Title
Measuring usefulness of context for context-aware ranking
Abstract
Most of major search engines develop different types of personalisation of search results. Personalisation includes deriving user's long-term preferences, query disambiguation etc. User sessions provide very powerful tool commonly used for these problems. In this paper we focus on personalisation based on context-aware reranking. We implement a machine learning framework to approach this problem and study importance of different types of features. We stress that features concerning temporal and context relatedness of queries along with features relied on user's actions are most important and play crucial role for this type of personalisation.
Year
DOI
Venue
2012
10.1145/2187980.2188122
WWW (Companion Volume)
Keywords
Field
DocType
crucial role,context-aware ranking,context-aware reranking,major search engine,study importance,context relatedness,powerful tool,long-term preference,different type,search result,machine learning,learning to rank,search engine
Data mining,Learning to rank,World Wide Web,Search engine,Ranking,Information retrieval,Computer science,Personalization
Conference
Citations 
PageRank 
References 
2
0.38
5
Authors
3
Name
Order
Citations
PageRank
Andrey Kustarev1312.26
Yury Ustinovskiy2294.59
Pavel Serduykov320.38