Data Augmentation Strategies for Improving Sequential Recommender Systems
Joo-yeong Song, Bongwon Suh

TL;DR
This paper demonstrates that applying data augmentation strategies to sequential recommender systems enhances their performance, especially with limited training data, by improving model generalization and achieving competitive results.
Contribution
It introduces simple data augmentation strategies for sequential recommender systems and shows their effectiveness in improving performance with small datasets.
Findings
Data augmentation improves model generalization.
Strategies significantly boost performance with limited data.
Proposed methods are competitive with existing strategies.
Abstract
Sequential recommender systems have recently achieved significant performance improvements with the exploitation of deep learning (DL) based methods. However, although various DL-based methods have been introduced, most of them only focus on the transformations of network structure, neglecting the importance of other influential factors including data augmentation. Obviously, DL-based models require a large amount of training data in order to estimate parameters well and achieve high performances, which leads to the early efforts to increase the training data through data augmentation in computer vision and speech domains. In this paper, we seek to figure out that various data augmentation strategies can improve the performance of sequential recommender systems, especially when the training dataset is not large enough. To this end, we propose a simple set of data augmentation…
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Taxonomy
TopicsRecommender Systems and Techniques · Machine Learning and Data Classification · Image Retrieval and Classification Techniques
