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Main Authors: Li, Yicong, Jin, Shan, Liu, Qi, Wang, Shuo, Liu, Jiaying, Yu, Shuo, Zhang, Qiang, Zhou, Kuanjiu, Xia, Feng
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.18151
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author Li, Yicong
Jin, Shan
Liu, Qi
Wang, Shuo
Liu, Jiaying
Yu, Shuo
Zhang, Qiang
Zhou, Kuanjiu
Xia, Feng
author_facet Li, Yicong
Jin, Shan
Liu, Qi
Wang, Shuo
Liu, Jiaying
Yu, Shuo
Zhang, Qiang
Zhou, Kuanjiu
Xia, Feng
contents In social recommenders, the inherent nonlinearity and opacity of synergistic effects across multiple social networks hinders users from understanding how diverse information is leveraged for recommendations, consequently diminishing explainability. However, existing explainers can only identify the topological information in social networks that significantly influences recommendations, failing to further explain the synergistic effects among this information. Inspired by existing findings that synergistic effects enhance mutual information between inputs and predictions to generate information gain, we extend this discovery to graph data. We quantify graph information gain to identify subgraphs embodying synergistic effects. Based on the theoretical insights, we propose SemExplainer, which explains synergistic effects by identifying subgraphs that embody them. SemExplainer first extracts explanatory subgraphs from multi-view social networks to generate preliminary importance explanations for recommendations. A conditional entropy optimization strategy to maximize information gain is developed, thereby further identifying subgraphs that embody synergistic effects from explanatory subgraphs. Finally, SemExplainer searches for paths from users to recommended items within the synergistic subgraphs to generate explanations for the recommendations. Extensive experiments on three datasets demonstrate the superiority of SemExplainer over baseline methods, providing superior explanations of synergistic effects.
format Preprint
id arxiv_https___arxiv_org_abs_2601_18151
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Explaining Synergistic Effects in Social Recommendations
Li, Yicong
Jin, Shan
Liu, Qi
Wang, Shuo
Liu, Jiaying
Yu, Shuo
Zhang, Qiang
Zhou, Kuanjiu
Xia, Feng
Social and Information Networks
Artificial Intelligence
In social recommenders, the inherent nonlinearity and opacity of synergistic effects across multiple social networks hinders users from understanding how diverse information is leveraged for recommendations, consequently diminishing explainability. However, existing explainers can only identify the topological information in social networks that significantly influences recommendations, failing to further explain the synergistic effects among this information. Inspired by existing findings that synergistic effects enhance mutual information between inputs and predictions to generate information gain, we extend this discovery to graph data. We quantify graph information gain to identify subgraphs embodying synergistic effects. Based on the theoretical insights, we propose SemExplainer, which explains synergistic effects by identifying subgraphs that embody them. SemExplainer first extracts explanatory subgraphs from multi-view social networks to generate preliminary importance explanations for recommendations. A conditional entropy optimization strategy to maximize information gain is developed, thereby further identifying subgraphs that embody synergistic effects from explanatory subgraphs. Finally, SemExplainer searches for paths from users to recommended items within the synergistic subgraphs to generate explanations for the recommendations. Extensive experiments on three datasets demonstrate the superiority of SemExplainer over baseline methods, providing superior explanations of synergistic effects.
title Explaining Synergistic Effects in Social Recommendations
topic Social and Information Networks
Artificial Intelligence
url https://arxiv.org/abs/2601.18151