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Help Me Understand This Conversation: Methods of Identifying Implicit Links Between CSCL Contributions

机译:帮我理解此对话:识别CSCL贡献之间的隐式链接的方法

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Multi-participant chat conversations are one of the most frequently employed Computer Supported Collaborative Learning tools due to their ease of use. Moreover, chats enhance knowledge sharing, sustain creativity and aid in collaborative problem solving. Nevertheless, the manual analysis of multi-participant chats is a difficult task due to the mixture of different topics and the inter-twinning of multiple discussion threads during the same conversation. Several tools that employ Natural Language Processing techniques have been developed to automatically identify links between contributions in order to facilitate the tracking of topics and of discussion threads, as well as to highlight key contributions in terms of follow-up impact. This paper proposes a novel method for detecting implicit links based on features computed using string kernels and word embeddings, combined with neural networks. This method significantly outperforms previous results on the same dataset. Due to its smaller size, our model represents an alternative to more complex deep neural networks, especially when limited training data is available as is the case of CSCL chats in a specific domain.
机译:由于易于使用,多参与者聊天对话是最常用的计算机支持的协作学习工具之一。此外,聊天可以增进知识共享,保持创造力并有助于协作解决问题。但是,由于不同主题的混合以及同一会话期间多个讨论线程的相互纠缠,因此多参与者聊天的手动分析是一项艰巨的任务。已经开发了几种使用自然语言处理技术的工具来自动识别文稿之间的链接,以便于跟踪主题和讨论线程,并在后续影响方面突出显示关键文稿。本文提出了一种基于字符串核和词嵌入与神经网络相结合的特征检测隐式链接的新方法。该方法明显优于同一数据集上的先前结果。由于其较小的模型,我们的模型代表了更复杂的深度神经网络的替代方案,尤其是在有限的训练数据可用的情况下,例如在特定领域的CSCL聊天时。

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