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http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/99604| Title: | 以關聯圖卷積機制建構可解釋知識感知循環網絡於推薦系統 Explainable Knowledge-aware Recurrent Networks with Relational Graph Convolution Mechanism for Recommendation |
| Authors: | 許智堯 Chih-Yao Hsu |
| Advisor: | 李家岩 Chia-Yen Lee |
| Keyword: | 圖結構推薦,可解釋推薦,圖神經網路,知識圖譜,路徑推理,混合圖結構模型, Graph-based Recommendation,Explainable Recommendation,Graph Neural Networks,Knowledge Graph,Path Reasoning,Hybrid Graph-based Model, |
| Publication Year : | 2025 |
| Degree: | 碩士 |
| Abstract: | 本研究提出一套混合式圖推薦模型,結合了嵌入式方法與路徑式方法,以彌補兩者各自的限制。嵌入式方法擅長透過鄰近聚合捕捉語意擴散,但缺乏可解釋性;路徑式方法則能執行多跳推理,然而易受到路徑爆炸與訓練與推論分布不一致的影響。為整合兩者優勢,本研究採用關聯圖卷積網路(R-GCN),產生具語境化的實體與關係嵌入,並用以引導路徑選擇與序列建模。此外,設計一組自訂損失函數,透過全域關係率(Global Relationship Rate)平衡任務導向與語意擴散的學習需求。為解決路徑過載問題並對齊訓練與推論分布,本研究提出一套以嵌入為基礎的可信度評分機制作為路徑選擇模組。實驗結果顯示,在 MovieLens 與 Amazon Musical Instruments 資料集上,本模型於 precision@10 與 NDCG@10 指標皆穩定優於各項基線方法,且在弱勢使用者的推薦品質(CVAR@10)上也有顯著改善。此外,由於路徑序列直接參與預測過程,本模型天生具備可解釋性,有助於提升推薦透明度與使用者信任。 This study proposes a hybrid model for graph-based recommendation that integrates embedding-based and path-based approaches to address their respective limitations. While the former captures diffusive semantics via neighborhood aggregation but lacks interpretability, the latter enables multi-hop reasoning yet suffers from path explosion and train-inference distribution mismatch. To bridge these gaps, we incorporate a Relational Graph Convolutional Network (R-GCN) to generate contextualized entity and relation embeddings, which guide both path selection and sequential modeling. A custom loss function balances task-specific and global relationship learning through the Global Relationship Rate. To mitigate the path overload and align path distributions between training and inference, we design a path selection module based on embedding-informed credibility scores. Experiments on MovieLens and Amazon Musical Instruments datasets show that our model consistently outperforms baselines in precision@10 and NDCG@10, while also improving fairness for the worst-served users as measured by CVAR@10. Furthermore, as path sequences are used directly in prediction, the model inherently provides interpretable recommendations, enhancing transparency and trust. |
| URI: | http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/99604 |
| DOI: | 10.6342/NTU202503326 |
| Fulltext Rights: | 未授權 |
| metadata.dc.date.embargo-lift: | N/A |
| Appears in Collections: | 資訊管理學系 |
Files in This Item:
| File | Size | Format | |
|---|---|---|---|
| ntu-113-2.pdf Restricted Access | 1.75 MB | Adobe PDF |
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