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TV-Rec: Time-Variant Convolutional Filter for Sequential Recommendation

About

Recently, convolutional filters have been increasingly adopted in sequential recommendation for their ability to capture local sequential patterns. However, most of these models complement convolutional filters with self-attention. This is because convolutional filters alone, generally fixed filters, struggle to capture global interactions necessary for accurate recommendation. We propose Time-Variant Convolutional Filters for Sequential Recommendation (TV-Rec), a model inspired by graph signal processing, where time-variant graph filters capture position-dependent temporal variations in user sequences. By replacing both fixed kernels and self-attention with time-variant filters, TV-Rec achieves higher expressive power and better captures complex interaction patterns in user behavior. This design not only eliminates the need for self-attention but also reduces computation while accelerating inference. Extensive experiments on six public benchmarks show that TV-Rec outperforms state-of-the-art baselines by an average of 7.49%.

Yehjin Shin, Jeongwhan Choi, Seojin Kim, Noseong Park• 2025

Related benchmarks

TaskDatasetResultRank
Sequential RecommendationML 1M
NDCG@100.1886
130
Sequential RecommendationBeauty
Hit Rate @ 2014.03
43
Sequential RecommendationSports
HR@54.31
39
Sequential RecommendationYelp
HR@52.84
31
Sequential RecommendationFourSquare
HR@200.0323
28
Sequential RecommendationLastFM
HR@2012.02
17
Sequential RecommendationML1M
HR@2040.79
15
Sequential RecommendationXLong
NDCG@1040.71
7
Sequential RecommendationSports
Hit Rate@208.8
4
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