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Introduction
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Official website for International Workshop on Deep Learning Practice for High-Dimensional Sparse Data with RecSys 2023
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Introduction | dlp2023 Home Calls Organization Beijing Event Schedule Accepted Contributions International Workshop on Deep Learning Practice for High-Dimensional Sparse Data Sept. 18 - 22, 2023, Singapore RecSys 2023 Introduction In the increasingly digitalized world, recommender systems play a crucial role in processing, understanding, and leveraging vast amounts of data collected from the Internet. By accurately modeling user interests and intentions based on their behavioral data, recommender systems can substantially improve user experiences, drive user engagement, and ultimately boost revenue. Recently, we have witnessed that deep learning-based approaches have been widely applied to empower recommender systems by better leveraging the massive data. However, the data utilized in recommender systems typically comprises a large volume of users, items, and user-generated tabular data, which is high-dimensional and extremely sparse. This contrasts with dense d...
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