4.5 Article

Learning to Learn a Cold-start Sequential Recommender

Journal

ACM TRANSACTIONS ON INFORMATION SYSTEMS
Volume 40, Issue 2, Pages -

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3466753

Keywords

Cold-start recommendation; meta-learning; graph representation; sequential recommendation

Funding

  1. National Key R&D Program of China [2018AAA0100604]
  2. Fundamental Research Funds for the Central Universities [2021RC217]
  3. Beijing Natural Science Foundation [JQ20023]
  4. National Natural Science Foundation of China [61632002, 61832004, 62036012, 61720106006]

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Cold-start recommendation is an urgent problem in online applications, and this study proposes a meta-learning-based cold-start sequential recommendation framework called metaCSR. It addresses the user cold-start problem through components such as information diffusion, capturing temporal dependencies, and meta-learning, demonstrating good performance and generalization.
The cold-start recommendation is an urgent problem in contemporary online applications. It aims to provide users whose behaviors are literally sparse with as accurate recommendations as possible. Many data-driven algorithms, such as the widely used matrix factorization, underperform because of data sparseness. This work adopts the idea of meta-learning to solve the user's cold-start recommendation problem. We propose a meta-learning-based cold-start sequential recommendation framework called metaCSR, including three main components: Diffusion Representer for learning better user/item embedding through information diffusion on the interaction graph; Sequential Recommender for capturing temporal dependencies of behavior sequences; and Meta Learner for extracting and propagating transferable knowledge of prior users and learning a good initialization for new users. metaCSR holds the ability to learn the common patterns from regular users' behaviors and optimize the initialization so that the model can quickly adapt to new users after one or a few gradient updates to achieve optimal performance. The extensive quantitative experiments on three widely used datasets show the remarkable performance of metaCSR in dealing with the user cold-start problem. Meanwhile, a series of qualitative analysis demonstrates that the proposed metaCSR has good generalization.

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