from utils.getPublicData import * # Import utility functions for data retrieval from utils.mynlp import SnowNLP # Import SnowNLP for sentiment analysis from collections import Counter # Import Counter for counting occurrences articleList = getAllArticleData() # Retrieve all article data commentList = getAllCommentsData() # Retrieve all comment data def getTypeList(): # Return a list of unique article types return list(set([x[8] for x in articleList])) def getArticleByType(type): # Return a list of articles that match the specified type return [article for article in articleList if article[8] == type] def getArticleLikeCount(type): # Categorize articles by the number of likes they have articles = getArticleByType(type) intervals = [(0, 100), (100, 1000), (1000, 5000), (5000, 15000), (15000, 30000), (30000, 50000), (50000, float('inf'))] X = ['0-100','100-1000','1000-5000','5000-15000','15000-30000', '30000-50000','50000-~'] Y = [0] * len(intervals) for article in articles: likeCount = int(article[1]) for i, (lower, upper) in enumerate(intervals): if lower <= likeCount < upper: Y[i] += 1 break return X, Y def getArticleCommentsLen(type): # Categorize articles by the length of comments they have articles = getArticleByType(type) intervals = [(0, 100), (100, 500), (500, 1000), (1000, 1500), (1500, 3000), (3000, 5000), (5000, 10000), (10000, 15000), (15000, float('inf'))] X = ['0-100','100-500','500-1000','1000-1500','1500-3000', '3000-5000','5000-10000','10000-15000','15000-~'] Y = [0] * len(intervals) for article in articles: commentLen = int(article[2]) for i, (lower, upper) in enumerate(intervals): if lower <= commentLen < upper: Y[i] += 1 break return X, Y def getArticleRepotsLen(type): # Categorize articles by the number of reposts articles = getArticleByType(type) intervals = [(0, 100), (100, 300), (300, 500), (500, 1000), (1000, 2000), (2000, 3000), (3000, 4000), (4000, 5000), (5000, 10000), (10000, 15000), (15000, 30000), (30000, 70000), (70000, float('inf'))] X = ['0-100','100-300','300-500','500-1000','1000-2000','2000-3000', '3000-4000','4000-5000','5000-10000','10000-15000','15000-30000', '30000-70000','70000-~'] Y = [0] * len(intervals) for article in articles: repostsCount = int(article[3]) for i, (lower, upper) in enumerate(intervals): if lower <= repostsCount < upper: Y[i] += 1 break return X, Y def getIPByArticleRegion(): # Count articles by their regions, excluding '无' regions = [article[4] for article in articleList if article[4] != '无'] region_counts = Counter(regions) resultData = [{'name': key, 'value': value} for key, value in region_counts.items()] return resultData def getIPByCommentsRegion(): # Count comments by their regions, excluding '无' regions = [comment[3] for comment in commentList if comment[3] != '无'] region_counts = Counter(regions) resultData = [{'name': key, 'value': value} for key, value in region_counts.items()] return resultData def getCommentDataOne(): # Categorize comments based on some numerical value, possibly length or count rangeNum = 20 intervals = [(rangeNum * i, rangeNum * (i + 1)) for i in range(100)] X = [f"{lower}-{upper}" for lower, upper in intervals] Y = [0] * len(intervals) for comment in commentList: comment_value = int(comment[2]) for i, (lower, upper) in enumerate(intervals): if lower <= comment_value < upper: Y[i] += 1 break return X, Y def getCommentDataTwo(): # Count comments by gender genders = [comment[6] for comment in commentList] gender_counts = Counter(genders) resultData = [{'name': key, 'value': value} for key, value in gender_counts.items()] return resultData def getYuQingCharDataOne(): # Analyze sentiment of hot words hotWordList = getAllHotWords() sentiments = [] for word in hotWordList: emotionValue = SnowNLP(word[0]).sentiments if emotionValue > 0.4: sentiments.append('正面') elif emotionValue < 0.2: sentiments.append('负面') else: sentiments.append('中性') counts = Counter(sentiments) X = ['正面','中性','负面'] Y = [counts.get(sentiment, 0) for sentiment in X] biedata = [{'name': x, 'value': y} for x, y in zip(X, Y)] return X, Y, biedata def getYuQingCharDataTwo(): # Analyze sentiment of comments and articles comment_sentiments = [] for comment in commentList: emotionValue = SnowNLP(comment[4]).sentiments if emotionValue > 0.4: comment_sentiments.append('正面') elif emotionValue < 0.2: comment_sentiments.append('负面') else: comment_sentiments.append('中性') comment_counts = Counter(comment_sentiments) article_sentiments = [] for article in articleList: emotionValue = SnowNLP(article[5]).sentiments if emotionValue > 0.4: article_sentiments.append('正面') elif emotionValue < 0.2: article_sentiments.append('负面') else: article_sentiments.append('中性') article_counts = Counter(article_sentiments) X = ['正面', '中性', '负面'] biedata1 = [{'name': x, 'value': comment_counts.get(x, 0)} for x in X] biedata2 = [{'name': x, 'value': article_counts.get(x, 0)} for x in X] return biedata1, biedata2 def getYuQingCharDataThree(): # Retrieve top 10 hot words and their counts hotWordList = getAllHotWords() x1Data = [word[0] for word in hotWordList[:10]] y1Data = [int(word[1]) for word in hotWordList[:10]] return x1Data, y1Data