Cargando…

Random RotBoost: An Ensemble Classification Method Based on Rotation Forest and AdaBoost in Random Subsets and Its Application to Clinical Decision Support

In the era of bathing in big data, it is common to see enormous amounts of data generated daily. As for the medical industry, not only could we collect a large amount of data, but also see each data set with a great number of features. When the number of features is ramping up, a common dilemma is a...

Descripción completa

Detalles Bibliográficos
Autores principales: Lee, Shin-Jye, Tseng, Ching-Hsun, Yang, Hui-Yu, Jin, Xin, Jiang, Qian, Pu, Bin, Hu, Wei-Huan, Liu, Duen-Ren, Huang, Yang, Zhao, Na
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9140905/
https://www.ncbi.nlm.nih.gov/pubmed/35626502
http://dx.doi.org/10.3390/e24050617
_version_ 1784715213783695360
author Lee, Shin-Jye
Tseng, Ching-Hsun
Yang, Hui-Yu
Jin, Xin
Jiang, Qian
Pu, Bin
Hu, Wei-Huan
Liu, Duen-Ren
Huang, Yang
Zhao, Na
author_facet Lee, Shin-Jye
Tseng, Ching-Hsun
Yang, Hui-Yu
Jin, Xin
Jiang, Qian
Pu, Bin
Hu, Wei-Huan
Liu, Duen-Ren
Huang, Yang
Zhao, Na
author_sort Lee, Shin-Jye
collection PubMed
description In the era of bathing in big data, it is common to see enormous amounts of data generated daily. As for the medical industry, not only could we collect a large amount of data, but also see each data set with a great number of features. When the number of features is ramping up, a common dilemma is adding computational cost during inferring. To address this concern, the data rotational method by PCA in tree-based methods shows a path. This work tries to enhance this path by proposing an ensemble classification method with an AdaBoost mechanism in random, automatically generating rotation subsets termed Random RotBoost. The random rotation process has replaced the manual pre-defined number of subset features (free pre-defined process). Therefore, with the ensemble of the multiple AdaBoost-based classifier, overfitting problems can be avoided, thus reinforcing the robustness. In our experiments with real-world medical data sets, Random RotBoost reaches better classification performance when compared with existing methods. Thus, with the help from our proposed method, the quality of clinical decisions can potentially be enhanced and supported in medical tasks.
format Online
Article
Text
id pubmed-9140905
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-91409052022-05-28 Random RotBoost: An Ensemble Classification Method Based on Rotation Forest and AdaBoost in Random Subsets and Its Application to Clinical Decision Support Lee, Shin-Jye Tseng, Ching-Hsun Yang, Hui-Yu Jin, Xin Jiang, Qian Pu, Bin Hu, Wei-Huan Liu, Duen-Ren Huang, Yang Zhao, Na Entropy (Basel) Article In the era of bathing in big data, it is common to see enormous amounts of data generated daily. As for the medical industry, not only could we collect a large amount of data, but also see each data set with a great number of features. When the number of features is ramping up, a common dilemma is adding computational cost during inferring. To address this concern, the data rotational method by PCA in tree-based methods shows a path. This work tries to enhance this path by proposing an ensemble classification method with an AdaBoost mechanism in random, automatically generating rotation subsets termed Random RotBoost. The random rotation process has replaced the manual pre-defined number of subset features (free pre-defined process). Therefore, with the ensemble of the multiple AdaBoost-based classifier, overfitting problems can be avoided, thus reinforcing the robustness. In our experiments with real-world medical data sets, Random RotBoost reaches better classification performance when compared with existing methods. Thus, with the help from our proposed method, the quality of clinical decisions can potentially be enhanced and supported in medical tasks. MDPI 2022-04-28 /pmc/articles/PMC9140905/ /pubmed/35626502 http://dx.doi.org/10.3390/e24050617 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Lee, Shin-Jye
Tseng, Ching-Hsun
Yang, Hui-Yu
Jin, Xin
Jiang, Qian
Pu, Bin
Hu, Wei-Huan
Liu, Duen-Ren
Huang, Yang
Zhao, Na
Random RotBoost: An Ensemble Classification Method Based on Rotation Forest and AdaBoost in Random Subsets and Its Application to Clinical Decision Support
title Random RotBoost: An Ensemble Classification Method Based on Rotation Forest and AdaBoost in Random Subsets and Its Application to Clinical Decision Support
title_full Random RotBoost: An Ensemble Classification Method Based on Rotation Forest and AdaBoost in Random Subsets and Its Application to Clinical Decision Support
title_fullStr Random RotBoost: An Ensemble Classification Method Based on Rotation Forest and AdaBoost in Random Subsets and Its Application to Clinical Decision Support
title_full_unstemmed Random RotBoost: An Ensemble Classification Method Based on Rotation Forest and AdaBoost in Random Subsets and Its Application to Clinical Decision Support
title_short Random RotBoost: An Ensemble Classification Method Based on Rotation Forest and AdaBoost in Random Subsets and Its Application to Clinical Decision Support
title_sort random rotboost: an ensemble classification method based on rotation forest and adaboost in random subsets and its application to clinical decision support
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9140905/
https://www.ncbi.nlm.nih.gov/pubmed/35626502
http://dx.doi.org/10.3390/e24050617
work_keys_str_mv AT leeshinjye randomrotboostanensembleclassificationmethodbasedonrotationforestandadaboostinrandomsubsetsanditsapplicationtoclinicaldecisionsupport
AT tsengchinghsun randomrotboostanensembleclassificationmethodbasedonrotationforestandadaboostinrandomsubsetsanditsapplicationtoclinicaldecisionsupport
AT yanghuiyu randomrotboostanensembleclassificationmethodbasedonrotationforestandadaboostinrandomsubsetsanditsapplicationtoclinicaldecisionsupport
AT jinxin randomrotboostanensembleclassificationmethodbasedonrotationforestandadaboostinrandomsubsetsanditsapplicationtoclinicaldecisionsupport
AT jiangqian randomrotboostanensembleclassificationmethodbasedonrotationforestandadaboostinrandomsubsetsanditsapplicationtoclinicaldecisionsupport
AT pubin randomrotboostanensembleclassificationmethodbasedonrotationforestandadaboostinrandomsubsetsanditsapplicationtoclinicaldecisionsupport
AT huweihuan randomrotboostanensembleclassificationmethodbasedonrotationforestandadaboostinrandomsubsetsanditsapplicationtoclinicaldecisionsupport
AT liuduenren randomrotboostanensembleclassificationmethodbasedonrotationforestandadaboostinrandomsubsetsanditsapplicationtoclinicaldecisionsupport
AT huangyang randomrotboostanensembleclassificationmethodbasedonrotationforestandadaboostinrandomsubsetsanditsapplicationtoclinicaldecisionsupport
AT zhaona randomrotboostanensembleclassificationmethodbasedonrotationforestandadaboostinrandomsubsetsanditsapplicationtoclinicaldecisionsupport