Пример #1
0
def update_num_of_comment_commentlike():
    # 更新content表中的评论量和点赞量
    time0 = time.time()
    sql = "SELECT id, `comment` FROM content"
    result, rowcount = dbutil.query_with_sql_rowcount(conn, sql)
    for (id, comment) in result:
        if len(comment) > 2:
            comment = comment[2:len(comment) - 2]
            aa = comment.split('}, {')
            comment_list = []
            for a in aa:
                a = "{%s}" % a
                comment_list.append(a)
            comment_like = 0
            for discuss in comment_list:
                di = eval(discuss)  # 字符串转数组,该函数不安全
                tmp = di.get('elected')  # 评论点赞量也有过万的,在数据持久化的时候,'elected'存放的数据不太规范,有String类型,把无数据的当做0整型数据存放了
                if isinstance(tmp, str) and '万' in tmp:
                    # print('评论点赞量过万: %s' % discuss)
                    comment_like += float(tmp.split('万')[0]) * 10000
                else:
                    comment_like += int(tmp)
                # print('评论点赞量:%d' % comment_like)
            sql2 = "update content set comment_num = %d, commentlike_num = %d WHERE id = %d" \
                   % (len(comment_list), comment_like, id)
            dbutil.exec_sql(conn, sql2)

    print('用时   ', time.time()-time0)
Пример #2
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def read_daily(figurename):
    num_map = collections.OrderedDict()  # key为日期如20190102,value为该日的阅读量

    sql = "SELECT DISTINCT(datetime) FROM test where datetime between 1546272000 and 1577808000 ORDER BY datetime"
    result, rowcount = dbutil.query_with_sql_rowcount(conn, sql)
    for (datetime, ) in result:
        time_local = time.localtime(datetime)
        time_format = time.strftime('%Y%m%d %H:%M:%S', time_local)
        day = time_format.split(' ')[0]  # split取出日期
        num_map.setdefault(day, 0)
        sql2 = "SELECT readnum FROM test WHERE readnum!='' and datetime = %s" % datetime
        result2 = dbutil.query_with_sql(conn, sql2)
        for (readnum, ) in result2:
            if '万' in readnum:
                readnum = float(readnum.split('万')[0]) * 10000
            readnum = int(readnum)
            num_map[day] += readnum

    # 开始画图 每日阅读量随时间变化图
    plt.title('Read Daily Information Analysis')
    x = list(num_map.keys())
    y = np.array(list(num_map.values())) / 100000
    plt.xticks(np.arange(0, len(x), 30))
    plt.plot(x, y)
    # plt.scatter(x, y)
    plt.legend()  # 显示图例
    plt.savefig('%s_read_daily.png' % figurename)
    # plt.show()
    plt.close()
Пример #3
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def update_readnum():
    time0 = time.time()
    sql = "select id, readnum from content where readnum like '%万%'"
    result, rowcount = dbutil.query_with_sql_rowcount(conn, sql)
    for (id, readnum) in result:
        tmp = float(readnum.split('万')[0]) * 10000
        sql2 = "update content set readnum= %s where id = %d" % (int(tmp), id)
        dbutil.exec_sql(conn, sql2)

    print('用时   ', time.time()-time0)
Пример #4
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def drag_index_to_tabel():
    a = []

    sql = "SELECT id, contenturl FROM content"
    result, rowcount = dbutil.query_with_sql_rowcount(conn, sql)
    for (id, contenturl) in result:
        index = contenturl.find('&idx=')
        idx = int(contenturl[index + 5:index + 6])
        tmp = {'id': id, 'idx': idx}
        a.append(tmp)
        sql = 'update content set idx= %d where id = %d' % (idx, id)
        dbutil.exec_sql(conn, sql)
Пример #5
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def read_vary_with_time(figurename):
    """
        阅读量随时间变化图 和 阅读统计分布图
        :param figurename: 一般为公众号昵称
        :return:
    """
    data = []  # 阅读量数据
    count = 0  # 超过均值的阅读量

    sql = "SELECT readnum FROM test where readnum!='' and datetime between 1546272000 and 1577808000 ORDER BY datetime"
    result, rowcount = dbutil.query_with_sql_rowcount(conn, sql)
    for (readnum, ) in result:
        if '万' in readnum:
            readnum = float(readnum.split('万')[0]) * 10000
        data.append(int(readnum))
    mean = sum(data) / len(data)
    print('阅读量均值', mean)
    for i in data:
        if i > mean:
            count += 1
    print('超过均值的占比', count / len(data))
    # 开始画图  阅读量随时间变化图
    plt.title('Read Information Analysis')
    x = list(range(0, len(data)))
    y = data
    plt.scatter(x, y)
    plt.legend()  # 显示图例
    plt.savefig('%s_read_vary.png' % figurename)
    plt.close()

