Prediction of Preferred Personality for Friend Recommendation in Social Networks using Artificial Neural Network

Nafis Neehal, M. Mottalib
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引用次数: 5

Abstract

Social Networking sites have nowadays become the most common way to communicate over online for people around the world. For making friends in social network, there remains an underlying friend recommendation framework which suggests friends to the users. However, most of the existing friend recommendation frameworks consider only the number of mutual friends, geo-location, mutual interests etc. to recommend one person as a friend to another. But, in real life, people, who have similar personalities, tend to become friends to each other, application of which is completely missing in the modern friend recommendation frameworks. Hence, we have proposed a personality based friend recommendation framework in this paper, which consists of a 3-Layered Artificial Neural Network for friend preference classification and a distance-based sorted subset selection procedure for friend recommendation. Our model tends to achieve a fairly high precision, recall, fl-measure and accuracy of around 85 %,85%,82% and 83% respectively in the friend choice classification task.
基于人工神经网络的社交网络好友推荐偏好人格预测
如今,社交网站已成为世界各地人们进行在线交流的最常见方式。在社交网络中交友,仍然存在一个潜在的朋友推荐框架,向用户推荐朋友。然而,现有的朋友推荐框架大多只考虑共同朋友的数量、地理位置、共同兴趣等因素来将一个人推荐给另一个人。但是,在现实生活中,性格相似的人往往会成为彼此的朋友,这在现代的朋友推荐框架中完全没有应用。因此,本文提出了一种基于个性的朋友推荐框架,该框架由用于朋友偏好分类的三层人工神经网络和用于朋友推荐的基于距离的排序子集选择过程组成。在朋友选择分类任务中,我们的模型趋向于达到相当高的准确率,召回率,流畅度和准确度分别在85%,85%,82%和83%左右。
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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