Metric Learning by Collapsing Classes
Hebrew University of Jerusalem · University of Toronto
Abstract
We present an algorithm for learning a quadratic Gaussian metric (Mahalanobis distance) for use in classification tasks. Our method relies on the simple geometric intuition that a good metric is one under which points in the same class are simultaneously near each other and far from points in the other classes. We construct a convex optimization problem whose solution generates such a metric by trying to collapse all examples in the same class to a single point and push examples in other classes infinitely far away. We show that when the metric we learn is used in simple classifiers, it yields substantial improvements over standard alternatives on a variety of problems. We also discuss how the learned metric…
Citation impact
- FWCI
- 21.83
- Percentile
- 100%
- References
- 10
Authors
2Topics & keywords
- Mahalanobis distance
- Metric (unit)
- Metric space
- Mathematics
- Intrinsic metric
- Artificial intelligence
- Feature vector
- Computer science