IRAIFeb 28, 2022

Filter-enhanced MLP is All You Need for Sequential Recommendation

arXiv:2202.13556v1420 citationsHas Code
Originality Incremental advance
AI Analysis

This work addresses noise overfitting in sequential recommendation for online platforms, presenting an incremental improvement with a simpler architecture.

The paper tackles the problem of noise in logged user behavior data for sequential recommendation by proposing FMLP-Rec, an all-MLP model with learnable filters, which outperforms competitive Transformer-based models on eight real-world datasets.

Recently, deep neural networks such as RNN, CNN and Transformer have been applied in the task of sequential recommendation, which aims to capture the dynamic preference characteristics from logged user behavior data for accurate recommendation. However, in online platforms, logged user behavior data is inevitable to contain noise, and deep recommendation models are easy to overfit on these logged data. To tackle this problem, we borrow the idea of filtering algorithms from signal processing that attenuates the noise in the frequency domain. In our empirical experiments, we find that filtering algorithms can substantially improve representative sequential recommendation models, and integrating simple filtering algorithms (eg Band-Stop Filter) with an all-MLP architecture can even outperform competitive Transformer-based models. Motivated by it, we propose \textbf{FMLP-Rec}, an all-MLP model with learnable filters for sequential recommendation task. The all-MLP architecture endows our model with lower time complexity, and the learnable filters can adaptively attenuate the noise information in the frequency domain. Extensive experiments conducted on eight real-world datasets demonstrate the superiority of our proposed method over competitive RNN, CNN, GNN and Transformer-based methods. Our code and data are publicly available at the link: \textcolor{blue}{\url{https://github.com/RUCAIBox/FMLP-Rec}}.

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