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Comprehensive Empirical Evaluation of Deep Learning Approaches for Session-Based Recommendation in E-Commerce
Authors:Mohamed Maher  Perseverance Munga Ngoy  Aleksandrs Rebriks  Cagri Ozcinar  Josue Cuevas  Rajasekhar Sanagavarapu  Gholamreza Anbarjafari
Affiliation:1.iCV Lab, Institute of Technology, University of Tartu, 51009 Tartu, Estonia;2.Machine Learning Group, Big Data Department, Rakuten Inc., Tokyo 158-0094, Japan;3.PwC Advisory, 00180 Helsinki, Finland;4.Institute of Higher Education, Yildiz Technical University, Yildiz, Beşiktaş District, Istanbul 34349, Turkey
Abstract:Boosting the sales of e-commerce services is guaranteed once users find more items matching their interests in a short amount of time. Consequently, recommendation systems have become a crucial part of any successful e-commerce service. Although various recommendation techniques could be used in e-commerce, a considerable amount of attention has been drawn to session-based recommendation systems in recent years. This growing interest is due to security concerns over collecting personalized user behavior data, especially due to recent general data protection regulations. In this work, we present a comprehensive evaluation of the state-of-the-art deep learning approaches used in the session-based recommendation. In session-based recommendation, a recommendation system counts on the sequence of events made by a user within the same session to predict and endorse other items that are more likely to correlate with their preferences. Our extensive experiments investigate baseline techniques (e.g., nearest neighbors and pattern mining algorithms) and deep learning approaches (e.g., recurrent neural networks, graph neural networks, and attention-based networks). Our evaluations show that advanced neural-based models and session-based nearest neighbor algorithms outperform the baseline techniques in most scenarios. However, we found that these models suffer more in the case of long sessions when there exists drift in user interests, and when there are not enough data to correctly model different items during training. Our study suggests that using the hybrid models of different approaches combined with baseline algorithms could lead to substantial results in session-based recommendations based on dataset characteristics. We also discuss the drawbacks of current session-based recommendation algorithms and further open research directions in this field.
Keywords:session-based recommendation   information systems   deep learning   evaluation   E-commerce
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