    # 阅读量统计分布图
    map = {}
    for i in data:
        map.setdefault(i, 0)
        map[i] += 1
    # 开始画图
    plt.title('Read Distribute Analysis')
    x = []
    y = []
    for i in sorted(map):
        print((i, map[i]), end=" ")
        x.append(i)
        y.append(map[i])
    plt.plot(x, y)
    # plt.scatter(x, y)
    plt.legend()  # 显示图例
    plt.savefig('%s_read_distribute.png' % figurename)
    plt.show()
    plt.close()
Пример #6
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def index_each_biz():
    """
    索引位置对各个公众号的影响:计算不同索引位置的平均阅读量和点赞量
    :return:
    """
    sql = "select biz, nickname from bizinfo"
    result = dbutil.query_with_sql(conn, sql)

    for (biz, nickname) in result:
        print("公众号昵称", nickname)
        read_map = {}  # 阅读量
        read_id = {}  # 文章标识
        like_map = {}  # 点赞量

        sql2 = "SELECT id, contenturl, readnum, likenum, title, digest FROM content where biz = '%s'" % biz
        result2, rowcount = dbutil.query_with_sql_rowcount(conn, sql2)
        for (id, contenturl, readnum, likenum, title, digest) in result2:
            index = contenturl.find('&idx=')
            idx = int(contenturl[index + 5:index + 6])
            read_map.setdefault(idx, [])
            read_map[idx].append(readnum)
            read_id.setdefault(idx, [])
            read_id[idx].append(id)
            like_map.setdefault(idx, [])
            like_map[idx].append(likenum)

        idx_read_list = []  # 索引位置平均阅读量
        idx_like_list = []  # 索引位置平均点赞量
        x = list(range(1, len(read_map) + 1))

        for i in x:
            idx_read_list.append(
                round(sum(read_map[i]) / (len(read_map[i]) * 10000),
                      2))  # 以万为单位
            idx_like_list.append(round(sum(like_map[i]) / len(like_map[i]), 1))

        # 分布图
        plot_single_figure(x, idx_read_list, "索引位置对阅读量的影响", "索引位置", "阅读量/万",
                           nickname + "_read")
        plot_single_figure(x, idx_like_list, "索引位置对点赞量的影响", "索引位置", "点赞量",
                           nickname + "_like")
Пример #7
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def comment_to_table():
    """
    content表评论数据写入评论表
    :return:
    """
    discusses = []

    sql = "SELECT biz, contenturl,  title, datetime,`comment` FROM content order by datetime"
    result, rowcount = dbutil.query_with_sql_rowcount(conn, sql)
    for (biz, contenturl,  title, datetime, comment) in result:
        if len(comment) > 2:
            comment = comment[2:len(comment) - 2]
            aa = comment.split('}, {')
            comment_list = []
            for a in aa:
                a = "{%s}" % a
                comment_list.append(a)
            for discuss in comment_list:
                comment_like = 0
                di = eval(discuss)  # 字符串转数组,该函数不安全
                tmp = di.get('elected')  # 评论点赞量也有过万的,在数据持久化的时候,'elected'存放的数据不太规范,有String类型,把无数据的当做0整型数据存放了
                if isinstance(tmp, str) and '万' in tmp:
                    print('评论点赞量过万: %s' % discuss)
                    comment_like += float(tmp.split('万')[0]) * 10000
                else:
                    comment_like += int(tmp)
                # print('评论点赞量:%d' % comment_like)
                nickname = di.get('nickname')
                comment0 = di.get('comment')
                single = {
                            'biz' : biz,
                            'contenturl': contenturl,
                            'title': title,
                            'datetime': datetime,
                            'comment': comment0,
                            'nickname': nickname,
                            'commentlike': comment_like
                        }
                discusses.append(single)

