References

MULTI-INSTANCE LEARNING ON INNER STRUCTURE OF BAGS VIA WEIGHTED MATRIX KERNEL


[1] T. Dietterich, R. Lathrop and T. Lozano-Pérez, Solving the multiple instance problem with axis-parallel rectangles, Artificial Intelligence 89 (1-2) (1997), 31-71.

[2] O. Maron and A. L. Ratan, Multiple-instance learning for natural scene classification, in: Proceedings of the 15th International Conference on Machine Learning (1998), 341-349.

[3] Q. Zhang, S. A. Goldman, W. Yu and J. Fritts, Content-based image retrieval using multiple-instance learning, in: Proceedings of the 19th International Conference on Machine Learning (2002), 682-689.

[4] S. Andrews, I. Tsochantaridis and T. Hofmann, Support vector machines for multiple-instance learning, Adv. Neural Inf. Process. Syst. (2003), 561-568.

[5] S. Ray and M. Craven, Supervised versus multiple instance learning: An empirical comparison, in: Proceedings of the 22nd International Conference on Machine Learning (2005), 697-704.

[6] J. Bi and J. Liang, Multiple instance learning of pulmonary embolism detection with geodesic distance along vascular structure, in: Proceedings of IEEE Computer Society Conference on Computer Vision and Pattern Recognition (2007), 1-8.

[7] G. Fung, M. Dundar, B. Krishnapuram and R. B. Rao, Multiple instance learning for computer aided diagnosis, Adv. Neural Inf. Process. Syst. (2007), 425-432

[8] F. Li and C. Sminchisescu, Convex multiple-instance learning by estimating likelihood ratio, in: J. D. Lafferty, C. K. I. Williams, J. Shawe-Taylor, R. S. Zemel and A. Culotta (Eds.), NIPS, Curran Associates Inc. (2010), 1360-1368.

[9] Z. Zhou and J. Xu, On the relation between multi-instance learning and semisupervised learning, In: International Conference on Machine Learning (2007), 1167-1174.

[10] Z. Zhou, Y. Sun and F. Li, Multi-instance learning by treating instances as non I.I.D, In: International Conference on Machine Learning (2009), 1249-1256.

[11] Yanshan Xiao, Bo Liu and Zhifeng Hao, A similarity-based classification framework for multiple-instance learning, IEEE Transaction on Cybernetics 44(4) (2014), 500-515.

[12] Y. Shao, Z. Yang, X. Wang and N. Deng, Multiple instance twin support vector machines, ISORA (2010), 433-442.

[13] Zhiquan Qi, Yingjie Tian, Xiaodan Yu and Yong Shi, A multi-instance learning algorithm based on nonparallel classifier, Applied Mathematics and Computation 241 (2014), 233-241.

[14] Zhi-Hua Zhou, Min-Ling Zhang, Sheng-Jun Huang and Yu-Feng Li, Multi-instance multi-label learning, Artificial Intelligence 176 (2012), 2291-2320.

[15] Zhan Li, Guo-Hua Geng, Jun Feng, Jin-ye Peng, Chao Wen and Jun-li Liang, Multiple instance learning based on positive instance selection and bag structure construction, Pattern Recognition Letters 40 (2014), 19-26.

[16] Veronika Cheplygina, David M. J. Tax and Marco Loog, Multiple instance learning with bag dissimilarities, 48(1) (2015), 264-275.

[17] J. Chai, X. Ding, H. Chen and T. Li, Multiple-instance discriminant analysis, Pattern Recognition 47 (2014), 2517-2531.

[18] J. T. Kwok and P.-M. Cheung, Marginalized multi-instance kernels, In Proceedings of the 20th International Joint Conference on Artificial Intelligence, pages 901-906, Hydrabad, India, 2007.

[19] Y. Chen and J. Z. Wang, Image categorization by learning and reasoning with regions, Journal of Machine Learning Research 5 (2004), 913-939.

[20] O. Maron and T. Lozano-Pérez, A framework for multiple-instance learning, In M. I. Jordan, M. J. Kearns and S. A. Solla, editors, Advances in Neural Information Processing Systems 10, pages 570-576, MIT Press, Cambridge, MA, 1998.

[21] T. G. Dietterich, R. H. Lathrop and T. Lozano-Pérez, Solving the multiple instance problem with axis-parallel rectangles, Artificial Intelligence 89(1-2) (1997), 31-71.

[22] T. Gartner, P. A. Flach, A. Kowalczyk and A. J. Smola, Multi-instance kernels, In Proceedings of the 19th International Conference on Machine Learning, pages 179-186, Sydney, Australia, 2002.

[23] Q. Zhang and S. A. Goldman, EM-DD: An improved multi-instance learning technique, In T. G. Dietterich, S. Becker and Z. Ghahramani, editors, Advances in Neural Information Processing Systems 14, pages 1073-1080, MIT Press, Cambridge, MA, 2002.