Title
Subjective Similarity: Personalizing Alternative Item Recommendations
Abstract
We present a new algorithm for recommending alternatives to a given item in an e-commerce setting. Our algorithm is an incremental improvement over an earlier system, which recommends similar items by first assigning the input item to clusters and then selecting best quality items within those clusters. The original algorithm does not consider the recent context and our new algorithm improves the earlier system by personalizing the recommendations to user intentions. The system measures user intention using the recent queries, which are used to determine the level of abstraction in similarity and relative importance of similarity dimensions. We show that user engagement increases when recommended item titles share more terms with most recent queries. Moreover, the new algorithm increases query coverage without sacrificing input item similarity and item quality.
Year
DOI
Venue
2015
10.1145/2740908.2741999
WWW (Companion Volume)
Keywords
Field
DocType
eCommerce, Recommender Systems, Personalization, Context-aware alternative item recommendations
Recommender system,Data mining,World Wide Web,Abstraction,Information retrieval,Computer science,User engagement,Personalization
Conference
Citations 
PageRank 
References 
1
0.35
6
Authors
3
Name
Order
Citations
PageRank
Tolga Könik1868.21
Rajyashree Mukherjee2143.05
Jayasimha Katukuri371.19