Open Access Open Access  Restricted Access Subscription Access

Concept Based Personalized Search Engine


 

User profiling is a fundamental component of any personalization applications. Most existing user profiling strategies are based on objects that users are interested in (i.e., positive preferences), but not the objects that users dislike (i.e. negative preferences). In this paper, we focus on search engine personalization and develop several concept based user profiling methods that are based on both positive and negative preferences. We evaluate the proposed methods against our previously proposed personalized query clustering method. Experimental results show that profiles which capture and utilize both of the user's positive and negative preferences perform the best. The separation provides a clear threshold for an agglomerative clustering algorithm to terminate and improve the overall quality of the resulting query clusters.

Keywords

Negative Preferences, Personalization, Personalized Query Clustering, Search Engine, User Profiling
User
Notifications
Font Size

Abstract Views: 151

PDF Views: 0




  • Concept Based Personalized Search Engine

Abstract Views: 151  |  PDF Views: 0

Authors

Abstract


User profiling is a fundamental component of any personalization applications. Most existing user profiling strategies are based on objects that users are interested in (i.e., positive preferences), but not the objects that users dislike (i.e. negative preferences). In this paper, we focus on search engine personalization and develop several concept based user profiling methods that are based on both positive and negative preferences. We evaluate the proposed methods against our previously proposed personalized query clustering method. Experimental results show that profiles which capture and utilize both of the user's positive and negative preferences perform the best. The separation provides a clear threshold for an agglomerative clustering algorithm to terminate and improve the overall quality of the resulting query clusters.

Keywords


Negative Preferences, Personalization, Personalized Query Clustering, Search Engine, User Profiling