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首页> 外文期刊>International journal of mobile computing and multimedia communications >Multi-Criteria Recommender Systems: A Survey and a Method to Learn New User's Profile
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Multi-Criteria Recommender Systems: A Survey and a Method to Learn New User's Profile

机译:多标准推荐系统:调查和学习新用户资料的方法

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摘要

A Recommender System (RS) works much better for users when it has more information. In Collaborative Filtering, where users' preferences are expressed as ratings, the more ratings elicited, the more accurate the recommendations. New users present a big challenge for a RS, which has to providing content fitting their preferences. Generally speaking, such problems are tackled by applying Active Learning (AL) strategies that consist on a brief interview with the new user, during which she is asked to give feedback about a set selected items. This article presents a comprehensive study of the most important techniques used to handle this issue focusing on AL techniques. The authors then propose a novel item selection approach, based on Multi-Criteria ratings and a method of computing weights of criteria inspired by a multi-criteria decision making approach. This selection method is deployed to learn new users' profiles, to identify the reasons behind which items are deemed to be relevant compared to the rest items in the dataset.
机译:推荐系统(RS)有更多信息时,对用户而言效果更好。在“协作筛选”中,用户的偏好表示为等级,获得的等级越多,建议的准确性就越高。新用户对RS提出了巨大的挑战,RS必须提供适合其偏好的内容。一般而言,可以通过应用主动学习(AL)策略来解决此类问题,该策略包括对新用户的简短采访,在此期间,她被要求提供有关一组选定项目的反馈。本文以AL技术为中心,对用于解决此问题的最重要技术进行了全面研究。然后,作者们提出了一种基于多标准评分的新颖项目选择方法,以及一种基于多标准决策方法启发的计算标准权重的方法。部署此选择方法来学习新用户的配置文件,以识别与数据集中的其余项目相比,哪些项目被视为相关的原因。

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