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A Troubling Analysis of Reproducibility and Progress in Recommender Systems Research

机译:推荐系统研究重复性和进展的令人不安分析

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摘要

The design of algorithms that generate personalized ranked item lists is a central topic of research in the field of recommender systems. In the past fewyears, in particular, approaches based on deep learning (neural) techniques have become dominant in the literature. For all of them, substantial progress over the state-of-the-art is claimed. However, indications exist of certain problems in today's research practice, e.g., with respect to the choice and optimization of the baselines used for comparison, raising questions about the published claims. To obtain a better understanding of the actual progress, we have compared recent results in the area of neural recommendation approaches based on collaborative filtering against a consistent set of existing simple baselines. The worrying outcome of the analysis of these recent works-all were published at prestigious scientific conferences between 2015 and 2018-is that 11 of the 12 reproducible neural approaches can be outperformed by conceptually simple methods, e.g., based on the nearest-neighbor heuristic or linear models. None of the computationally complex neural methods was actually consistently better than already existing learning-based techniques, e.g., using matrix factorization or linear models. In our analysis, we discuss common issues in today's research practice, which, despite the many papers that are published on the topic, have apparently led the field to a certain level of stagnation.(1)
机译:生成个性化排名项目列表的算法的设计是推荐系统领域的研究的中心主题。在过去的几年中,特别是,基于深度学习(神经)技术的方法已经在文献中占主导地位。对于所有人来说,对最先进的人来说,索赔的实质性进展。然而,在今天的研究实践中存在某些问题的指示,例如,关于用于比较的基线的选择和优化,提高关于公开索赔的问题。为了更好地了解实际进步,我们在基于对一组一致的现有简单基线的协作滤波的基础上进行了最近的结果。这些近期作品分析的结果 - 所有人都在2015年和2018年间在着名的科学会议上公布 - 这是12种可重复的神经方法中的11个可以通过概念简单的方法表现出优于最近的邻居启发式或者线性模型。任何计算复杂的神经方法都没有比已经存在的基于学习的技术更好地始终如一,例如,使用矩阵分解或线性模型。在我们的分析中,我们讨论了当今研究实践中的常见问题,尽管在该主题上发表了许多论文,但显然将该领域导致了一定程度的停滞。(1)

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