分析对话结构对预测网上劝说性评论的影响

3区 计算机科学 Q1 Computer Science Journal of Ambient Intelligence and Humanized Computing Pub Date : 2024-09-02 DOI:10.1007/s12652-024-04841-8
Nicola Capuano, Marco Meyer, Francesco David Nota
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引用次数: 0

摘要

在线对话中的劝说话题具有社会、政治和安全影响;因此,预测在线讨论中劝说性评论的问题在文献中受到越来越多的关注。根据图神经网络的最新进展,我们分析了对话结构对预测在线讨论中劝说性评论的影响。我们以 "改变我的观点 "Reddit 频道中的在线对话顶部构建的图作为输入,对人工智能模型的性能进行了评估。我们实验了不同的图架构,并比较了图神经网络(作为基于结构的模型)和密集神经网络(作为基线模型)的性能。我们在两个任务上进行了实验:(1)劝说性评论检测,旨在预测哪些评论具有劝说性;(2)影响力预测,旨在预测哪些用户具有劝说性。实验结果表明,对话结构在预测说服力方面的作用在很大程度上取决于作为图神经网络输入的图表示。特别是,在两项任务中,仅连接对话中属于同一发言者的评论的图结构都取得了最佳性能。这种结构优于不考虑任何结构信息的基线模型,也优于将不同发言者的评论相互连接起来的结构。具体来说,表现最好的模型的 F1 得分为 0.58,比基线模型(F1 得分为 0.55)提高了 5.45%,比连接不同发言者评论的模型(F1 得分为 0.54)提高了 7.41%。
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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Analyzing the impact of conversation structure on predicting persuasive comments online

The topic of persuasion in online conversations has social, political and security implications; as a consequence, the problem of predicting persuasive comments in online discussions is receiving increasing attention in the literature. Following recent advancements in graph neural networks, we analyze the impact of conversation structure in predicting persuasive comments in online discussions. We evaluate the performance of artificial intelligence models receiving as input graphs constructed on the top of online conversations sourced from the “Change My View” Reddit channel. We experiment with different graph architectures and compare the performance on graph neural networks, as structure-based models, and dense neural networks as baseline models. Experiments are conducted on two tasks: (1) persuasive comment detection, aiming to predict which comments are persuasive, and (2) influence prediction, aiming to predict which users are persuasive. The experimental results show that the role of the conversation structure in predicting persuasiveness is strongly dependent on its graph representation given as input to the graph neural network. In particular, a graph structure linking only comments belonging to the same speaker in the conversation achieves the best performance in both tasks. This structure outperforms both the baseline model, which does not consider any structural information, and structures linking different speakers’ comments with each other. Specifically, the F1 score of the best performing model is 0.58, which represents an improvement of 5.45% over the baseline model (F1 score of 0.55) and 7.41% over the model linking different speakers’ comments (F1 score of 0.54).

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来源期刊
Journal of Ambient Intelligence and Humanized Computing
Journal of Ambient Intelligence and Humanized Computing COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCEC-COMPUTER SCIENCE, INFORMATION SYSTEMS
CiteScore
9.60
自引率
0.00%
发文量
854
期刊介绍: The purpose of JAIHC is to provide a high profile, leading edge forum for academics, industrial professionals, educators and policy makers involved in the field to contribute, to disseminate the most innovative researches and developments of all aspects of ambient intelligence and humanized computing, such as intelligent/smart objects, environments/spaces, and systems. The journal discusses various technical, safety, personal, social, physical, political, artistic and economic issues. The research topics covered by the journal are (but not limited to): Pervasive/Ubiquitous Computing and Applications Cognitive wireless sensor network Embedded Systems and Software Mobile Computing and Wireless Communications Next Generation Multimedia Systems Security, Privacy and Trust Service and Semantic Computing Advanced Networking Architectures Dependable, Reliable and Autonomic Computing Embedded Smart Agents Context awareness, social sensing and inference Multi modal interaction design Ergonomics and product prototyping Intelligent and self-organizing transportation networks & services Healthcare Systems Virtual Humans & Virtual Worlds Wearables sensors and actuators
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