    dbutil.insert_by_many_comment(conn, discusses)
Пример #8
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def index_totol_infection():
    x = list(range(1, 9))
    # sql = "SELECT ROUND(AVG(readnum)/10,1) a, ROUND(AVG(likenum)) b FROM content GROUP BY idx ORDER BY idx"
    sql = "SELECT ROUND(AVG(readnum)) a, ROUND(AVG(likenum)) b, ROUND(AVG(comment_num)) c, ROUND(AVG(commentlike_num)) d FROM content GROUP BY idx ORDER BY idx"
    result, rowcount = dbutil.query_with_sql_rowcount(conn, sql)
    readnum = []
    likenum = []
    commentnum = []
    commentlikenum = []
    for (a, b, c, d) in result:
        readnum.append(a)
        likenum.append(b)
        commentnum.append(c)
        commentlikenum.append(d)

    scaler = preprocessing.MinMaxScaler()
    y1 = scaler.fit_transform(np.array(readnum).reshape(-1, 1))
    y2 = scaler.fit_transform(np.array(likenum).reshape(-1, 1))
    y3 = scaler.fit_transform(np.array(commentnum).reshape(-1, 1))
    y4 = scaler.fit_transform(np.array(commentlikenum).reshape(-1, 1))

    # 标题
    plt.title('索引对微文各项数据的影响', fontproperties=font_set)

    # 横坐标描述
    plt.xlabel('索引位置', fontproperties=font_set)

    # 纵坐标描述
    # plt.ylabel('', fontproperties=font_set)

    plt.plot(x, y1, color='green', label='阅读量')
    plt.plot(x, y2, color='red', label='点赞量')
    plt.plot(x, y3, color='skyblue', label='评论量')
    plt.plot(x, y4, color='blue', label='评论点赞量')
    # plt.legend(prop=font_set1, loc="upper right", fontsize=8)
    plt.legend(prop=font_set2, loc="upper right")

    plt.savefig('./索引对微文各项数据的影响')

    plt.show()
Пример #9
0
def index_total_biz():
    """
    索引位置对所有公众号的影响统计:计算不同索引位置的平均阅读量和点赞量
    :return:
    """
    # 索引位置最长8篇
    read_map = {}  # 阅读量
    read_id = {}  # 文章标识
    like_map = {}  # 点赞量

    sql = "SELECT id, contenturl, readnum, likenum, title, digest FROM content"
    result, rowcount = dbutil.query_with_sql_rowcount(conn, sql)
    for (id, contenturl, readnum, likenum, title, digest) in result:
        index = contenturl.find('&idx=')
        idx = int(contenturl[index + 5:index + 6])
        read_map.setdefault(idx, [])
        read_map[idx].append(readnum)
        read_id.setdefault(idx, [])
        read_id[idx].append(id)
        like_map.setdefault(idx, [])
        like_map[idx].append(likenum)

    idx_read_list = []  # 索引位置平均阅读量
    idx_like_list = []  # 索引位置平均点赞量
    x = list(range(1, len(read_map) + 1))

    for i in x:
        idx_read_list.append(
            round(sum(read_map[i]) / (len(read_map[i]) * 10000), 2))  # 以万为单位
        idx_like_list.append(round(sum(like_map[i]) / len(like_map[i]), 1))

    # 分布图
    pltutil.plot_single_figure(x, idx_read_list, "索引位置对阅读量的影响", "索引位置",
                               "阅读量/万", "total_read")
    pltutil.plot_single_figure(x, idx_like_list, "索引位置对点赞量的影响", "索引位置", "点赞量",
                               "total_like")
Пример #10
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from matplotlib.font_manager import FontProperties

font_set = FontProperties(fname='/Library/Fonts/Songti.ttc', size=15)

conn = dbutil.connectdb_wechatcluster()


def millions(x, pos):
    'The two args are the value and tick position'
    return '$%1.1fM' % (x * 1e-6)


if __name__ == '__main__':

    sql = "SELECT nickname, sum(num) as total from advisement GROUP BY nickname ORDER BY sum(num)"
    result, rowcount = dbutil.query_with_sql_rowcount(conn, sql)
    names = []
    nums = []
    for (nickname, total) in result:
        names.append(nickname)
        nums.append(total)
    #
    # 标题
    plt.title("各公众号广告植入", fontproperties=font_set)

