Title :
An Application of Recommender System with Mingle-TopN Algorithm on B2B Platform
Author :
Pingsong Xia ; Jieqin Xiao ; Chen Shu
Author_Institution :
R & D Dept. of Bus. Intell., Focus Technol. Co., Ltd., Nanjing, China
Abstract :
Personalized Recommender systems have been widely used on many large websites in various business fields to tackle with problems like excessive information and information overload. For the purpose of improving user experience and stickiness, this study proposes a personalized Recommender system for facilitating the users in the B2B ECommerce platform to retrieve and extract information. The proposed Mingle-TopN hybrid Recommendation algorithm combines collaborate filtering and content-based filtering, to improve the effectiveness and efficiency of the recommendation. The Mean Absolute Error (MAE) is used as the metric to evaluate the developed Recommender system. Results show that: when the number of items exceeds 600, the proposed method trends to achieve a stable performance with a MAE of 0.73. These experiments validate that the improved recommendation algorithm is better than the Pearson-TopN and Cos-TopN by 10.61 % and 13.45%, respectively.
Keywords :
Web sites; collaborative filtering; content-based retrieval; electronic commerce; recommender systems; B2B E-commerce platform; MAE; Mingle-TopN hybrid recommendation algorithm; Websites; business fields; collaborate filtering; content-based filtering; improved recommendation algorithm; information extraction; information overload; information retrieval; mean absolute error; personalized recommender system; personalized recommender systems; user experience; user stickiness; Accuracy; Algorithm design and analysis; Business; Collaboration; Data mining; Recommender systems; B2B platform; Mingle-TopN algorithm; collaborative filtering; recommender system;
Conference_Titel :
Advanced Cloud and Big Data (CBD), 2013 International Conference on
Conference_Location :
Nanjing
Print_ISBN :
978-1-4799-3260-3
DOI :
10.1109/CBD.2013.10