研究生: |
潘 磊 Pan, Lei |
---|---|
論文名稱: |
基於用戶-物品原型的連結矩陣分解來做可解釋的協同過濾推薦 UIPC-MF: User-Item Prototype Connection Matrix Factorization for Explainable Collaborative Filtering |
指導教授: |
蘇豐文
Soo, Von-Wun |
口試委員: |
劉吉軒
Liu, Jyi-Shane 胡敏君 Hu, Min-Chun |
學位類別: |
碩士 Master |
系所名稱: |
電機資訊學院 - 資訊工程學系 Computer Science |
論文出版年: | 2023 |
畢業學年度: | 111 |
語文別: | 英文 |
論文頁數: | 52 |
中文關鍵詞: | 推薦系統 、協同過濾 、原型 、可解釋性 、算法偏見 |
外文關鍵詞: | Recommender Systems, Collaborative Filtering, Explainability, Prototype, Bias |
相關次數: | 點閱:3 下載:0 |
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向潛在感興趣的用戶推薦物品是一項重要的商業任務,它面臨著兩個主要的挑戰:準確性和可解釋性。傳統協同過濾算法依賴於對用戶和物品之間大規模交互數據的統計計算,可以達到很高的性能,但解釋能力不足。我們提出了UIPC-MF的方法,它是一種基於原型的矩陣分解的演算法,可建構可解釋的協同過濾推薦。在UIPC-MF中,每位用戶和每個項目都與用戶和項目的原型集相關聯,每個原型用於學習數據集中的社交協同屬性。為了提高可解釋性,UIPC-MF學習了反映用戶和項目原型之間關聯的連接權重。在三個真實數據集上,UIPC-MF在命中率和正規化折扣累計增益的指標表現皆優於最先進的基準演算法,同時也提供了更佳的模型透明度。
Recommending items to potential interested users has been an important commercial task that faces with two main challenges the accuracy and explainability. Collaborative filtering relies on statistical computing on a large scale of interaction data between users and items and can achieve high performance but vaguer explanation power. We propose UIPC-MF, a prototype-based matrix factorization method for explainable collaborative filtering recommendation. In UIPC-MF, both users and items are associated with sets of prototypes, capturing general collaborative attributes. To enhance explainability, UIPC-MF learns connection weights that reflect the association relations between user and item prototypes for recommendation. UIPC-MF outperforms state-of-the-art baseline methods in terms of Hit Ratio and Normalized Discounted Cumulative Gain on three datasets while also providing better transparency.
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