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User recommendation based on Hybrid filtering in Telegram messenger

机译:基于电报信使的混合滤波的用户推荐

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Over the past decade, social networks and messengers have found a special place in the creation and development of businesses. User recommendation is a very important feature in social networks that has attracted the attention of many users to these environments. Using this system in an instant messenger environment is very useful. Telegram is a cloud-based messenger with more than 400 million monthly active users. Telegram is used as a social network in Iran, but does not offer the most widely used features of social networks, such as recommending users. This feature is important for marketers to find target audience. This paper presents a hybrid filtering-based algorithm to recommend Telegram users. This method combines the membership graph of users with the profile of groups. The membership graph, models users based on their membership in groups. Also, the profile of each group includes the name and description of the group. We have created a bag of words for each group based on natural language processing methods to combine it with the membership graph. After combination process, users are recommended based on the list of groups obtained. The data used in this study is the information of more than 120 million users and 900,000 supergroups in Telegram. This data is obtained through Telegram API by Idekav system. The evaluation of the proposed method has been done separately on two categories of specialized supergroups. Each category includes 25 specialized supergroups in Telegram. Selected supergroups for evaluation have between 2,000 and 10,000 members. Experimental results show the integrity of the model and error reduction in RMSE.
机译:在过去的十年中,社交网络和使者在企业的创造和发展中找到了一个特殊的地方。用户建议是社交网络中的一个非常重要的功能,它引起了许多用户对这些环境的关注。在即时通信环境中使用此系统非常有用。电报是一个基于云的信使,每月有超过4亿个活跃的用户。电报被用作伊朗的社交网络,但不提供最广泛使用的社交网络功能,例如推荐用户。此功能对于营销人员来寻找目标受众很重要。本文介绍了一种基于混合滤波的算法,推荐电报用户。此方法将用户的成员资格图与组的配置文件组合。会员图,模型用户根据其成员资格组成。此外,每个组的简档包括该组的名称和描述。根据自然语言处理方法为每个组创建了一袋单词,以将其与成员图相结合。组合过程后,建议用户基于所获得的组列表。本研究中使用的数据是超过12000万用户的信息和电汇中的900,000个超级组。通过IDEKAV系统通过电报API获得此数据。所提出的方法的评估已在两类专业超级组中分别进行。每个类别包括电线上的25个专门的超级组。评估的选定超级组在2,000到10,000名成员之间。实验结果表明了RMSE模型的完整性和误差。

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