Performance comparison of neural and non-neural approaches to session-based recommendation

Malte Ludewig, Noemi Mauro, Sara Latifi, D. Jannach
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引用次数: 86

Abstract

The benefits of neural approaches are undisputed in many application areas. However, today's research practice in applied machine learning---where researchers often use a variety of baselines, datasets, and evaluation procedures---can make it difficult to understand how much progress is actually achieved through novel technical approaches. In this work, we focus on the fast-developing area of session-based recommendation and aim to contribute to a better understanding of what represents the state-of-the-art. To that purpose, we have conducted an extensive set of experiments, using a variety of datasets, in which we benchmarked four neural approaches that were published in the last three years against each other and against a set of simpler baseline techniques, e.g., based on nearest neighbors. The evaluation of the algorithms under the exact same conditions revealed that the benefits of applying today's neural approaches to session-based recommendations are still limited. In the majority of the cases, and in particular when precision and recall are used, it turned out that simple techniques in most cases outperform recent neural approaches. Our findings therefore point to certain major limitations of today's research practice. By sharing our evaluation framework publicly, we hope that some of these limitations can be overcome in the future.
基于会话的推荐中神经和非神经方法的性能比较
神经方法的好处在许多应用领域是无可争议的。然而,今天在应用机器学习的研究实践中,研究人员经常使用各种基线、数据集和评估程序,这使得很难理解通过新颖的技术方法实际取得了多少进展。在这项工作中,我们专注于快速发展的基于会议的推荐领域,旨在更好地理解什么代表了最先进的技术。为此,我们进行了一系列广泛的实验,使用了各种各样的数据集,在这些实验中,我们对过去三年中发表的四种神经方法进行了基准测试,并对一组更简单的基线技术进行了基准测试,例如,基于最近邻。在完全相同的条件下对算法的评估表明,将今天的神经方法应用于基于会话的推荐的好处仍然有限。在大多数情况下,特别是当使用准确率和召回率时,结果表明,在大多数情况下,简单的技术比最近的神经方法表现得更好。因此,我们的发现指出了当今研究实践的某些主要局限性。通过公开分享我们的评估框架,我们希望在未来能够克服其中的一些限制。
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