Journals
  Publication Years
  Keywords
Search within results Open Search
Please wait a minute...
For Selected: Toggle Thumbnails
Sequential recommendation based on hierarchical filter and temporal convolution enhanced self-attention network
Xingyao YANG, Hongtao SHEN, Zulian ZHANG, Jiong YU, Jiaying CHEN, Dongxiao WANG
Journal of Computer Applications    2024, 44 (10): 3090-3096.   DOI: 10.11772/j.issn.1001-9081.2023091352
Abstract167)   HTML3)    PDF (1877KB)(438)       Save

Aiming at the problem of noise arising from user’s unexpected interactions in practical recommendation scenarios and the challenge of capturing short-term demand biases due to the dispersed attention in self-attention mechanism, a model namely FTARec (sequential Recommendation based on hierarchical Filter and Temporal convolution enhanced self-Attention network) was proposed. Firstly, hierarchical filter was used to filter noise in the original data. Then, user embeddings were obtained by combining temporal convolution enhanced self-attention networks with decoupled hybrid location encoding. The deficiencies in modeling short-term dependencies among items were supplemented by enhancing the self-attention network with temporal convolution in this process. Finally, contrastive learning was incorporated to refine user embeddings and predictions were made based on the final user embeddings. Compared to existing sequential recommendation models such as the Self-Attentive Sequential Recommendation (SASRec) and the Filter-enhanced Multi-Layer Perceptron approach for sequential Recommendation (FMLP-Rec), FTARec achieves higher Hit Rate (HR) and Normalized Discounted Cumulative Gain (NDCG) on three publicly available datasets: Beauty, Clothing, and Sports. Compared with the suboptimal DuoRec, FTARec has the HR@10 increased by 7.91%, 13.27%, 12.84%, and the NDCG@10 increased by 5.52%, 8.33%, 9.88%, respectively, verifying the effectiveness of the proposed model.

Table and Figures | Reference | Related Articles | Metrics