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This study introduces a lightweight multi-interest retrieval network (MIRN) to accurately capture diverse user interests for better recommendations. MIRN improves retrieval accuracy and efficiency by representing multiple user interests (UMI) effectively.

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Area of Science:

  • Computer Science
  • Artificial Intelligence
  • Information Retrieval

Background:

  • Vector-based retrieval is common for recommendations but struggles with representing diverse user interests using a single vector.
  • Existing methods often neglect model scale and speed, leading to high computational costs and inefficient item retrieval due to high-dimensional vectors.

Purpose of the Study:

  • To propose a novel lightweight multi-interest retrieval network (MIRN) for efficient and accurate processing of users' multiple interests.
  • To address the limitations of single-vector representations and improve the accuracy and diversity of item retrieval.

Main Methods:

  • Incorporated sequence-to-interest Expectation Maximization (EM) routing to handle multiple user interests.
  • Utilized Capsule networks for multi-interest representation learning, clustering multiple Capsule vectors from user behavior sequences.
  • Introduced a composite capsule clustering strategy to reduce model scale and a Capsule-aware module with attention for adaptive learning of user representations.

Main Results:

  • The proposed MIRN significantly outperforms state-of-the-art approaches in item retrieval.
  • Demonstrated substantial improvements in metric evaluations compared to existing methods.
  • Achieved higher accuracy and diversity in item retrieval by effectively representing multiple user interests.

Conclusions:

  • MIRN offers an effective and lightweight solution for multi-interest retrieval in recommendation systems.
  • The novel approach enhances both the accuracy and efficiency of item retrieval.
  • The use of Capsule networks and EM routing provides a robust framework for capturing complex user preferences.