MI-DPG: Decomposable Parameter Generation Network Based on Mutual Information for Multi-Scenario Recommendation
Wenzhuo Cheng, Ke Ding, Xin Dong, Yong He, Liang Zhang, Linjian Mo

TL;DR
This paper introduces MI-DPG, a novel multi-scenario CVR prediction model that efficiently generates scenario-specific parameters using mutual information regularization to improve diversity and performance across different recommendation scenarios.
Contribution
The paper proposes a decomposable parameter generation network with mutual information regularization for multi-scenario recommendation, enhancing diversity and efficiency.
Findings
Outperforms previous multi-scenario recommendation models on real-world datasets.
Effectively models scenario-specific diversity with mutual information regularization.
Achieves higher prediction accuracy with lower parameter cost.
Abstract
Conversion rate (CVR) prediction models play a vital role in recommendation and advertising systems. Recent research on multi-scenario recommendation shows that learning a unified model to serve multiple scenarios is effective for improving overall performance. However, it remains challenging to improve model prediction performance across scenarios at low model parameter cost, and current solutions are hard to robustly model multi-scenario diversity. In this paper, we propose MI-DPG for the multi-scenario CVR prediction, which learns scenario-conditioned dynamic model parameters for each scenario in a more efficient and effective manner. Specifically, we introduce an auxiliary network to generate scenario-conditioned dynamic weighting matrices, which are obtained by combining decomposed scenario-specific and scenario-shared low-rank matrices with parameter efficiency. For each scene,…
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Taxonomy
TopicsRecommender Systems and Techniques · Advanced Technologies in Various Fields · Explainable Artificial Intelligence (XAI)
