Detecting covert disruptive behavior in online interaction by analyzing conversational features and norm violations

IF 4.8 2区 计算机科学 Q1 COMPUTER SCIENCE, CYBERNETICS ACM Transactions on Computer-Human Interaction Pub Date : 2023-12-01 DOI:10.1145/3635143
Henna Paakki, Heidi Vepsäläinen, Antti Salovaara, Bushra Zafar
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Abstract

Disruptive behavior is a prevalent threat to constructive online engagement. Covert behaviors, like trolling, are especially challenging to detect automatically, because they utilize deceptive strategies to manipulate conversation. We illustrate a novel approach to their detection: analyzing conversational structures instead of focusing only on messages in isolation. Building on conversation analysis, we demonstrate that 1) conversational actions and their norms provide concepts for a deeper understanding of covert disruption, and that 2) machine learning, natural language processing and structural analysis of conversation can complement message-level features to create models that surpass earlier approaches to trolling detection. Our models, developed for detecting overt (aggression) as well as covert (trolling) behaviors using prior studies’ message-level features and new conversational action features, achieved high accuracies (0.90 and 0.92, respectively). The findings offer a theoretically grounded approach to computationally analyzing social media interaction, and novel methods for effectively detecting covert disruptive conversations online.

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通过分析会话特征和规范违反来检测在线交互中的隐蔽破坏性行为
破坏性行为是对建设性在线参与的普遍威胁。隐蔽的行为,比如网络挑衅,尤其难以自动检测,因为它们利用欺骗策略来操纵对话。我们展示了一种检测它们的新方法:分析会话结构,而不是只关注孤立的消息。在对话分析的基础上,我们证明了1)对话行为及其规范为更深入地理解隐蔽破坏提供了概念,2)机器学习、自然语言处理和对话的结构分析可以补充消息级特征,以创建超越早期trolling检测方法的模型。我们利用先前研究的消息级特征和新的会话动作特征开发了用于检测公开(攻击)和隐蔽(挑衅)行为的模型,达到了很高的准确率(分别为0.90和0.92)。这些发现为计算分析社交媒体互动提供了一种理论基础的方法,并为有效检测在线隐蔽破坏性对话提供了新方法。
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来源期刊
ACM Transactions on Computer-Human Interaction
ACM Transactions on Computer-Human Interaction 工程技术-计算机:控制论
CiteScore
8.50
自引率
5.40%
发文量
94
审稿时长
>12 weeks
期刊介绍: This ACM Transaction seeks to be the premier archival journal in the multidisciplinary field of human-computer interaction. Since its first issue in March 1994, it has presented work of the highest scientific quality that contributes to the practice in the present and future. The primary emphasis is on results of broad application, but the journal considers original work focused on specific domains, on special requirements, on ethical issues -- the full range of design, development, and use of interactive systems.
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