Multi-Instance Kernels
Abstract
Learning from structured data is becoming increasingly important. However, most prior work on kernel methods has focused on learning from attribute-value data. Only recently, research started investigating kernels for structured data. This paper considers kernels for multi-instance problems -- a class of concepts on individuals represented by sets. The main result of this paper is a kernel on multi-instance data that can be shown to separate positive and negative sets under natural assumptions. This kernel compares favorably with state of the art multi-instance learning algorithms in an empirical study. Finally, we give some concluding remarks and propose future work that might further improve the results.
Cite
Text
Gärtner et al. "Multi-Instance Kernels." International Conference on Machine Learning, 2002.Markdown
[Gärtner et al. "Multi-Instance Kernels." International Conference on Machine Learning, 2002.](https://mlanthology.org/icml/2002/gartner2002icml-multi/)BibTeX
@inproceedings{gartner2002icml-multi,
title = {{Multi-Instance Kernels}},
author = {Gärtner, Thomas and Flach, Peter A. and Kowalczyk, Adam and Smola, Alexander J.},
booktitle = {International Conference on Machine Learning},
year = {2002},
pages = {179-186},
url = {https://mlanthology.org/icml/2002/gartner2002icml-multi/}
}