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Feature selection methods for conversational recommender systems

机译:会话推荐系统的特征选择方法

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This paper focuses on question selection methods for conversational recommender systems. We consider a scenario, where given an initial user query, the recommender system may ask the user to provide additional features describing the searched products. The objective is to generate questions/features that a user would likely reply, and if replied, would effectively reduce the result size of the initial query. Classical entropy-based feature selection methods are effective in term of result size reduction, but they select questions uncorrelated with user needs and therefore unlikely to be replied. We propose two feature-selection methods that combine feature entropy with an appropriate measure of feature relevance. We evaluated these methods in a set of simulated interactions where a probabilistic model of user behavior is exploited. The results show that these methods outperform entropy-based feature selection.
机译:本文重点讨论会话推荐系统的问题选择方法。我们考虑一种场景,在这种情况下,给定初始用户查询,推荐系统可能会要求用户提供描述搜索到的产品的其他功能。目的是生成用户可能会回答的问题/功能,如果得到答复,则将有效地减小初始查询的结果大小。基于经典熵的特征选择方法在减小结果大小方面很有效,但是它们选择与用户需求不相关的问题,因此不太可能被回答。我们提出了两种特征选择方法,它们结合了特征熵和适当的特征相关性度量。我们在一组模拟的交互中评估了这些方法,在这些交互中利用了用户行为的概率模型。结果表明,这些方法优于基于熵的特征选择。

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