The paper proposes a Diversified Category-aware Attentive framework called DCA-SBRS that can be used as a plugin to improve the diversity performance of existing accuracy-oriented session-based recommender systems (SBRSs) without significantly deteriorating their recommendation accuracy.
The key components of DCA-SBRS are:
Model-agnostic Diversity-oriented Loss (MDL) function: This loss function works with the accuracy-oriented loss (e.g., cross-entropy loss) to enhance the diversity of the recommended list by leveraging the items' category information and the estimated item scores from the given SBRS.
Non-invasive Category-aware Attention (NCA) mechanism: This mechanism utilizes the category information as directional guidance to replace the normal attention mechanism widely used in existing accuracy-oriented SBRSs. This helps maintain the recommendation accuracy while improving diversity.
Extensive experiments on three real-world datasets show that DCA-SBRS can help existing SOTA SBRSs achieve extraordinary performance in terms of diversity (e.g., 74.1% increase on ILD@10) and comprehensive performance (e.g., 52.3% lift on F-score@10), without significantly deteriorating recommendation accuracy compared to SOTA diversified SBRSs.
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arxiv.org
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