TL;DR
This paper introduces Neural Collaborative Reasoning, a framework that combines representation learning and logical reasoning to improve recommendation systems by enabling cognitive reasoning capabilities.
Contribution
It proposes a modular neural architecture that learns logical operations for reasoning, bridging neural networks with symbolic logic in collaborative filtering.
Findings
Outperforms shallow, deep, and reasoning models on real-world datasets.
Integrates logical reasoning with neural networks for recommendation.
Demonstrates the effectiveness of cognitive reasoning in collaborative filtering.
Abstract
Existing Collaborative Filtering (CF) methods are mostly designed based on the idea of matching, i.e., by learning user and item embeddings from data using shallow or deep models, they try to capture the associative relevance patterns in data, so that a user embedding can be matched with relevant item embeddings using designed or learned similarity functions. However, as a cognition rather than a perception intelligent task, recommendation requires not only the ability of pattern recognition and matching from data, but also the ability of cognitive reasoning in data. In this paper, we propose to advance Collaborative Filtering (CF) to Collaborative Reasoning (CR), which means that each user knows part of the reasoning space, and they collaborate for reasoning in the space to estimate preferences for each other. Technically, we propose a Neural Collaborative Reasoning (NCR) framework to…
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