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Chin. Phys. B, 2013, Vol. 22(9): 098702    DOI: 10.1088/1674-1056/22/9/098702
INTERDISCIPLINARY PHYSICS AND RELATED AREAS OF SCIENCE AND TECHNOLOGY Prev   Next  

Online multiple instance regression

Wang Zhi-Gang (王志岗)a, Zhao Zeng-Shun (赵增顺)b c, Zhang Chang-Shui (张长水)a
a Department of Automation, Tsinghua University, State Key Laboratory of Intelligent Technologie and Systems, Tsinghua National Laboratory for Information Science and Technology, Beijing 100084, China;
b College of Information and Electrical Engineering, Shandong University of Science and Technology, Qingdao 266590, China;
c School of Control Science and Engineering, Shandong University, Jinan 250061, China
Abstract  The multiple instance regression problem has become a hot research topic recently. There are several approaches to the multiple instance regression problem, such as Salience, Citation KNN, and MI-ClusterRegress. All of these solutions work in batch mode during the training step. However, in practice, examples usually arrive in sequence. Therefore, the training step cannot be accomplished once. In this paper, an online multiple instance regression method “OnlineMIR” is proposed. OnlineMIR can not only predict the label of a new bag, but also update the current regression model with the latest arrived bag. The experimental results show that OnlineMIR achieves good performances on both synthetic and real data sets.
Keywords:  mutiple instance      regression      online learning  
Received:  16 January 2013      Revised:  08 March 2013      Accepted manuscript online: 
PACS:  87.19.lo (Information theory)  
  87.15.Qt (Sequence analysis)  
Fund: Project supported by the China State Key Science and Technology Project on Marine Carbonate Reservoir Characterization (Grant No. 2011ZX05004-003), the National Basic Research Program of China (Grant No. 2013CB329503), the Beijing Municipal Education Commission Science, Technology Development Plan key project, China (Grant No. KZ201210005007), and China Postdoctoral Science Foundation (Grant No. 2012M521336).
Corresponding Authors:  Zhang Chang-Shui     E-mail:  zcs@mail.tsinghua.edu.cn

Cite this article: 

Wang Zhi-Gang (王志岗), Zhao Zeng-Shun (赵增顺), Zhang Chang-Shui (张长水) Online multiple instance regression 2013 Chin. Phys. B 22 098702

[1] Dietterich T G, Lathrop R H and Lozano-Pérez T 1997 Artif. Intell. 89 31
[2] Ray S and Page D 2001 Workshop of International Conference on Machine Learning, June 28-July 1, 2001, Williamstown, USA, pp. 425-432
[3] Andrews S, Tsochantaridis I and Hofmann T 2003 Advances in Neural Information Processing Systems, December 9, Vancouver, Canada, pp. 577-584
[4] Chen Y X and Wang J Z 2004 J. Mach. Learn. Res. 5 939
[5] Chen Y X, Bi J and Wang J Z 2006 IEEE Trans. Pattern Anal. Mach. Intell. 28 1931
[6] Fung G, Dundar M, Krishnapuram B and Rao R B 2007 Advances in Neural Information Processing Systems, December 4, Vancouver, Canada, pp. 425-433
[7] Zhou Z H, Sun Y Y and Li Y F 2009 Proceedings of the 26th Annual International Conference on Machine Learning, June 14-18, Montreal, Canada, pp. 1249-1256
[8] Babenko B, Yang M H and Belongie S 2011 IEEE Trans. Pattern Anal. Mach. Intell. 33 1619
[9] Li M, Kwok J T and Lu B L 2010 Proceedings of IEEE International Conference on Computer Vision and Pattern Recognition, June 13-18, San Francisco, USA, pp. 1395-1401
[10] Zeisl B, Leistner C, Saffari A and Bischof H Proceedings of IEEE International Conference on Computer Vision and Pattern Recognition, June 13-18, 2010, San Francisco, USA, pp. 1879-1886
[11] Zhou Z H 2010 Signal Process 2 2
[12] Amar R A, Dooly D R, Goldman S A and Zhang Q 2001 Workshop of International Conference on Machine Learning, June 28-July 1, Williamstown, USA, pp. 3-10
[13] Dooly D R, Zhang Q, Goldman S A and Amar R A 2003 J. Mach. Learn. Res. 3 651
[14] Wagstaff K L and Lane T 2007 Workshop of International Conference on Machine Learning, June 20-24, 2007, Corvallis, USA, pp. 444-451
[15] Wagstaff K L, Lane T and Roper A 2008 Workshop of IEEE International Conference on Data Mining, December 15-19, 2008, Pisa, Italy, pp. 291-300
[16] Sun Z H and Jiang F 2010 Chin. Phys. B 19 110502
[17] Parrella F 2007 A Thesis Presented for the Degree of Information Science
[18] Cauwenberghs G and Poggio T 2001 Advances in Neural Information Processing Systems, December 3, 2001, Vancouver, Canada, pp. 409-415
[19] Galford G L, Mustard J F, Melillo J, Gendrin A, Cerri C C and Cerri C E P 2008 Remote Sens. Environ. 112 576
[20] Meng Q F, Chen Y H and Peng Y H 2009 Chin. Phys. B 18 2194
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