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A recommendation method considering users' time series contexts

机译:考虑用户时间序列上下文的推荐方法

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摘要

This paper proposes a recommendation method considering users' time series contexts which are situations that have occurred / will occur in the past/future. There are some recommendation methods that provide information suitable for users' action patterns as the recommendation methods considering them. These methods provide information referring to the other users that have a similar action pattern to that of an active user. However, since a user's action pattern changes depending on the user's contexts, the methods need to refer to the other users' action patterns related to the current user's contexts. In this paper, we propose a recommendation method considering the user's time series contexts considering that the user's action pattern changes depending on the user's contexts.
机译:本文提出了一种建议方法,该方法考虑了用户的时间序列上下文,这些上下文是过去/将来已经发生/将要发生的情况。有一些推荐方法可以提供适合用户行为模式的信息,作为考虑这些建议的推荐方法。这些方法提供的信息涉及其他用户,这些用户具有与活动用户相似的操作模式。但是,由于用户的动作模式根据用户的上下文而改变,因此该方法需要参考与当前用户的上下文有关的其他用户的动作模式。在本文中,我们提出一种考虑用户时间序列上下文的推荐方法,该方法考虑到用户的行为模式会根据用户上下文而变化。

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