Distribution-Free Inference for the Regression Function of Binary Classification

08/03/2023
by   Ambrus Tamás, et al.
0

One of the key objects of binary classification is the regression function, i.e., the conditional expectation of the class labels given the inputs. With the regression function not only a Bayes optimal classifier can be defined, but it also encodes the corresponding misclassification probabilities. The paper presents a resampling framework to construct exact, distribution-free and non-asymptotically guaranteed confidence regions for the true regression function for any user-chosen confidence level. Then, specific algorithms are suggested to demonstrate the framework. It is proved that the constructed confidence regions are strongly consistent, that is, any false model is excluded in the long run with probability one. The exclusion is quantified with probably approximately correct type bounds, as well. Finally, the algorithms are validated via numerical experiments, and the methods are compared to approximate asymptotic confidence ellipsoids.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/23/2019

Semi-Parametric Uncertainty Bounds for Binary Classification

The paper studies binary classification and aims at estimating the under...
research
03/08/2021

Exact Distribution-Free Hypothesis Tests for the Regression Function of Binary Classification via Conditional Kernel Mean Embeddings

In this paper we suggest two statistical hypothesis tests for the regres...
research
02/15/2021

Don't Just Blame Over-parametrization for Over-confidence: Theoretical Analysis of Calibration in Binary Classification

Modern machine learning models with high accuracy are often miscalibrate...
research
12/07/2018

A simple approach to construct confidence bands for a regression function with incomplete data

A long-standing problem in the construction of asymptotically correct co...
research
07/09/2020

Predictive Value Generalization Bounds

In this paper, we study a bi-criterion framework for assessing scoring f...
research
05/17/2022

Classification as Direction Recovery: Improved Guarantees via Scale Invariance

Modern algorithms for binary classification rely on an intermediate regr...
research
09/28/2018

Learning Confidence Sets using Support Vector Machines

The goal of confidence-set learning in the binary classification setting...

Please sign up or login with your details

Forgot password? Click here to reset