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DIFF: Dual Side-Information Filtering and Fusion for Sequential Recommendation

Abstract

Side-information Integrated Sequential Recommendation (SISR) benefits from auxiliary item information to infer hidden user preferences, which is particularly effective for sparse interactions and cold-start scenarios. However, existing studies face two main challenges. (i) They fail to remove noisy signals in item sequence and (ii) they underutilize the potential of side-information integration. To tackle these issues, we propose a novel SISR model, Dual Side-Information Filtering and Fusion (DIFF), which employs frequency-based noise filtering and dual multi-sequence fusion. Specifically, we convert the item sequence to the frequency domain to filter out noisy short-term fluctuations in user interests. We then combine early and intermediate fusion to capture diverse relationships across item IDs and attributes. Thanks to our innovative filtering and fusion strategy, DIFF is more robust in learning subtle and complex item correlations in the sequence. DIFF outperforms state-of-the-art SISR models, achieving improvements of up to 14.1% and 12.5% in Recall@20 and NDCG@20 across four benchmark datasets.

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@article{kim2025_2505.13974,
  title={ DIFF: Dual Side-Information Filtering and Fusion for Sequential Recommendation },
  author={ Hye-young Kim and Minjin Choi and Sunkyung Lee and Ilwoong Baek and Jongwuk Lee },
  journal={arXiv preprint arXiv:2505.13974},
  year={ 2025 }
}
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