Revisiting Local Walking Based on Social Network Trust (LWSNT): Friends Recommendation Algorithm in Facebook Social Networks

Wahidya Nurkarim, A. Wijayanto
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Abstract

In the last decades, the internet penetration rate and online social network users have grown very fast. Online social network, such as Facebook, is a platform where one can find friends without having to meet face to face. A social network is represented by a large graph because it involves many participants. Hence, it is hard to find potential friends who have the same thoughts and interests. The Local Walking Based on Social Network Trust (LWSNT) algorithm is one of the popular algorithms for social friend recommendation. This study re-examines whether the correlation between attributes gives un-match ranks in different cases (cases with and without correlation). We assess the performance of LWSNT in Facebook networks under the supervised manner by comparing its F-score against similar methods. By using Kendall’s tau correlation, the results show that the correlation of attributes has no significant effect on the order of friend recommendations. In addition, the LWSNT performance is quite inferior against the Common Neighbors algorithm and Jaccard index.
基于社交网络信任(LWSNT)的重访局部行走:Facebook社交网络中的好友推荐算法
在过去的几十年里,互联网普及率和在线社交网络用户增长非常快。在线社交网络,如Facebook,是一个无需面对面就能找到朋友的平台。一个社会网络用一个大的图来表示,因为它涉及许多参与者。因此,很难找到有相同想法和兴趣的潜在朋友。基于社交网络信任的局部行走(LWSNT)算法是社交好友推荐的常用算法之一。本研究重新检查了属性之间的相关性是否在不同情况下(有相关性和没有相关性的情况下)给出了不匹配排名。我们通过将其f值与类似方法进行比较,在监督方式下评估LWSNT在Facebook网络中的性能。通过Kendall’s tau相关分析,结果表明属性的相关性对好友推荐的排序没有显著影响。此外,LWSNT的性能相对于Common Neighbors算法和Jaccard索引是相当差的。
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