Linearized Binary Regression

02/01/2018
by   Andrew S. Lan, et al.
0

Probit regression was first proposed by Bliss in 1934 to study mortality rates of insects. Since then, an extensive body of work has analyzed and used probit or related binary regression methods (such as logistic regression) in numerous applications and fields. This paper provides a fresh angle to such well-established binary regression methods. Concretely, we demonstrate that linearizing the probit model in combination with linear estimators performs on par with state-of-the-art nonlinear regression methods, such as posterior mean or maximum aposteriori estimation, for a broad range of real-world regression problems. We derive exact, closed-form, and nonasymptotic expressions for the mean-squared error of our linearized estimators, which clearly separates them from nonlinear regression methods that are typically difficult to analyze. We showcase the efficacy of our methods and results for a number of synthetic and real-world datasets, which demonstrates that linearized binary regression finds potential use in a variety of inference, estimation, signal processing, and machine learning applications that deal with binary-valued observations or measurements.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/09/2018

An Estimation and Analysis Framework for the Rasch Model

The Rasch model is widely used for item response analysis in application...
research
05/11/2019

ACF estimation via difference schemes for a semiparametric model with m-dependent errors

In this manuscript, we discuss a class of difference-based estimators of...
research
11/28/2017

More on the restricted almost unbiased Liu-estimator in Logistic regression

To address the problem of multicollinearity in the logistic regression m...
research
06/09/2018

Linear Spectral Estimators and an Application to Phase Retrieval

Phase retrieval refers to the problem of recovering real- or complex-val...
research
06/01/2020

Universal Robust Regression via Maximum Mean Discrepancy

Many datasets are collected automatically, and are thus easily contamina...
research
02/07/2023

Logistic regression with missing responses and predictors: a review of existing approaches and a case study

In this work logistic regression when both the response and the predicto...
research
06/03/2022

Debiased Machine Learning without Sample-Splitting for Stable Estimators

Estimation and inference on causal parameters is typically reduced to a ...

Please sign up or login with your details

Forgot password? Click here to reset