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A Novel Classification Framework for Evaluating Individual and Aggregate Diversity in Top-N Recommendations

机译:一种用于评估前N个建议中的个体和总体多样性的新颖分类框架

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摘要

The primary goal of a recommender system is to generate high quality user-centred recommendations. However, the traditional evaluation methods and metrics were developed before researchers understood all the factors that increase user satisfaction. This study is an introduction to a novel user and item classification framework. It is proposed that this framework should be used during user-centred evaluation of recommender systems and the need for this framework is justified through experiments. User profiles are constructed and matched against other users' profiles to formulate neighbourhoods and generate top-N recommendations. The recommendations are evaluated to measure the success of the process. In conjunction with the framework, a new diversity metric is presented and explained. The accuracy, coverage, and diversity of top-N recommendations is illustrated and discussed for groups of users. It is found that in contradiction to common assumptions, not all users suffer as expected from the data sparsity problem. In fact, the group of users that receive the most accurate recommendations do not belong to the least sparse area of the dataset.
机译:推荐系统的主要目标是生成高质量的以用户为中心的推荐。但是,传统的评估方法和指标是在研究人员了解所有提高用户满意度的因素之前开发出来的。这项研究是对新型用户和项目分类框架的介绍。建议在推荐者系统的以用户为中心的评估过程中使用此框架,并通过实验证明对该框架的需求。构建用户个人资料并将其与其他用户的个人资料进行匹配,以制定邻域并生成前N个推荐。对建议进行评估,以评估该过程是否成功。结合该框架,提出并解释了一种新的多样性指标。针对用户组说明并讨论了前N个建议的准确性,覆盖范围和多样性。发现与常见的假设相反,并非所有用户都遭受数据稀疏性问题的预期影响。实际上,接收到最准确建议的用户组不属于数据集的最稀疏区域。

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