January 11, Tuesday
12:00 – 13:30
Efficient Classification for Metric Data
Computer Science seminar
Lecturer : Lee-Ad Gottlieb
Affiliation : Department of Computer Science and Engineering, Hebrew University
Location : 202\37
Host : Dr. Aryeh Kontorovich
Recent advances in large-margin classification of data residing in general
metric spaces (rather than Hilbert spaces) enable classification under
various natural metrics, such as edit and earthmover distance. The general
framework developed for this purpose by von Luxburg and Bousquet [JMLR,
2004] left open the question of computational efficiency and providing
direct bounds on classification error. We design a new algorithm for
classification in general metric spaces, whose runtime and accuracy depend
on the doubling dimension of the data points. It thus achieves superior
classification performance in many common scenarios. The algorithmic core
of our approach is an approximate (rather than exact) solution to the
classical problems of Lipschitz extension and of Nearest Neighbor Search.
The algorithms generalization performance is established via the
fat-shattering dimension of Lipschitz classifiers.
This is joint work with Aryeh Kontorovich and Robert Krauthgamer.