基于用户迁移的Telegram群组推荐

Davod Karimpour, M. Z. Chahooki, Ali Hashemi
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引用次数: 4

摘要

今天,社交网络和信使吸引了许多不同企业的注意。每天,在这些环境中都会产生大量的信息。分析这些信息对于连接不同的业务非常有用。这些信息对市场营销人员寻找目标群体非常有价值。Telegram是一款基于云计算的通讯软件。这个信使在包括伊朗在内的一些国家被用作社交网络。Telegram虽然被用作社交网络,但并不提供社交网络的所有功能。此信使提供的功能包括创建通道、组和bot。Telegram等大多数通讯工具的不足之处在于,它们提供的搜索服务有限,用户社区也有限。在本文中,我们根据用户的兴趣,利用用户的成员关系图,分析用户的成员记录,推荐群组。该方法考虑用户的状态,在每组中对用户的记录进行建模。我们通过分析用户在每一组中的记录来获得用户的迁移情况。用户迁移是根据离开每个组并进入另一个组的最大用户数来分析的。在这项研究中,使用了大约7000万用户和70万个Telegram超级组的信息。该模型已在Telegram的30个高质量群组中进行了评估。选定的小组有5000到15000名成员。与基本方法相比,该方法的RMSE误差降低了0.0237。
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Telegram group recommendation based on users' migration
Today, social networks and messengers have attracted the attention of many different businesses. Every day, a lot of information is produced in these environments. Analyzing this information is very useful for connecting different businesses. This information is very valuable for marketers to find the target community. Telegram is a messenger based on cloud computing. This messenger is used as a social network in some countries, including Iran. Telegram, while used as a social network, does not offer all the capabilities of a social network. The capabilities provided in this messenger include creating a channel, group, and bot. The shortfall in most messengers, such as Telegram, is the limited search service of groups and a community of users. In this paper, we have recommended groups according to the users ' interests, using the graph of users' membership and analyzing their membership records. The proposed method, considering the users' status, models their records in each group. We obtained users’ migration by analyzing their records in each group. Users' migration is analyzed based on the maximum number of users leaving each group and entering another group. In this study, information about 70 million users and 700,000 Telegram supergroups have been used. The evaluation of the proposed model has been done on 30 high-quality groups in Telegram. Selected groups had between 5,000 and 15,000 members. The proposed method showed an error reduction of 0.0237 in RMSE compared to a base method.
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