论文标题
社会:一个深度学习系统,用于预测凝聚力的社会社区
CommuNety: A Deep Learning System for the Prediction of Cohesive Social Communities
论文作者
论文摘要
由大量用户组成的有效采矿是一项具有挑战性的任务。传统方法依赖于与用户相关的文本数据的分析来完成此任务。但是,文本数据缺乏有关社会用户及其相关群体的重要信息。在本文中,我们建议使用图像预测凝聚力社交网络的深度学习系统。提出的深度学习模型由分层CNN体系结构组成,以学习与每个凝聚力网络相关的描述性特征。本文还提出了一种新颖的面部共发生频率算法来量化图像中人的存在,以及一种新颖的照片排名方法,用于分析预测的社交网络中不同个体之间关系强度。我们在PIPA数据集上广泛评估了所提出的技术,并与最先进的方法进行了比较。我们的实验结果表明,所提出的技术在预测不同个体与社区凝聚力之间的关系方面具有出色的性能。
Effective mining of social media, which consists of a large number of users is a challenging task. Traditional approaches rely on the analysis of text data related to users to accomplish this task. However, text data lacks significant information about the social users and their associated groups. In this paper, we propose CommuNety, a deep learning system for the prediction of cohesive social networks using images. The proposed deep learning model consists of hierarchical CNN architecture to learn descriptive features related to each cohesive network. The paper also proposes a novel Face Co-occurrence Frequency algorithm to quantify existence of people in images, and a novel photo ranking method to analyze the strength of relationship between different individuals in a predicted social network. We extensively evaluate the proposed technique on PIPA dataset and compare with state-of-the-art methods. Our experimental results demonstrate the superior performance of the proposed technique for the prediction of relationship between different individuals and the cohesiveness of communities.