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Enforcing Topic Diversity in a Document Recommender for Conversations

机译:在文档推荐器中加强会话话题的多样性

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This paper addresses the problem of building concise, diverse and relevant lists of documents, which can be recommended to the participants of a conversation to fulfill their information needs without distracting them. These lists are retrieved periodically by submitting multiple implicit queries derived from the pronounced words. Each query is related to one of the topics identified in the conversation fragment preceding the recommendation, and is submitted to a search engine over the English Wikipedia. We propose in this paper an algorithm for diverse merging of these lists, using a submodular reward function that rewards the topical similarity of documents to the conversation words as well as their diversity. We evaluate the proposed method through crowdsourcing. The results show the superiority of the diverse merging technique over several others which not enforce the diversity of topics.
机译:本文解决了建立简明,多样且相关的文档列表的问题,可以将这些文档推荐给对话的参与者,以满足他们的信息需求,而不会分散他们的注意力。通过提交多个从发音单词派生的隐式查询,可以定期检索这些列表。每个查询都与推荐之前的对话片段中标识的主题之一相关,并通过英语Wikipedia提交给搜索引擎。我们在本文中提出了一种使用亚模数奖励函数对这些列表进行不同合并的算法,该函数奖励文档与会话词的主题相似性及其多样性。我们通过众包评估提出的方法。结果表明,多样化的合并技术优于其他几种不能强制主题多样化的技术。

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