    # 横坐标描述
    plt.xlabel("公众号昵称", fontproperties=font_set)

    # 纵坐标描述
    plt.ylabel("2019广告植入量", fontproperties=font_set)
Пример #11
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def publish_abnormal_data(figurename):
    """
    时间维度,发文数维度。
    1、统计一天内,不同时间发文数量
    2、画出分布图
    3、以一年内每次发文均值作为阈值,小于此阈值判断为发文时间异常点,推测有突发话题
    4、查找数据库,找出文章集合。
    :param figurename:
    :return:
    """
    map = collections.OrderedDict()  # key 为时分[0000,2400),value 为该分钟发文数

    sql = "SELECT datetime, COUNT(*) as num FROM test where datetime between 1546272000 and 1577808000 GROUP BY datetime ORDER BY datetime"
    result, n = dbutil.query_with_sql_rowcount(conn, sql)
    total = 0
    for (datetime, num) in result:
        time_local = time.localtime(datetime)
        time_format = time.strftime('%Y%m%d %H%M', time_local)
        minute = time_format.split(' ')[1]  # 取出时分
        map.setdefault(minute, 0)
        map[minute] += num
        total += num
    print('一年内发文次数', n)
    # print(len(map))
    mean = total / n  # 平均每次发文数量
    print('每次发布平均值:', mean)

    # 按照键值排序
    x = []
    y = []
    abnormal = []  # 异常时间点
    for i in sorted(map):
        x.append(i)
        y.append(map[i])
        print((i, map[i]), end=" ")
        if map[i] < mean:  # 小于每次发布数量平均值的认为是异常时间点
            abnormal.append(i)
    # print(x)
    # print(y)
    plt.xticks(np.arange(0, 2400, 30))  # 30个数据一个间隔
    plt.plot(x, y)
    # plt.scatter(x, y)
    plt.legend()
    plt.savefig('%s_minute.png' % figurename)
    plt.show()
    plt.close()

    print('\n')
    print('异常时间点数据:', abnormal)
    print('长度:', len(abnormal))

    aa = set(abnormal)  # 检索异常时间点的数据,这里set是多此一举

    sql = "SELECT title, digest, datetime FROM test where datetime between 1546272000 and 1577808000 ORDER BY datetime"
    result, rowcount = dbutil.query_with_sql_rowcount(conn, sql)
    bb = collections.OrderedDict()
    count = 0
    for (title, digest, datetime) in result:
        time_local = time.localtime(datetime)
        time_format = time.strftime('%Y%m%d %H%M', time_local)
        minute = time_format.split(' ')[1]
        if minute in aa:
            bb.setdefault(time_format.split(' ')[0], 0)
            bb[time_format.split(' ')[0]] += 1
            count += 1
            print(time_format)
            print(title)
            print(digest)
    print('异常数据时间序列:', bb.keys())
    print('异常数据长度:', count)
    print('异常数据百分比 ', round(count / rowcount, 2))
Пример #12
0
def comment_vary_with_time(figurename):
    """
    评论随时间变化图,评论统计分布图
    评论点赞量随时间变化图,评论点赞量统计分布图
    :param figurename:
    :return:
    """
    discusses = []
    commentlike = []

    sql = "SELECT `comment` FROM test order by datetime"
    result, rowcount = dbutil.query_with_sql_rowcount(conn, sql)
    for (comment,) in result:
        if len(comment) > 2:
            comment = comment[2:len(comment) - 2]
            aa = comment.split('}, {')
            comment_list = []
            for a in aa:
                a = "{%s}" % a
                comment_list.append(a)

            discusses.append(len(comment_list))

            comment_like = len(comment_list)
            for discuss in comment_list:
                # print(discuss)
                di = eval(discuss)  # 字符串转数组,该函数不安全
                tmp = di.get('elected')  # 评论点赞量也有过万的,在数据持久化的时候,'elected'存放的数据不太规范,有String类型,把无数据的当做0整型数据存放了
                if isinstance(tmp, str) and '万' in tmp:
                    print('评论点赞量过万: %s' % discuss)
                    comment_like += float(tmp.split('万')[0]) * 10000
                else:
                    comment_like += int(tmp)
                # print('评论点赞量:%d' % comment_like)
            commentlike.append(comment_like)
        else:
            discusses.append(0)
            commentlike.append(0)

    mean_commentnum = int(sum(discusses) / rowcount)
    mean_commentlikenum = int(sum(commentlike) / rowcount)
    print('平均评论量    ', mean_commentnum)
    print('平均评论点赞量  ', mean_commentlikenum)

