| 研究生: |
連國佑 Guo-You Lian |
|---|---|
| 論文名稱: |
電腦遊戲評量之擇優推薦系統 A selected recommender system based on computer game evaluation |
| 指導教授: |
薛義誠
Yih-Chearng Shiue |
| 口試委員: | |
| 學位類別: |
碩士 Master |
| 系所名稱: |
管理學院 - 資訊管理學系 Department of Information Management |
| 論文出版年: | 2020 |
| 畢業學年度: | 108 |
| 語文別: | 中文 |
| 論文頁數: | 66 |
| 中文關鍵詞: | 推薦系統 、雅卡爾相似度 、矩陣分解 、協同過濾 、混合式推薦系統 |
| 相關次數: | 點閱:7 下載:0 |
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Steam平台內,擁有超過3萬多個遊戲,這些眾多推出的遊戲,而難以選擇符合自身喜好的遊戲,因此消費者若要尋找符合興趣喜好的遊戲,則需花費更多的時間進行查找。若能開發有效的推薦系統,更能使消費者容易觸及到符合各自喜好的遊戲,吸引消費者進行消費。
本研究以steam平台資料集,結合傳統以使用者為基礎(user-based)推薦方式如:以雅卡爾相似度進行評分預測的協同過濾方法,以及以模型為基礎(model-based)推薦方式如:奇異值分解(SVD)、非負矩陣分解(NMF)兩方法,設計實作一電腦遊戲評量之擇優推薦系統。
藉由將原始資料集進行資料前處理,組合成使用者評分矩陣,以符合後續研究使用,再將評分矩陣對兩模型進行運算與訓練,並以擇優的方式將兩模型的預測進行不同程度的結合與實驗,產生混合的推薦結果。實驗一提出一擇優方式,在兩模型間選擇較好的組合,以此對使用者進行推薦。而在實驗二,改進了實驗一的擇優方式,對原先的擇優方式與判斷標準進行改良,發現實驗二的結果與實驗一整體結果相差不大,然實驗二所提出之方式卻更能讓使用者接觸到那些未曾接觸的遊戲。
here are more than 30,000 games on the Steam platform. These numerous games make it difficult for users to choose games that match their own preferences. Therefore, user need to spend more time to find games that match their preferences. If we can develop an effective recommendation system, user can easily reach games which users are interested in and also attract user to purchase.
This study uses the steam platform dataset, combined with traditional user-based and model-based recommendation methods such as singular value decomposition (SVD) and non-negative matrix decomposition (NMF) method, designed and implement a selected recommender system based on computer game evaluation.
For the use of research, we pre-processing the original data set, combining into user scoring matrix. Then the scoring matrix is used to train the two models, and the predictions of the two models are combined and selected optimized by different degrees of criteria. The last combined predictions produces mixed recommendation results. In the first experiment, we propose a method of choosing the best combination between the two models, so as to recommend the user. In the second experiment, we improved the method of first experiment, improved the original method and standard, and found that the result of second experiment was not much different from the overall result of first experiment, but the method proposed in second experiment allows users to access games that have not been touched.
參考文獻
Albatayneh, N. A., Ghauth, K. I., & Chua, F.-F. (2018). Utilizing learners’ negative ratings in semantic content-based recommender system for e-learning forum. Journal of Educational Technology & Society, 21(1), 112-125.
Anwar, T., & Uma, V. (2019). MRec-CRM: Movie Recommendation based on Collaborative Filtering and Rule Mining Approach. Paper presented at the 2019 International Conference on Smart Structures and Systems (ICSSS).
Balabanović, M., & Shoham, Y. (1997). Fab: content-based, collaborative recommendation. Communications of the ACM, 40(3), 66-72.
Brand, M. (2002). Incremental singular value decomposition of uncertain data with missing values. Paper presented at the European Conference on Computer Vision.
Burke, R. (2002). Hybrid recommender systems: Survey and experiments. User modeling and user-adapted interaction, 12(4), 331-370.
Chai, T., & Draxler, R. R. (2014). Root mean square error (RMSE) or mean absolute error (MAE)? GMDD, 7(1), 1525-1534.
Cueto, P. F., Roet, M., & Słowik, A. (2019). Completing partial recipes using item-based collaborative filtering to recommend ingredients. arXiv preprint arXiv:1907.12380.
Gu, Q., Zhou, J., & Ding, C. (2010). Collaborative filtering: Weighted nonnegative matrix factorization incorporating user and item graphs. Paper presented at the Proceedings of the 2010 SIAM international conference on data mining.
He, C., Li, H., Fei, X., Tang, Y., & Zhu, J. (2015). A topic community-based method for friend recommendation in online social networks via joint nonnegative matrix factorization. Paper presented at the 2015 Third International Conference on Advanced Cloud and Big Data.
