The Kernel Density Integral Transformation

09/18/2023
by   Calvin McCarter, et al.
0

Feature preprocessing continues to play a critical role when applying machine learning and statistical methods to tabular data. In this paper, we propose the use of the kernel density integral transformation as a feature preprocessing step. Our approach subsumes the two leading feature preprocessing methods as limiting cases: linear min-max scaling and quantile transformation. We demonstrate that, without hyperparameter tuning, the kernel density integral transformation can be used as a simple drop-in replacement for either method, offering robustness to the weaknesses of each. Alternatively, with tuning of a single continuous hyperparameter, we frequently outperform both of these methods. Finally, we show that the kernel density transformation can be profitably applied to statistical data analysis, particularly in correlation analysis and univariate clustering.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/30/2023

Applying of The new Integral KAJ Transform in Cryptography

In this study, a new sort of transform known as (Kuffi- Abbas- Jawad tra...
research
03/03/2022

Statistical visualisation for tidy and geospatial data in R via kernel smoothing methods in the eks package

Kernel smoothers are essential tools for data analysis due to their abil...
research
06/08/2020

Propositionalization and Embeddings: Two Sides of the Same Coin

Data preprocessing is an important component of machine learning pipelin...
research
03/13/2017

Improving LBP and its variants using anisotropic diffusion

The main purpose of this paper is to propose a new preprocessing step in...
research
03/11/2018

Improved Asymptotics for Zeros of Kernel Estimates via a Reformulation of the Leadbetter-Cryer Integral

The expected number of false inflection points of kernel smoothers is ev...

Please sign up or login with your details

Forgot password? Click here to reset