Mining Abstract Highly Correlated Pairs

Minh Le Nguyen, François Sempé, Hô Tuòng Vinh, Jean-Daniel Zucker
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引用次数: 1

Abstract

Recommendation systems are essentially solving a prediction problem where, given that p items have already been selected or rated by a user, the goal is to propose k target items most likely to be appreciated by her/him. Many models have been proposed to identify these target items but the results are not always satisfactory in practice because they often only include the most popular items and ignore the “long tail” of items that are either less popular or new ones. This paper investigates the use of a type of domain abstraction to search for highly correlated pairs of abstract items that are then used to infer other target items of interest. The advantage of this approach is evaluated on the basis of real data showing better results compared to an approach only based on the concrete pairs. Basing on an empirical study we confirm that the accuracy improvement is linked to the relevance of the domain abstraction.
摘要高相关对
推荐系统本质上是在解决一个预测问题,即给定用户已经选择或评价了p个物品,其目标是提出k个最可能被他/她欣赏的目标物品。已经提出了许多模型来确定这些目标项目,但在实践中结果并不总是令人满意,因为它们通常只包括最受欢迎的项目,而忽略了不太受欢迎或新项目的“长尾”。本文研究了使用一种领域抽象来搜索高度相关的抽象项对,然后使用这些抽象项来推断其他感兴趣的目标项。这种方法的优势是在实际数据的基础上进行评估的,与仅基于具体对的方法相比,结果更好。基于实证研究,我们证实了准确性的提高与领域抽象的相关性有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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