Non-Parametric Calibration of Probabilistic Regression

06/20/2018
by   Hao Song, et al.
6

The task of calibration is to retrospectively adjust the outputs from a machine learning model to provide better probability estimates on the target variable. While calibration has been investigated thoroughly in classification, it has not yet been well-established for regression tasks. This paper considers the problem of calibrating a probabilistic regression model to improve the estimated probability densities over the real-valued targets. We propose to calibrate a regression model through the cumulative probability density, which can be derived from calibrating a multi-class classifier. We provide three non-parametric approaches to solve the problem, two of which provide empirical estimates and the third providing smooth density estimates. The proposed approaches are experimentally evaluated to show their ability to improve the performance of regression models on the predictive likelihood.

READ FULL TEXT

page 2

page 12

research
10/21/2022

Calibration tests beyond classification

Most supervised machine learning tasks are subject to irreducible predic...
research
06/12/2019

Non-Parametric Calibration for Classification

Many applications for classification methods not only require high accur...
research
11/19/2017

Learning Seasonal Phytoplankton Communities with Topic Models

In this work we develop and demonstrate a probabilistic generative model...
research
09/30/2021

Non-parametric calibration of multiple related radiocarbon determinations and their calendar age summarisation

Due to fluctuations in past radiocarbon (^14C) levels, calibration is re...
research
06/15/2020

Occam's Ghost

This article applies the principle of Occam's Razor to non-parametric mo...
research
09/20/2018

Spline-Based Probability Calibration

In many classification problems it is desirable to output well-calibrate...
research
09/28/2018

On wavelets to select the parametric form of a regression model

Let Y be a response variable related with a set of explanatory variables...

Please sign up or login with your details

Forgot password? Click here to reset