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Generate Personalized Explanations for Recommendation based on Keywords

机译:基于关键字生成用于推荐的个性化解释

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Explainable recommendation refers to providing users with recommended products and explaining to users the reasons for recommending the products. Recommendation explanations can greatly increase users’ trust and satisfaction with the recommender system, and to a certain extent can assist users make decisions efficiently. The current recommendation explanation is mainly templated sentences although this method is simple and easy to understand, it is relatively rigid, lacks flexibility, insufficient service, and requires a lot of manpower and material resources. Inspired by the above questions, by mining user comment information, we propose a method to generate multiple recommendations based on keywords. First, the keywords in the comment information are extracted through STF-IDF, and then the recommendation explanation is generated through the classic network GRU generated by natural language. Experiments show that our proposed method not only has better recommendation accuracy but is also has a higher quality of recommended interpretation compared to classic methods
机译:可解释的建议是指为用户提供推荐产品,并向用户解释推荐产品的原因。推荐解释可以大大提高用户对推荐系统的信任和满足,并且在一定程度上可以帮助用户有效地做出决策。目前的推荐解释主要是模板化句子,但这种方法很简单易懂,它相对僵化,缺乏灵活性,服务不足,需要大量的人力和物质资源。受到上述问题的启发,通过挖掘用户评论信息,我们提出了一种基于关键字生成多个建议的方法。首先,通过STF-IDF提取注释信息中的关键字,然后通过自然语言生成的经典网络GU来生成推荐说明。实验表明,与经典方法相比,我们所提出的方法不仅具有更好的推荐准确性,而且还具有更高的推荐解释质量

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