DocumentCode :
3339240
Title :
A Study on the Improved Collaborative Filtering Algorithm for Recommender System
Author :
Lee, Hee Choon ; Lee, Seok Jun ; Chung, Young Jun
Author_Institution :
Sang-ji Univ., Wonju
fYear :
2007
fDate :
20-22 Aug. 2007
Firstpage :
297
Lastpage :
304
Abstract :
The purpose of this study is to suggest an algorithm of a recommender system to increase the customer´s desire of purchasing, by automatically recommending goods transacted on e-commerce to customers. The recommender system has various filtering techniques according to the methods of recommendation. In this study, researchers study collaborative filtering among recommender systems. The accuracy of customer´s preference prediction is compared with the accuracy of customer´s preference prediction of the existing collaborative filtering algorithm, and the suggested new algorithm. At first, the accuracy of a customer´s preference prediction of neighborhood based algorithm as automated collaborative filtering algorithm firstly & correspondence mean algorithm, is compared. It is analyzed by using MovieLens1 100K dataset and I Million dataset in order to experiment with the prediction accuracy of the each algorithm. For similarity weight used in both algorithms it is discovered Pearson´s correlation coefficient and vector similarity which are generally used were utilized, and as a result of analysis, we show that the accuracy of the customer´s preference prediction of correspondence mean algorithm is superior. Pearson´s correlation coefficient and vector similarity used in two algorithms are calculated by using the preference rating of two customers´ co-rated movies, and it shows that similarity weight is overestimated, where the number of co-rated movies is small. Therefore, it is intended to increase the accuracy of customer´s preference prediction through expanding the effect of the number of the existing co-rated movies.
Keywords :
correlation methods; electronic commerce; groupware; information filtering; information filters; Pearson correlation coefficient; collaborative filtering algorithm; customer preference prediction; e-commerce; recommender system; vector similarity; Accuracy; Algorithm design and analysis; Cities and towns; Collaboration; Collaborative work; Conference management; Filtering algorithms; Motion pictures; Recommender systems; Software engineering;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Software Engineering Research, Management & Applications, 2007. SERA 2007. 5th ACIS International Conference on
Conference_Location :
Busan
Print_ISBN :
0-7695-2867-8
Type :
conf
DOI :
10.1109/SERA.2007.33
Filename :
4296951
Link To Document :
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