Affiliation:
1. School of Mathematics and Statistics, Xidian University, China. E-mails: lyren@stu.xidian.edu.cn, ylyang@mail.xidian.edu.cn, applesunliqin@126.com, x_wu@stu.xidian.edu.cn
Abstract
Multiple instance learning is a modification in supervised learning that handles the classification of collection instances, which called bags. Each bag contains a number of instances whose features are extracted. In multiple instance learning, the standard assumption is that a positive bag contains at least one positive instance, whereas a negative bag is only comprised of negative instances. The complexity of multiple instance learning relies heavily on the number of instances in the training datasets. Since we are usually confronted with a large instance space, it is important to design efficient instance selection techniques to speed up the training process, without compromising the performance. Firstly, a multiple instance learning model of support vector machine based on grey relational analysis is proposed in this paper. The data size can be reduced, and the importance of instances in the bag can be preliminarily judged. Secondly, this paper introduces an algorithm with the bag-representative selector that trains the support vector machine based on bag-level information. Finally, this paper shows how to generalize the algorithm for binary multiple instance learning to multiple class tasks. The experimental study evaluates and compares the performance of our method against 8 state-of-the-art multiple instance methods over 10 datasets, and then demonstrates that the proposed approach is competitive with the state-of-art multiple instance learning methods.
Reference38 articles.
1. Support vector machines for multiple-instance learning;Andrews;Neural Information Processing Systems,2003
2. S. Andrews, I. Tsochantaridis and T. Hofmann, Support vector machines for multiple-instance learning, in: Proceedings of the 15th International Conference on Neural Information Processing Systems, 2004, pp. 577–584.
3. P. Auer, On learning from multi-instance examples: Empirical evaluation of a theoretical approach, in: Proceeding of the 14th International Conference of Machine Learning, 1997, pp. 1–29.
4. A note on learning from multiple-instance examples;Blum;Machine Learning,1998
5. R. Bunescu and R. Monney, Multiple instance learning for sparse positive bags, in: Proceedings of the Annual International Conference on Machine Learning, 2007, pp. 105–112.