HAS IT REALLY IMPROVED? KNOWLEDGE GRAPH BASED SEPARATION AND FUSION FOR RECOMMENDATIONDownload PDF

Published: 01 Feb 2023, Last Modified: 13 Feb 2023Submitted to ICLR 2023Readers: Everyone
Keywords: recommendation, knowledge-graph, graph neural network
Abstract: In this paper we study the knowledge graph (KG) based recommendation systems. We first design the metric to study the relationship between different SOTA models and find that the current recommendation systems based on knowledge graph have poor ability to retain collaborative filtering signals, and higher-order connectivity would introduce noises. In addition, we explore the collaborative filtering recommendation method using GNN and design the experiment to show that the information learned between GNN models stacked with different layers is different, which provides the explanation for the unstable performance of GNN stacking different layers from a new perspective. According to the above findings, we first design the model-agnostic Cross-Layer Fusion Mechanism without any parameters to improve the performance of GNN. Experimental results on three datasets for collaborative filtering show that Cross-Layer Fusion Mechanism is effective for improving GNN performance. Then we design three independent signal extractors to mine the data at three different perspectives and train them separately. Finally, we use the signal fusion mechanism to fuse different signals. Experimental results on three datasets that introduce KG show that our KGSF achieves significant improvements over current SOTA KG based recommendation methods and the results are interpretable.
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