DocumentCode :
19587
Title :
Active Learning for Ranking through Expected Loss Optimization
Author :
Bo Long ; Jiang Bian ; Chapelle, Olivier ; Ya Zhang ; Inagaki, Yoshiyuki ; Yi Chang
Author_Institution :
LinkedIn Inc., Mountain View, CA, USA
Volume :
27
Issue :
5
fYear :
2015
fDate :
May 1 2015
Firstpage :
1180
Lastpage :
1191
Abstract :
Learning to rank arises in many data mining applications, ranging from web search engine, online advertising to recommendation system. In learning to rank, the performance of a ranking model is strongly affected by the number of labeled examples in the training set; on the other hand, obtaining labeled examples for training data is very expensive and time-consuming. This presents a great need for the active learning approaches to select most informative examples for ranking learning; however, in the literature there is still very limited work to address active learning for ranking. In this paper, we propose a general active learning framework, expected loss optimization (ELO), for ranking. The ELO framework is applicable to a wide range of ranking functions. Under this framework, we derive a novel algorithm, expected discounted cumulative gain (DCG) loss optimization (ELO-DCG), to select most informative examples. Then, we investigate both query and document level active learning for raking and propose a two-stage ELO-DCG algorithm which incorporate both query and document selection into active learning. Furthermore, we show that it is flexible for the algorithm to deal with the skewed grade distribution problem with the modification of the loss function. Extensive experiments on real-world web search data sets have demonstrated great potential and effectiveness of the proposed framework and algorithms.
Keywords :
data mining; learning (artificial intelligence); optimisation; query processing; ELO framework; Web search engine; active learning; data mining applications; document level active learning; document selection; expected discounted cumulative gain loss optimization; expected loss optimization; online advertising; query selection; ranking model; real-world Web search data sets; recommendation system; skewed grade distribution problem; two-stage ELO-DCG algorithm; Bayes methods; Electronic mail; Optimization; Training; Training data; Uncertainty; Web search; Active Learning; Active learning; Expected Loss Optimization; Ranking; expected loss optimization; ranking;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2014.2365785
Filename :
6940296
Link To Document :
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