Dimension Independent Mixup for Hard Negative Sample in Collaborative Filtering

Wu, Xi, Yang, Liangwei, Gong, Jibing, Zhou, Chao, Lin, Tianyu, Liu, Xiaolong, Yu, Philip S.

arXiv.org Artificial Intelligence 

To address this In the contemporary era of voluminous data [17], individuals are limitation, we propose Dimension Independent Mixup for Hard inundated with an incessant influx of content generated by the internet. Negative Sampling (DINS), which is the first Area-wise sampling To address the issue of information overload, Recommender method for training CF-based models. DINS comprises three modules: Systems (RecSys) are employed to assist users in locating the most Hard Boundary Definition, Dimension Independent Mixup, relevant information and are increasingly pivotal in online services and Multi-hop Pooling. Experiments with real-world datasets on such as news feed [30], music suggestion [5], and online shopping both matrix factorization and graph-based models demonstrate [9]. Collaborative filtering (CF) [13], a highly effective method that DINS outperforms other negative sampling methods, establishing that predicts a user's preference based on their past interactions, is its effectiveness and superiority. Our work contributes a new widely employed. The latest CF-based models [10, 28] incorporate perspective, introduces Area-wise sampling, and presents DINS historical interactions into condensed user/item vectors and predict as a novel approach that achieves state-of-the-art performance for a user's preference for each item based on the dot product of negative sampling.

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