Gradient Profile Estimation Using Exponential Cubic Spline Smoothing in a Bayesian Framework

12/09/2019
by   Kushani De Silva, et al.
0

Attaining reliable profile gradients is of utmost relevance for many physical systems. In most situations, the estimation of gradient can be inaccurate due to noise. It is common practice to first estimate the underlying system and then compute the profile gradient by taking the subsequent analytic derivative. The underlying system is often estimated by fitting or smoothing the data using other techniques. Taking the subsequent analytic derivative of an estimated function can be ill-posed. The ill-posedness gets worse as the noise in the system increases. As a result, the uncertainty generated in the gradient estimate increases. In this paper, a theoretical framework for a method to estimate the profile gradient of discrete noisy data is presented. The method is developed within a Bayesian framework. Comprehensive numerical experiments are conducted on synthetic data at different levels of random noise. The accuracy of the proposed method is quantified. Our findings suggest that the proposed gradient profile estimation method outperforms the state-of-the-art methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/20/2018

Statistical generalized derivative applied to the profile likelihood estimation in a mixture of semiparametric models

There is a difficulty in finding an estimate of variance of the profile ...
research
12/10/2020

Preprocessing noisy functional data using factor models

We consider functional data which are measured on a discrete set of obse...
research
08/29/2019

Quantifying the ill-conditioning of analytic continuation

Analytic continuation is ill-posed, but becomes merely ill-conditioned (...
research
03/04/2020

StochasticRank: Global Optimization of Scale-Free Discrete Functions

In this paper, we introduce a powerful and efficient framework for the d...
research
06/08/2021

Spline Smoothing of 3D Geometric Data

Over the past two decades, we have seen an increased demand for 3D visua...
research
01/21/2021

Improving D-Optimality in Nonlinear Situations

Experimental designs based on the classical D-optimal criterion minimize...
research
02/18/2022

Stochastic Perturbations of Tabular Features for Non-Deterministic Inference with Automunge

Injecting gaussian noise into training features is well known to have re...

Please sign up or login with your details

Forgot password? Click here to reset