Calibrated Surrogate Losses for Classification with Label-Dependent Costs

09/14/2010
by   Clayton Scott, et al.
0

We present surrogate regret bounds for arbitrary surrogate losses in the context of binary classification with label-dependent costs. Such bounds relate a classifier's risk, assessed with respect to a surrogate loss, to its cost-sensitive classification risk. Two approaches to surrogate regret bounds are developed. The first is a direct generalization of Bartlett et al. [2006], who focus on margin-based losses and cost-insensitive classification, while the second adopts the framework of Steinwart [2007] based on calibration functions. Nontrivial surrogate regret bounds are shown to exist precisely when the surrogate loss satisfies a "calibration" condition that is easily verified for many common losses. We apply this theory to the class of uneven margin losses, and characterize when these losses are properly calibrated. The uneven hinge, squared error, exponential, and sigmoid losses are then treated in detail.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/20/2016

Multiclass Classification Calibration Functions

In this paper we refine the process of computing calibration functions f...
research
10/26/2021

Surrogate Regret Bounds for Polyhedral Losses

Surrogate risk minimization is an ubiquitous paradigm in supervised mach...
research
09/16/2020

Convex Calibrated Surrogates for the Multi-Label F-Measure

The F-measure is a widely used performance measure for multi-label class...
research
09/14/2018

Efficient Structured Surrogate Loss and Regularization in Structured Prediction

In this dissertation, we focus on several important problems in structur...
research
07/02/2012

Surrogate Regret Bounds for Bipartite Ranking via Strongly Proper Losses

The problem of bipartite ranking, where instances are labeled positive o...
research
10/22/2020

Classification with Rejection Based on Cost-sensitive Classification

The goal of classification with rejection is to avoid risky misclassific...
research
06/24/2021

Constrained Classification and Policy Learning

Modern machine learning approaches to classification, including AdaBoost...

Please sign up or login with your details

Forgot password? Click here to reset