Publication | Closed Access
Support Vector Machines for Multiple-Instance Learning
1.4K
Citations
10
References
2002
Year
Unknown Venue
This paper presents two new formulations of multiple-instance learning as a maximum margin problem. The proposed extensions of the Support Vector Machine (SVM) learning approach lead to mixed integer quadratic programs that can be solved heuristically. Our generalization of SVMs makes a state-of-the-art classification technique, including non-linear classification via kernels, available to an area that up to now has been largely dominated by special purpose methods. We present experimental results on a pharmaceutical data set and on applications in automated image indexing and document categorization. 1
| Year | Citations | |
|---|---|---|
Page 1
Page 1