Publication | Closed Access
Social Network Analysis for New Product Recommendation
16
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2009
Year
EngineeringNetwork AnalysisNew Product RecommendationText MiningComputational Social ScienceInformation RetrievalData ScienceData MiningContent-based FilteringSocial Network AnalysisKnowledge DiscoveryPersonalized SearchCold-start ProblemMarketingInformation Filtering SystemGroup RecommendersNetwork ScienceBusinessCollaborative Filtering
Collaborative Filtering is one of the most used recommender systems. However, basically it cannot be used to recommend new products to customers because it finds products only based on the purchasing history of each customer. In order to cope with this shortcoming, many researchers have proposed the hybrid recommender system, which is a combination of collaborative filtering and content-based filtering. Content-based filtering recommends the products whose attributes are similar to those of the products that the target customers prefer. However, the hybrid method is used only for the limited categories of products such as music and movie, which are the products whose attributes are easily extracted. Therefore it is essential to find a more effective approach to recommend to customers new products in any category. In this study, we propose a new recommendation method which applies centrality concept widely used to analyze the relational and structural characteristics in social network analysis. The new products are recommended to the customers who are highly likely to buy the products, based on the analysis of the relationships among products by using centrality. The recommendation process consists of following four steps; purchase similarity analysis, product network construction, centrality analysis, and new product recommendation. In order to evaluate the performance of this proposed method, sales data from H department store, one of the well.known department stores in Korea, is used.