FINED: Feed Instance-Wise Information Need with Essential and Disentangled Parametric Knowledge from the Past
Kounianhua Du, Jizheng Chen, Jianghao Lin, Menghui Zhu, Bo Chen, Shuai, Li, Yong Yu, Weinan Zhang

TL;DR
This paper introduces FINED, a method that enhances recommendation systems by efficiently storing and retrieving essential, disentangled knowledge from past data to address catastrophic forgetting and improve generalization.
Contribution
FINED proposes a novel knowledge extraction and encoding framework with regularization constraints to improve parametric knowledge bases without increasing size.
Findings
Outperforms baseline models on two datasets
Effectively compresses task-relevant information
Reduces redundancy and noise in knowledge representations
Abstract
Recommender models play a vital role in various industrial scenarios, while often faced with the catastrophic forgetting problem caused by the fast shifting data distribution. To alleviate this problem, a common approach is to reuse knowledge from the historical data. However, preserving the vast and fast-accumulating data is hard, which causes dramatic storage overhead. Memorizing old data through a parametric knowledge base is then proposed, which compresses the vast amount of raw data into model parameters. Despite the flexibility, how to improve the memorization and generalization capabilities of the parametric knowledge base and suit the flexible information need of each instance are challenging. In this paper, we propose FINED to Feed INstance-wise information need with Essential and Disentangled parametric knowledge from past data for recommendation enhancement. Concretely, we…
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Taxonomy
TopicsTopic Modeling
MethodsMemory Network · Balanced Selection · Focus
