面向情境感知的社会行为分析

A. Beheshti, V. Hashemi, S. Yakhchi
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引用次数: 10

摘要

技术和社会进步的融合,更具体地说,与网络、社交媒体和智能设备的接触,有可能影响个人的心理行为。极端主义和犯罪行为,如激进化和网络欺凌,给人类带来了严重的问题。有效理解社交网络上的行为障碍的主要障碍包括理解社交文档的内容和上下文以及社交用户活动的能力。理解社交网络上的行为障碍(例如犯罪和极端主义活动)的模式是具有挑战性的,并且需要基于对社交用户的个性、行为和过去活动的时间感知分析来将社交文件的内容置于情境化的技术。在这种背景下,从社会文件中提取和丰富语义信息有可能成为探索行为障碍迹象和预防网络欺凌、自杀相关行为和激进化等严重问题的重要资产。为了应对这一挑战,在本文中,我们提出了一种新的社会文档分析管道,使分析师能够参与社会文档(例如,Twitter上的Tweet或Facebook上的帖子),以探索行为障碍的认知方面。我们将管道实现为一个可扩展和可伸缩的体系结构,并给出了评估结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Context-Aware Social Behavioral Analytics
The confluence of technological and societal advances, and more specifically, engagement with Web, social media, and smart devices has the potential to affect the mental behavior of the individuals. Examples include extremist and criminal behaviors such as radicalization and cyber-bullying, which are causing serious issues for humanity. Major barriers to the effective understanding of behavioral disorders on social networks includes the ability to understand the content and context of social documents, as well as the activity of social users. Understanding the patterns of behavioral disorders (e.g., criminal and extremist activities) on social networks, is challenging and requires techniques to contextualize the content of social documents based on the time-aware analysis of personality, behaviour and past activities of social users. In this context, semantic information extraction and enrichment from social documents has the potential to become a vital asset to explore the sign of behavioral disorders and prevent serious issues such as cyber-bullying, suicidal related behavior and radicalization. To address this challenge, in this paper, we present a novel social document analysis pipeline to enable analysts engage with social documents (e.g., a Tweet in Twitter or a post on Facebook) to explore cognitive aspects of behavioral disorders. We implement the pipeline as an extensible and scalable architecture and present the evaluation results.
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