Top-k Multiclass SVM Matthias Hein
–Neural Information Processing Systems
Class ambiguity is typical in image classification problems with a large number of classes. When classes are difficult to discriminate, it makes sense to allow k guesses and evaluate classifiers based on the top-k error instead of the standard zero-one loss. We propose top-k multiclass SVM as a direct method to optimize for top-k performance. Our generalization of the well-known multiclass SVM is based on a tight convex upper bound of the top-k error. We propose a fast optimization scheme based on an efficient projection onto the top-k simplex, which is of its own interest. Experiments on five datasets show consistent improvements in top-k accuracy compared to various baselines.
Neural Information Processing Systems
Apr-10-2023, 11:43:04 GMT
- Country:
- Europe
- Germany > Saarland
- Saarbrücken (0.04)
- United Kingdom > England
- Cambridgeshire > Cambridge (0.04)
- Germany > Saarland
- Europe
- Technology: