人类记忆的增强:预测下次会议继续讨论的话题

Seyed Ali Bahrainian, F. Crestani
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引用次数: 19

摘要

记忆增强是指为人类记忆提供信息,以促进和补充人们对过去事件的回忆的过程。最近,人们非常关注如何处理会议内容以供以后重用,例如回顾会议以支持失败的记忆、记住关键问题、验证等。这是因为会议对于在组织中分享知识至关重要。在本文中,我们提出了四种新的时间序列方法来预测一个人在准备下一次会议时应该复习的主题。预测/推荐的主题可以被用户作为一个记忆增强过程来回顾,以促进对先前会议关键点的回忆。随着一个组织每周可能参加的会议越来越多,讨论的主题越来越多,忘记过去的会议变得非常突出,因此向用户推荐某些主题,以便为用户将来的会议做好准备是有益和重要的。我们在真实世界数据上的实验结果表明,我们的方法明显优于最先进的隐马尔可夫模型基线。这表明我们提出的方法在时态数据中建模语义的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Augmentation of Human Memory: Anticipating Topics that Continue in the Next Meeting
Memory augmentation is the process of providing human memory with information that facilitates and complements the recall of an event in a person»s past. Recently, there has been a lot of attention on processing the content of meetings for later reuse, such as reviewing a meeting for supporting failing memories, keeping in mind key issues, verification, etc. That is due to the fact that meetings are essential for sharing knowledge in organizations. In this paper, we propose four novel time-series methods for predicting the topics that one should review in preparation for a next meeting. The predicted/recommended topics can be reviewed by a user as a memory augmentation process to facilitate recall of key points of a previous meeting. With the growing number of meetings at an organization that one may attend weekly and with the growing number of topics discussed, forgetting past meetings becomes eminent, hence recommending certain topics to the user in order to prepare the user for a future meeting is beneficial and important. Our experimental results on real-world data, demonstrate that our methods significantly outperform a state-of-the-art Hidden Markov Model baseline. This indicates the efficacy of our proposed methods for modeling semantics in temporal data.
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