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  • 學位論文

以項目屬性為基礎的協同過濾系統

Tag-based Collaborative Filtering Recommendation System

指導教授 : 陳以錚

摘要


本文中,我們提出了一個基於項目屬性的協同過濾推薦系統,它結合了項目屬性、調合平均權重、分群來推薦項目給用戶。我們的系統使用項目屬性來描述用戶的偏好,以便我們緩解資料稀疏與冷啟動的問題,並做出更廣泛的預測。我們使用調合平均權和分群來調整傳統的預測函數,因為我們認為用戶是否在同一群中,以及用戶的評分次數、共同評分次數,都會與預測結果有關,調合平均權重由兩個用戶間的評分次數、共同評分次數來計算。我們利用CIM當中的分群法對用戶進行分群,分群的結果與調合平均權重分別是為一個權重來調整預測函數。我們的方法可以在用戶間沒有共同評分的項目時也可以計算相似度,這是傳統協同過濾系統所做不到的。

並列摘要


In this article, we propose a tag-based collaborative filtering recommendation system which combines items’ tags, harmonic mean weight and cluster to recommend items to user. Our system uses items’ tags to describe user’s preference, so that we ease up data sparsity problem and cold start problem and make more widely prediction. We use harmonic mean weight and clustering to improve the former prediction function because we think that whether user are in the same cluster or not, and rating, co-rating times are related to predicted results. Harmonic mean weight[11] is calculated by rating times of two user. We utilize clustering method in CIM[12] to group user and see cluster result as a weight in prediction function. Our method can make prediction in some situation that other method cannot predict.

參考文獻


[17] Nie, YanPing, Yang Liu, and Xiaohui Yu. "Weighted aspect-based collaborative filtering." Proceedings of the 37th international ACM SIGIR conference on Research & development in information retrieval. ACM, 2014.
[1] Kabbur, Santosh, and George Karypis. "Nlmf: Nonlinear matrix factorization methods for top-n recommender systems." 2014 IEEE International Conference on Data Mining Workshop. IEEE, 2014. (TOP-N)
[2] Gupta, Jyoti, and Jayant Gadge. "Performance analysis of recommendation system based on collaborative filtering and demographics." Communication, Information & Computing Technology (ICCICT), 2015 International Conference on. IEEE, 2015. (UB+IB)
[3] Kumar, Anuranjan, et al. "Comparison of various metrics used in collaborative filtering for recommendation system." Contemporary Computing (IC3), 2015 Eighth International Conference on. IEEE, 2015.(測量指標)
[4] Ma, Zhaocai, et al. "The SOM Based Improved K-Means Clustering Collaborative Filtering Algorithm in TV Recommendation System." Advanced Cloud and Big Data (CBD), 2014 Second International Conference on. IEEE, 2014. (UBCF)

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