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Customizable Surprising Recommendation Based on the Tradeoff between Genre Difference and Genre Similarity

机译:基于流派差异和类型相似性之间的权衡的可定制令人惊讶的推荐

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Recommendations generated by Content Based method are highly related to the user's previous choices, which may not only unattractive to the user[1], but also restrict the user's horizon [1], [2]. At the same time, a new paradigm of making recommendations hat ¡¨surprise¡¨ the user poses new challenges in relation to the definition, formulation and performance metrics for surprising recommendation systems. Moreover, users may demand recommendations with varying degrees of surprising ness that satisfy their personal interests on the one hand, and encourage the explorations of new or unexpected areas of potential interests on another. To meet these challenges, in this paper, we proposed a framework, called Customizable GenPref, and the associated techniques for generating customizable surprising recommendations. Specifically, we contribute to the following aspects: firstly, through a review of the related works, we distinguish the difference between surprising ness and other concepts such as diversity, unexpectedness in non-traditional recommendations, secondly, we argue that the elements of surprise in a recommendation involve two conflicting goals, namely unusuality and relevance in the recommendation and proposed a framework of making recommendations such that by tuning a user-defined parameter a a user will receive recommendations which are either similar to his/her previous choices, or different and novel that surprises him/her, or combinations of both. We have evaluated our proposed framework using several relevant performance metrics, such as accuracy and diversity. Our experimental results show that Customizable GenPref is not only able to predict and recommend similar or surprising items that the user may like, but, at the same time, also serves the business objectives of e-commerce sites by recommending more distinct items to the users compared with baseline methods.
机译:由基于内容的方法生成的建议与用户的先前选择具有高度相关,这可能不仅对用户没有吸引力[1],还限制了用户的地平线[1],[2]。与此同时,一个新的范式制作推荐帽子¡¨惊喜¡¨用户在令人惊讶的推荐系统的定义,配方和性能指标方面构成了新的挑战。此外,用户可能会在一方面满足他们个人兴趣的不同程度的令人惊讶的令人愉快的建议,并鼓励对另一个人的潜在利益的新或意外领域的探索。为了满足这些挑战,在本文中,我们提出了一个框架,称为可定制的Genpref,以及用于生成可定制令人惊讶的建议的相关技术。具体而言,我们有助于以下几个方面:首先,通过对相关工程的审查,我们区分令人惊讶的令人惊讶和其他概念(如多样性,非传统建议中的意外)之间的差异,其次,我们争论惊喜的要素建议涉及两个冲突的目标,即建议中的不寻常和相关性,并提出了提出建议的框架,这样通过调整用户定义的参数AA用户将接收与他/她以前的选择相似或不同和新颖的建议这让他/她或两者的组合感到惊讶。我们使用多种相关性能指标评估了我们提出的框架,例如准确性和多样性。我们的实验结果表明,可定制的GenPref不仅能够预测和推荐用户可能喜欢的类似或令人惊讶的项目,而且在同时,还通过将更多不同的项目推荐给用户来服务于电子商务网站的业务目标与基线方法相比。

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