    # 开始画图  评论随时间变化图
    x = list(range(0, len(discusses)))
    plt.title('Comment Vary With Time')
    plt.plot(x, discusses, color='skyblue', label='comment')
    # plt.scatter(x, discusses, color='skyblue', label='comment')
    plt.legend()  # 显示图例
    plt.savefig('%s_comment_vary.png' % figurename)
    # plt.show()
    plt.close()

    # 开始画图  评论点赞量随时间变化图
    plt.title('CommentLike Vary With Time')
    # plt.scatter(x, commentlike, color='skyblue', label='comment')
    plt.plot(x, commentlike, color='blue', label='comment like')
    plt.legend()  # 显示图例
    plt.savefig('%s_comment_like_vary.png' % figurename)
    # plt.show()
    plt.close()
Пример #13
0
def comment_distribute(figurename):
    """
    评论统计分布图、评论点赞量统计分布图
    :param figurename:
    :return:
    """
    discusses = []
    commentlike = []

    sql = "SELECT `comment` FROM test order by datetime"
    result, rowcount = dbutil.query_with_sql_rowcount(conn, sql)
    for (comment,) in result:
        if len(comment) > 2:
            comment = comment[2:len(comment) - 2]
            aa = comment.split('}, {')
            comment_list = []
            for a in aa:
                a = "{%s}" % a
                comment_list.append(a)

            discusses.append(len(comment_list))

            comment_like = len(comment_list)
            for discuss in comment_list:
                # print(discuss)
                di = eval(discuss)  # 字符串转数组,该函数不安全
                tmp = di.get('elected')  # 评论点赞量也有过万的,在数据持久化的时候,'elected'存放的数据不太规范,有String类型,把无数据的当做0整型数据存放了
                if isinstance(tmp, str) and '万' in tmp:
                    print('评论点赞量过万: %s' % discuss)
                    comment_like += float(tmp.split('万')[0]) * 10000
                else:
                    comment_like += int(tmp)
                # print('评论点赞量:%d' % comment_like)
            commentlike.append(comment_like)
        else:
            discusses.append(0)
            commentlike.append(0)

    mean_commentnum = int(sum(discusses) / rowcount)
    mean_commentlikenum = int(sum(commentlike) / rowcount)
    print('平均评论量    ', mean_commentnum)
    print('平均评论点赞量  ', mean_commentlikenum)

    # 评论统计分布图
    map_comment = {}
    for i in discusses:
        map_comment.setdefault(i, 0)
        map_comment[i] += 1
    # 评论点赞统计分布图
    map_comment_like = {}
    for i in commentlike:
        map_comment_like.setdefault(i, 0)
        map_comment_like[i] += 1

    x = []
    y = []
    for i in sorted(map_comment):
        x.append(i)
        y.append(map_comment[i])

    plt.title('Comment Distribute')
    plt.plot(x, y, color='skyblue', label='comment')
    # plt.scatter(x, discusses, color='skyblue', label='comment')
    plt.legend()  # 显示图例
    plt.savefig('%s_comment_distribute.png' % figurename)
    # plt.show()
    plt.close()

    # 评论点赞量统计分布图
    x = []
    y = []
    for i in sorted(map_comment_like):
        print((i, map_comment_like[i]), end=' ')
        x.append(i)
        y.append(map_comment_like[i])
    plt.title('CommentLike Distribute')
    # plt.scatter(x, commentlike, color='skyblue', label='comment')
    plt.plot(x, y, color='blue', label='comment like')
    plt.legend()  # 显示图例
    plt.savefig('%s_comment_like_distribute.png' % figurename)
    # plt.show()
    plt.close()
Пример #14
0
def comment_vary_with_every_punish(figurename):
    """
        评论随每次发布时间变化图
        评论点赞量随每次发布时间变化图
        :param figurename:
        :return:
    """
    discusses = []
    commentlike = []
    date = []

    sql = "SELECT distinct(datetime) FROM test order by datetime"
    result, rowcount = dbutil.query_with_sql_rowcount(conn, sql)

