We use cookies to improve your experience with our site.
Liu PS, Zheng LN, Chen JL et al. Enhancing recommendation with denoising auxiliary task. JOURNAL OFCOMPUTER SCIENCE AND TECHNOLOGY 39(5): 1123−1137 Sept. 2024. DOI: 10.1007/s11390-024-4069-5.
Citation: Liu PS, Zheng LN, Chen JL et al. Enhancing recommendation with denoising auxiliary task. JOURNAL OFCOMPUTER SCIENCE AND TECHNOLOGY 39(5): 1123−1137 Sept. 2024. DOI: 10.1007/s11390-024-4069-5.

Enhancing Recommendation with Denoising Auxiliary Task

  • The historical interaction sequences of users play a crucial role in training recommender systems that can accurately predict user preferences. However, due to the arbitrariness of user behaviors, the presence of noise in these sequences poses a challenge to predicting their next actions in recommender systems. To address this issue, our motivation is based on the observation that training noisy sequences and clean sequences (sequences without noise) with equal weights can impact the performance of the model. We propose the novel self-supervised Auxiliary Task Joint Training (ATJT) method aimed at more accurately reweighting noisy sequences in recommender systems. Specifically, we strategically select subsets from users’ original sequences and perform random replacements to generate artificially replaced noisy sequences. Subsequently, we perform joint training on these artificially replaced noisy sequences and the original sequences. Through effective reweighting, we incorporate the training results of the noise recognition model into the recommender model. We evaluate our method on three datasets using a consistent base model. Experimental results demonstrate the effectiveness of introducing the self-supervised auxiliary task to enhance the base model’s performance.
  • loading

Catalog

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return