Dialogue Based Recommender System that Flexibly Mixes Utterances and Recommendations

Daisuke Tsumita, T. Takagi
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引用次数: 11

Abstract

Much of the prior research in the recommendations through dialogue separate dialogue and recommendations. However, since the accuracy of the recommendations themselves is not necessarily high, recommendation results rarely meet user needs. However, as human we can find the solutions that satisfy users by appropriately repeating the cycle of checking mismatched reasons and making another recommendations in our conversations. In this paper, we propose a system for leveraging a dialogue strategy for reinforcement learning using recommendation results based on user utterances. We constructed a dialogue system to perform adaptive behavior that naturally incorporates recommendations into conversation with users. CCS CONCEPTS • Information systems → Recommender systems; • Computing methodologies → Discourse, dialogue and pragmatics.
基于对话的推荐系统,灵活地混合了话语和推荐
以前的很多研究在建议中都是通过对话将建议和对话分开。然而,由于推荐本身的准确性并不一定高,推荐结果很少能满足用户的需求。然而,作为人类,我们可以通过适当地重复检查不匹配原因的循环并在我们的对话中提出另一个建议来找到满足用户的解决方案。在本文中,我们提出了一个系统,利用基于用户话语的推荐结果来利用对话策略进行强化学习。我们构建了一个对话系统来执行自适应行为,自然地将推荐纳入与用户的对话中。•信息系统→推荐系统;•计算方法→语篇、对话和语用学。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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