    for (datetime,) in result:
        date.append(datetime)
        sql2 = "SELECT `comment` FROM test where datetime= %d " % datetime
        result2, rowcount2 = dbutil.query_with_sql_rowcount(conn, sql2)
        discuss_count = 0
        comment_like = 0
        for (comment,) in result2:
            if len(comment) > 2:
                comment = comment[2:len(comment) - 2]
                aa = comment.split('}, {')
                comment_list = []
                for a in aa:
                    a = "{%s}" % a
                    comment_list.append(a)
                discuss_count += len(comment_list)

                comment_like = len(comment_list)  # 每个评论看成一次点赞,这个权重可以调整
                for discuss in comment_list:
                    # print(discuss)
                    di = eval(discuss)  # 字符串转数组,该函数不安全
                    tmp = di.get('elected')  # 评论点赞量也有过万的,在数据持久化的时候,'elected'存放的数据不太规范,有String类型,把无数据的当做0整型数据存放了
                    if isinstance(tmp, str) and '万' in tmp:
                        print('评论点赞量过万: %s' % discuss)
                        comment_like += float(tmp.split('万')[0]) * 10000
                    else:
                        comment_like += int(tmp)
                    # print('评论点赞量:%d' % comment_like)
        discusses.append(discuss_count)
        commentlike.append(comment_like)

    mean_commentnum = int(sum(discusses) / len(discusses))
    mean_commentlikenum = int(sum(commentlike) / len(commentlike))
    print('平均评论量    ', mean_commentnum)
    print('平均评论点赞量  ', mean_commentlikenum)

    # 开始画图  评论随时间变化图
    x = date
    plt.title('Comment Vary With Time')
    plt.plot(x, discusses, color='skyblue', label='comment')
    # plt.scatter(x, discusses, color='skyblue', label='comment')
    plt.legend()  # 显示图例
    plt.savefig('%s_comment_vary_with_punish.png' % figurename)
    # plt.show()
    plt.close()

    # 开始画图  评论点赞量随时间变化图
    plt.title('CommentLike Vary With Time')
    # plt.scatter(x, commentlike, color='skyblue', label='comment')
    plt.plot(x, commentlike, color='blue', label='comment like')
    plt.legend()  # 显示图例
    plt.savefig('%s_comment_like_vary_with_punish.png' % figurename)
    # plt.show()
    plt.close()
Пример #15
0
def like_var_with_time(figurename):
    """
    点赞量随时间变化图 和 点赞量统计分布图
    :param figurename: 一般为公众号昵称
    :return:
    """
    data = []   # 点赞数据
    count = 0   # 超过均值的点赞量

    sql = "SELECT likenum,contenturl FROM test where datetime between 1546272000 and 1577808000 ORDER BY datetime"
    result, rowcount = dbutil.query_with_sql_rowcount(conn, sql)
    for (likenum, contenturl) in result:
        if likenum == '':
            likenum = 0
        elif '万' in likenum:
            print('点赞量过万的文章:', contenturl)
            likenum = float(likenum.split('万')[0]) * 10000
        data.append(int(likenum))
    mean = sum(data) / len(data)
    print('均值', mean)
    for i in data:
        if i > mean:
            count += 1
    print('超过均值的占比', count / len(data))
    # 开始画图  点赞量随时间变化图
    plt.title('Like Information Analysis')
    x = list(range(0, len(data)))
    y = data
    plt.plot(x, y)
    # plt.scatter(x, y)
    plt.legend()  # 显示图例
    plt.savefig('%s_like_vary.png' % figurename)
    plt.close()

    # 去除top5的数据
    data = sorted(data)
    data = data[:len(data)-10]
    mean = sum(data)/len(data)
    print("去除top5之后的均值", mean)
    index = np.searchsorted(data, mean)
    print('超过均值的占比', index / len(data))

    # 点赞量统计分布图
    map = {}
    for i in data:
        map.setdefault(i, 0)
        map[i] += 1
    # 开始画图
    plt.title('Like Distribute Analysis')
    x = []
    y = []
    for i in sorted(map):
        print((i, map[i]), end=" ")
        x.append(i)
        y.append(map[i])
    # plt.plot(x, y)
    plt.scatter(x, y)
    plt.legend()  # 显示图例
    plt.savefig('%s_like_distribute.png' % figurename)
    plt.show()
    plt.close()