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http://dx.doi.org/10.4218/etrij.11.0110.0571

A Prior Model of Structural SVMs for Domain Adaptation  

Lee, Chang-Ki (Software Research Laboratory, ETRI)
Jang, Myung-Gil (Software Research Laboratory, ETRI)
Publication Information
ETRI Journal / v.33, no.5, 2011 , pp. 712-719 More about this Journal
Abstract
In this paper, we study the problem of domain adaptation for structural support vector machines (SVMs). We consider a number of domain adaptation approaches for structural SVMs and evaluate them on named entity recognition, part-of-speech tagging, and sentiment classification problems. Finally, we show that a prior model for structural SVMs outperforms other domain adaptation approaches in most cases. Moreover, the training time for this prior model is reduced compared to other domain adaptation methods with improvements in performance.
Keywords
Domain adaptation; structural SVMs; PRIOR model for structural SVMs;
Citations & Related Records
Times Cited By KSCI : 3  (Citation Analysis)
Times Cited By Web Of Science : 0  (Related Records In Web of Science)
Times Cited By SCOPUS : 3
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1 B. Taskar, C. Guestrin, and D. Koller, "Max Margin Markov Networks," Proc. NIPS, vol. 16, 2004.
2 I. Tsochantaridis et al., "Support Vector Machine Learning for Interdependent and Structured Output Spaces," Proc. ICML, 2004.
3 Ben Taskar et al., "Max-Margin Parsing," Proc. EMNLP, 2004.
4 C. Lee and M. Jang, "Fast Training of Structured SVM Using Fixed-Threshold Sequential Minimal Optimization," ETRI J., vol. 31, no. 2, Apr. 2009, pp. 121-128.   DOI
5 C. Lee and M. Jang, "A Modified Fixed-Threshold SMO for 1-Slack Structural SVMs," ETRI J., vol. 32, no. 1, Feb. 2010, pp. 120-128.   DOI
6 C. Lee, S. Lim, and M. Jang, "Large-Margin Training of Dependency Parsers Using Pegasos Algorithm," ETRI J., vol. 32, no. 3, June 2010, pp. 486-489.   DOI
7 C.N. Yu et al., "Support Vector Training of Protein Alignment Models," Proc. RECOMB, 2007.
8 Y. Yue et al., "A Support Vector Method for Optimization Average Precision," Proc. SIGIR, 2007, pp. 271-278.
9 C.H. Teo et al., "A Scalable Modular Convex Solver for Regularized Risk Minimization," Proc. KDD, 2007, pp. 727-736.
10 T. Joachims, T. Finley, and C.N. Yu, "Cutting-Plane Training of Structural SVMs," MLJ, vol. 77, no. 1, 2008, pp. 27-59.
11 H. Daume III and D. Marcu, "Domain Adaptation for Statistical Classifiers," J. Artificial Intell. Research, vol. 26, 2006, pp. 101- 126.
12 C. Chelba and A. Acero, "Adaptation of Maximum Entropy Capitalizer: Little Data Can Help a Lot," Comput. Speech Language, vol. 20, no. 4, 2006, pp. 382-399.   DOI   ScienceOn
13 H. Daume III, "Frustratingly Easy Domain Adaptation," Proc. ACL, 2007, 2010, pp. 256-263.
14 J. Yang et al., "Cross-Domain Video Concept Detection Using Adaptive SVMs," Proc. 15th Int. Conf. Multimedia, 2007, pp. 188-197.
15 PennBioIE Corpus. http://bioie.ldc.upenn.edu/publications/latest_ release/data
16 J. Jiang and C. Zhai, "Instance Weighting for Domain Adaptation in NLP," Proc. ACL, 2007, pp. 264-271.
17 Multidomain Sentiment Dataset. http://www.cs.jhu.edu/-mdredze/ datasets/sentiment/
18 J. Blitzer, M. Dredze, and F. Pereira, "Biographies, Bollywood, Boom-boxes and Blenders: Domain Adaptation for Sentiment Classification. Association of Computational Linguistics," Proc. ACL, 2007, pp. 440-447.