Timezone: »

Classification Calibration Dimension for General Multiclass Losses
Harish G Ramaswamy · Shivani Agarwal

Wed Dec 05 11:56 AM -- 12:00 PM (PST) @ Harveys Convention Center Floor, CC

We study consistency properties of surrogate loss functions for general multiclass classification problems, defined by a general loss matrix. We extend the notion of classification calibration, which has been studied for binary and multiclass 0-1 classification problems (and for certain other specific learning problems), to the general multiclass setting, and derive necessary and sufficient conditions for a surrogate loss to be classification calibrated with respect to a loss matrix in this setting. We then introduce the notion of \emph{classification calibration dimension} of a multiclass loss matrix, which measures the smallest size' of a prediction space for which it is possible to design a convex surrogate that is classification calibrated with respect to the loss matrix. We derive both upper and lower bounds on this quantity, and use these results to analyze various loss matrices. In particular, as one application, we provide a different route from the recent result of Duchi et al.\ (2010) for analyzing the difficulty of designinglow-dimensional' convex surrogates that are consistent with respect to pairwise subset ranking losses. We anticipate the classification calibration dimension may prove to be a useful tool in the study and design of surrogate losses for general multiclass learning problems.

Author Information

Harish G Ramaswamy (Indian Institute of Science)
Shivani Agarwal (University of Pennsylvania)

Related Events (a corresponding poster, oral, or spotlight)

More from the Same Authors