx, item in enumerate(sorted_items)}
  501. for item in rss_items:
  502. title = item.get("title", "")
  503. url = item.get("url", "")
  504. # 去重
  505. if url and url in processed_urls:
  506. continue
  507. if url:
  508. processed_urls.add(url)
  509. # 使用统一的匹配逻辑
  510. if not matches_word_groups(title, word_groups, filter_words, global_filters):
  511. continue
  512. # 找到匹配的词组
  513. title_lower = title.lower()
  514. for group in word_groups:
  515. required_words = group["required"]
  516. normal_words = group["normal"]
  517. group_key = group["group_key"]
  518. # "全部 RSS" 模式:所有条目都匹配
  519. if len(word_groups) == 1 and word_groups[0]["group_key"] == "全部 RSS":
  520. matched = True
  521. else:
  522. # 检查必须词
  523. if required_words:
  524. all_required_present = all(
  525. req_word.lower() in title_lower
  526. for req_word in required_words
  527. )
  528. if not all_required_present:
  529. continue
  530. # 检查普通词
  531. if normal_words:
  532. any_normal_present = any(
  533. normal_word.lower() in title_lower
  534. for normal_word in normal_words
  535. )
  536. if not any_normal_present:
  537. continue
  538. matched = True
  539. if matched:
  540. word_stats[group_key]["count"] += 1
  541. # 格式化时间显示
  542. published_at = item.get("published_at", "")
  543. time_display = format_iso_time_friendly(published_at, timezone, include_date=True) if published_at else ""
  544. # 判断是否为新增
  545. is_new = url in new_urls if url else False
  546. # 获取排名(基于发布时间顺序)
  547. rank = url_to_rank.get(url, 99) if url else 99
  548. title_data = {
  549. "title": title,
  550. "source_name": item.get("feed_name", item.get("feed_id", "RSS")),
  551. "time_display": time_display,
  552. "count": 1, # RSS 条目通常只出现一次
  553. "ranks": [rank],
  554. "rank_threshold": rank_threshold,
  555. "url": url,
  556. "mobile_url": "",
  557. "is_new": is_new,
  558. }
  559. word_stats[group_key]["titles"].append(title_data)
  560. break # 一个条目只匹配第一个词组
  561. # 构建统计结果
  562. stats = []
  563. group_key_to_position = {
  564. group["group_key"]: idx for idx, group in enumerate(word_groups)
  565. }
  566. group_key_to_max_count = {
  567. group["group_key"]: group.get("max_count", 0) for group in word_groups
  568. }
  569. for group_key, data in word_stats.items():
  570. if data["count"] == 0:
  571. continue
  572. # 按发布时间排序(最新在前)
  573. sorted_titles = sorted(
  574. data["titles"],
  575. key=lambda x: x["ranks"][0] if x["ranks"] else 999
  576. )
  577. # 应用最大显示数量限制
  578. group_max_count = group_key_to_max_count.get(group_key, 0)
  579. if group_max_count == 0:
  580. group_max_count = max_news_per_keyword
  581. if group_max_count > 0:
  582. sorted_titles = sorted_titles[:group_max_count]
  583. stats.append({
  584. "word": group_key,
  585. "count": data["count"],
  586. "position": group_key_to_position.get(group_key, 999),
  587. "titles": sorted_titles,
  588. "percentage": round(data["count"] / total_items * 100, 2) if total_items > 0 else 0,
  589. })
  590. # 排序
  591. if sort_by_position_first:
  592. stats.sort(key=lambda x: (x["position"], -x["count"]))
  593. else:
  594. stats.sort(key=lambda x: (-x["count"], x["position"]))
  595. matched_count = sum(stat["count"] for stat in stats)
  596. if not quiet:
  597. print(f"[RSS] 关键词分组统计:{matched_count}/{total_items} 条匹配")
  598. return stats, total_items
  599. def convert_keyword_stats_to_platform_stats(
  600. keyword_stats: List[Dict],
  601. weight_config: Dict,
  602. rank_threshold: int = 5,
  603. ) -> List[Dict]:
  604. """
  605. 将按关键词分组的统计数据转换为按平台分组的统计数据
  606. Args:
  607. keyword_stats: 原始按关键词分组的统计数据
  608. weight_config: 权重配置
  609. rank_threshold: 排名阈值
  610. Returns:
  611. 按平台分组的统计数据,格式与原 stats 一致
  612. """
  613. # 1. 收集所有新闻,按平台分组
  614. platform_map: Dict[str, List[Dict]] = {}
  615. for stat in keyword_stats:
  616. keyword = stat["word"]
  617. for title_data in stat["titles"]:
  618. source_name = title_data["source_name"]
  619. if source_name not in platform_map:
  620. platform_map[source_name] = []
  621. # 复制 title_data 并添加匹配的关键词
  622. title_with_keyword = title_data.copy()
  623. title_with_keyword["matched_keyword"] = keyword
  624. platform_map[source_name].append(title_with_keyword)
  625. # 2. 去重(同一平台下相同标题只保留一条,保留第一个匹配的关键词)
  626. for source_name, titles in platform_map.items():
  627. seen_titles: Dict[str, bool] = {}
  628. unique_titles = []
  629. for title_data in titles:
  630. title_text = title_data["title"]
  631. if title_text not in seen_titles:
  632. seen_titles[title_text] = True
  633. unique_titles.append(title_data)
  634. platform_map[source_name] = unique_titles
  635. # 3. 按权重排序每个平台内的新闻
  636. for source_name, titles in platform_map.items():
  637. platform_map[source_name] = sorted(
  638. titles,
  639. key=lambda x: (
  640. -calculate_news_weight(x, rank_threshold, weight_config),
  641. min(x["ranks"]) if x["ranks"] else 999,
  642. -x["count"],
  643. ),
  644. )
  645. # 4. 构建平台统计结果
  646. platform_stats = []
  647. for source_name, titles in platform_map.items():
  648. platform_stats.append({
  649. "word": source_name, # 平台名作为分组标识
  650. "count": len(titles),
  651. "titles": titles,
  652. "percentage": 0, # 可后续计算
  653. })
  654. # 5. 按新闻条数排序平台
  655. platform_stats.sort(key=lambda x: -x["count"])
  656. return platform_stats