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Bundles: A Framework to Optimise Topic Analysis in Real-Time Chat Discourse

机译:捆绑软件:优化实时聊天话语中主题分析的框架

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Collaborative chat tools and large text corpora are ubiquitous in today's world of real-time communication. As micro teams and start-ups adopt such tools, there is a need to understand the meaning (even at a high level) of chat conversations within collaborative teams. In this study, we propose a technique to segment chat conversations to increase the number of words available (19% on average) for text mining purposes. Using an open source dataset, we answer the question of whether having more words available for text mining can produce more useful information to the end user. Our technique can help micro-teams and start-ups with limited resources to efficiently model their conversations to afford a higher degree of readability and comprehension.
机译:协作聊天工具和大型文本语料库在当今的实时通信世界中无处不在。随着微型团队和初创企业采用此类工具,有必要了解协作团队中聊天对话的含义(即使是较高水平)。在这项研究中,我们提出了一种对聊天对话进行细分的技术,以增加用于文本挖掘目的的可用单词数(平均为19%)。使用开源数据集,我们回答了以下问题:是否有更多的单词可用于文本挖掘,这可以为最终用户提供更多有用的信息。我们的技术可以帮助资源有限的微型团队和初创企业有效地建立对话模型,从而提供更高的可读性和理解力。

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