Transductive learning to rank using association rules |
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Authors: | Yan Pan Haixia Luo Hongrui Qi Yong Tang |
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Affiliation: | 1. Center of Excellence in CRM and Analytics, Institute for Development and Research in Banking Technology, Castle Hills Road No. 1, Masab Tank, Hyderabad, 500057, AP, India;2. School of Computer & Information Sciences, University of Hyderabad, Hyderabad, 500046, AP, India |
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Abstract: | Learning to rank, a task to learn ranking functions to sort a set of entities using machine learning techniques, has recently attracted much interest in information retrieval and machine learning research. However, most of the existing work conducts a supervised learning fashion. In this paper, we propose a transductive method which extracts paired preference information from the unlabeled test data. Then we design a loss function to incorporate this preference data with the labeled training data, and learn ranking functions by optimizing the loss function via a derived Ranking SVM framework. The experimental results on the LETOR 2.0 benchmark data collections show that our transductive method can significantly outperform the state-of-the-art supervised baseline. |
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