Social Network Analysis for Precise Friend Suggestion for Twitter by Associating Multiple Networks Using ML

Dharmendra Kumar Singh Singh, N. Nithya, L. Rahunathan, Preyal Sanghavi, Ravirajsinh Sajubha Vaghela, Poongodi Manoharan, Mounir Hamdi, Godwin Brown Tunze
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引用次数: 16

Abstract

The main aim in this paper is to create a friend suggestion algorithm that can be used to recommend new friends to a user on Twitter when their existing friends and other details are given. The information gathered to make these predictions includes the user's friends, tags, tweets, language spoken, ID, etc. Based on these features, the authors trained their models using supervised learning methods. The machine learning-based approach used for this purpose is the k-nearest neighbor approach. This approach is by and large used to decrease the dimensionality of the information alongside its feature space. K-nearest neighbor classifier is normally utilized in arrangement-based situations to recognize and distinguish between a few parameters. By using this, the features of the central user's non-friends were compared. The friends and communities of a user are likely to be very different from any other user. Due to this, the authors select a single user and compare the results obtained for that user to suggest friends.
基于ML的多网络关联的Twitter好友推荐社交网络分析
本文的主要目的是创建一个朋友建议算法,该算法可用于在Twitter上向用户推荐他们现有的朋友和其他详细信息。为做出这些预测而收集的信息包括用户的朋友、标签、推文、语言、ID等。基于这些特征,作者使用监督学习方法训练他们的模型。用于此目的的基于机器学习的方法是k最近邻方法。这种方法通常用于降低信息及其特征空间的维数。k近邻分类器通常用于基于排列的情况下识别和区分几个参数。以此为基础,比较了中心用户的非好友特征。用户的朋友和社区可能与其他用户非常不同。因此,作者选择单个用户并比较该用户获得的结果来推荐好友。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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