Uncertainty Quantification in Extreme Learning Machine: Analytical Developments, Variance Estimates and Confidence Intervals

11/03/2020
by   Fabian Guignard, et al.
0

Uncertainty quantification is crucial to assess prediction quality of a machine learning model. In the case of Extreme Learning Machines (ELM), most methods proposed in the literature make strong assumptions on the data, ignore the randomness of input weights or neglect the bias contribution in confidence interval estimations. This paper presents novel estimations that overcome these constraints and improve the understanding of ELM variability. Analytical derivations are provided under general assumptions, supporting the identification and the interpretation of the contribution of different variability sources. Under both homoskedasticity and heteroskedasticity, several variance estimates are proposed, investigated, and numerically tested, showing their effectiveness in replicating the expected variance behaviours. Finally, the feasibility of confidence intervals estimation is discussed by adopting a critical approach, hence raising the awareness of ELM users concerning some of their pitfalls. The paper is accompanied with a scikit-learn compatible Python library enabling efficient computation of all estimates discussed herein.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/15/2021

A Gentle Introduction to Conformal Prediction and Distribution-Free Uncertainty Quantification

Black-box machine learning learning methods are now routinely used in hi...
research
11/11/2022

The Implicit Delta Method

Epistemic uncertainty quantification is a crucial part of drawing credib...
research
10/21/2022

Uncertainty Estimates of Predictions via a General Bias-Variance Decomposition

Reliably estimating the uncertainty of a prediction throughout the model...
research
03/11/2020

A variability measure for estimates of parameters in interval data fitting

The paper presents a construction of a quantitative measure of variabili...
research
09/09/2019

Building Calibrated Deep Models via Uncertainty Matching with Auxiliary Interval Predictors

With rapid adoption of deep learning in high-regret applications, the qu...
research
03/13/2023

Validation of uncertainty quantification metrics: a primer based on the consistency and adaptivity concepts

The practice of uncertainty quantification (UQ) validation, notably in m...
research
07/29/2020

Objective frequentist uncertainty quantification for atmospheric CO_2 retrievals

The steadily increasing amount of atmospheric carbon dioxide (CO_2) is a...

Please sign up or login with your details

Forgot password? Click here to reset