Title :
A Fuzzy Preference Tree-Based Recommender System for Personalized Business-to-Business E-Services
Author :
Dianshuang Wu ; Guangquan Zhang ; Jie Lu
Author_Institution :
Decision Syst. & e-Service Intell. Lab., Univ. of Technol. Sydney, Ultimo, NSW, Australia
Abstract :
The Web creates excellent opportunities for businesses to provide personalized online services to their customers. Recommender systems aim to automatically generate personalized suggestions of products/services to customers (businesses or individuals). Although recommender systems have been well studied, there are still two challenges in the development of a recommender system, particularly in real-world B2B e-services: (1) items or user profiles often present complicated tree structures in business applications, which cannot be handled by normal item similarity measures and (2) online users´ preferences are often vague and fuzzy, and cannot be dealt with by existing recommendation methods. To handle both these challenges, this study first proposes a method for modeling fuzzy tree-structured user preferences, in which fuzzy set techniques are used to express user preferences. A recommendation approach to recommending tree-structured items is then developed. The key technique in this study is a comprehensive tree matching method, which can match two tree-structured data and identify their corresponding parts by considering all the information on tree structures, node attributes, and weights. Importantly, the proposed fuzzy preference tree-based recommendation approach is tested and validated using an Australian business dataset and the MovieLens dataset. Experimental results show that the proposed fuzzy tree-structured user preference profile reflects user preferences effectively and the recommendation approach demonstrates excellent performance for tree-structured items, especially in e-business applications. This study also applies the proposed recommendation approach to the development of a Web-based business partner recommender system.
Keywords :
business data processing; fuzzy set theory; recommender systems; tree data structures; Australian business dataset; MovieLens dataset; Web-based business partner recommender system; automatic personalized product suggestion generation; automatic personalized service suggestion generation; business applications; comprehensive tree matching method; fuzzy preference tree-based recommender system; fuzzy set techniques; fuzzy tree-structured user preference modeling; node attributes; online user preferences; personalized business-to-business e-services; personalized online services; real-world B2B e-services; tree weights; tree-structured data; tree-structured item recommendation; Business; Data models; Ontologies; Recommender systems; Semantics; Vectors; Vegetation; E-business; fuzzy preferences; recommender systems; tree matching; web-based support system;
Journal_Title :
Fuzzy Systems, IEEE Transactions on
DOI :
10.1109/TFUZZ.2014.2315655