Ji, H., Li, J., Ren, C., & He, M. (2013). Hybrid collaborative filtering model for improved recommendation. Paper presented at the Proceedings of 2013 IEEE International Conference on Service Operations and Logistics, and Informatics.
Kang, W.-C., & McAuley, J. (2018). Self-attentive sequential recommendation. Paper presented at the 2018 IEEE International Conference on Data Mining (ICDM).
Kaššák, O., Kompan, M., & Bieliková, M. (2016). Personalized hybrid recommendation for group of users: Top-N multimedia recommender. Information Processing & Management, 52(3), 459-477.
Kim, J. K., & Cho, Y. H. (2003). Using Web usage mining and SVD to improve e-commerce recommendation quality. Paper presented at the Pacific Rim International Workshop on Multi-Agents.
Lee, D. D., & Seung, H. S. (2001). Algorithms for non-negative matrix factorization. Paper presented at the Advances in neural information processing systems.
Lekakos, G., & Caravelas, P. (2008). A hybrid approach for movie recommendation. Multimedia tools and applications, 36(1-2), 55-70.
Nguyen, H. V., & Bai, L. (2010). Cosine similarity metric learning for face verification. Paper presented at the Asian conference on computer vision.
Pal, A., Parhi, P., & Aggarwal, M. (2017). An improved content based collaborative filtering algorithm for movie recommendations. Paper presented at the 2017 tenth international conference on contemporary computing (IC3).
Pathak, A., Gupta, K., & McAuley, J. (2017). Generating and personalizing bundle recommendations on steam. Paper presented at the Proceedings of the 40th International ACM SIGIR Conference on Research and Development in Information Retrieval.
Pazzani, M. J., & Billsus, D. (2007). Content-based recommendation systems. In The adaptive web (pp. 325-341): Springer.
Sano, N., Machino, N., Yada, K., & Suzuki, T. (2015). Recommendation system for grocery store considering data sparsity. Procedia Computer Science, 60, 1406-1413.
Su, X., Greiner, R., Khoshgoftaar, T. M., & Zhu, X. (2007). Hybrid collaborative filtering algorithms using a mixture of experts. Paper presented at the IEEE/WIC/ACM International Conference on Web Intelligence (WI'07).
Sunitha, M., & Adilakshmi, T. (2018). Music Recommendation System with User-Based and Item-Based Collaborative Filtering Technique, Singapore.
Tewari, A. S., Kumar, A., & Barman, A. G. (2014). Book recommendation system based on combine features of content based filtering, collaborative filtering and association rule mining. Paper presented at the 2014 IEEE International Advance Computing Conference (IACC).
Thorat, P. B., Goudar, R., & Barve, S. (2015). Survey on collaborative filtering, content-based filtering and hybrid recommendation system. International Journal of Computer Applications, 110(4), 31-36.
Vaidhehi, V., & Suchithra, R. (2019). An Enhanced Approach Using Collaborative Filtering For Generating Under Graduate Program Recommendations. Paper presented at the 2019 Second International Conference on Advanced Computational and Communication Paradigms (ICACCP).
Vaz, P. C., Martins de Matos, D., Martins, B., & Calado, P. (2012). Improving a hybrid literary book recommendation system through author ranking. Paper presented at the Proceedings of the 12th ACM/IEEE-CS joint conference on Digital Libraries.
Verstrepen, K., Bhaduriy, K., Cule, B., & Goethals, B. (2017). Collaborative filtering for binary, positiveonly data. ACM SIGKDD Explorations Newsletter, 19(1), 1-21.
Volkovs, M., & Yu, G. W. (2015). Effective latent models for binary feedback in recommender systems. Paper presented at the Proceedings of the 38th international ACM SIGIR conference on research and development in information retrieval.
Wan, M., & McAuley, J. (2018). Item recommendation on monotonic behavior chains. Paper presented at the Proceedings of the 12th ACM Conference on Recommender Systems.
Wang, L., Meng, X., Zhang, Y., & Shi, Y. (2010). New approaches to mood-based hybrid collaborative filtering. Paper presented at the Proceedings of the workshop on context-aware movie recommendation.
Willmott, C. J., & Matsuura, K. (2005). Advantages of the mean absolute error (MAE) over the root mean square error (RMSE) in assessing average model performance. Climate research, 30(1), 79-82.
Zhang, S., Yao, L., & Xu, X. (2017). AutoSVD++ An Efficient Hybrid Collaborative Filtering Model via Contractive Auto-encoders. Paper presented at the Proceedings of the 40th International ACM SIGIR conference on Research and Development in Information Retrieval.