Ranking Model Adaptation for Domain Specific Search - Java Project

Project Details
Project CodeJWI172
TitleRanking Model Adaption for Domain Specific Search - Java Project
Project TypeJava Web Application (JSP)
Front EndEclipse
Back EndOracle
Project Cost

ABSTRACT

With the explosive emergence of vertical search domains, applying the broad-based ranking model directly to different domains is no longer desirable due to domain differences, while building a unique ranking model for each domain is both laborious for labeling data and time-consuming for training models. In this paper, we address these difficulties by proposing a regularization based algorithm called ranking adaptation SVM (RA-SVM), through which we can adapt an existing ranking model to a new domain, so that the amount of labeled data and the training cost is reduced while the performance is still guaranteed. Our algorithm only requires the Prediction from the existing ranking models, rather than their internal representations or the data from auxiliary domains. In addition, we assume that documents similar in the domain-specific feature space should have consistent rankings, and add some constraints to control the margin and slack variables of RA-SVM adaptively. Finally, ranking adaptability measurement is proposed to quantitatively estimate if an existing ranking model can be adapted to a new domain. Experiments performed over Letor and two large scale datasets crawled from a commercial search engine demonstrate the applicabilities of the proposed ranking adaptation algorithms and the ranking adaptability measurement.


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Ranking Model Adaptation for Domain Specific Search - Java Project Ranking Model Adaptation for Domain Specific Search - Java Project Reviewed by JeganKumar on March 20, 2014 Rating: 5

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