Cargando…

Optimizing Machine Learning Algorithms for Landslide Susceptibility Mapping along the Karakoram Highway, Gilgit Baltistan, Pakistan: A Comparative Study of Baseline, Bayesian, and Metaheuristic Hyperparameter Optimization Techniques

Algorithms for machine learning have found extensive use in numerous fields and applications. One important aspect of effectively utilizing these algorithms is tuning the hyperparameters to match the specific task at hand. The selection and configuration of hyperparameters directly impact the perfor...

Descripción completa

Detalles Bibliográficos
Autores principales: Abbas, Farkhanda, Zhang, Feng, Ismail, Muhammad, Khan, Garee, Iqbal, Javed, Alrefaei, Abdulwahed Fahad, Albeshr, Mohammed Fahad
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10422586/
https://www.ncbi.nlm.nih.gov/pubmed/37571627
http://dx.doi.org/10.3390/s23156843
_version_ 1785089247184683008
author Abbas, Farkhanda
Zhang, Feng
Ismail, Muhammad
Khan, Garee
Iqbal, Javed
Alrefaei, Abdulwahed Fahad
Albeshr, Mohammed Fahad
author_facet Abbas, Farkhanda
Zhang, Feng
Ismail, Muhammad
Khan, Garee
Iqbal, Javed
Alrefaei, Abdulwahed Fahad
Albeshr, Mohammed Fahad
author_sort Abbas, Farkhanda
collection PubMed
description Algorithms for machine learning have found extensive use in numerous fields and applications. One important aspect of effectively utilizing these algorithms is tuning the hyperparameters to match the specific task at hand. The selection and configuration of hyperparameters directly impact the performance of machine learning models. Achieving optimal hyperparameter settings often requires a deep understanding of the underlying models and the appropriate optimization techniques. While there are many automatic optimization techniques available, each with its own advantages and disadvantages, this article focuses on hyperparameter optimization for well-known machine learning models. It explores cutting-edge optimization methods such as metaheuristic algorithms, deep learning-based optimization, Bayesian optimization, and quantum optimization, and our paper focused mainly on metaheuristic and Bayesian optimization techniques and provides guidance on applying them to different machine learning algorithms. The article also presents real-world applications of hyperparameter optimization by conducting tests on spatial data collections for landslide susceptibility mapping. Based on the experiment’s results, both Bayesian optimization and metaheuristic algorithms showed promising performance compared to baseline algorithms. For instance, the metaheuristic algorithm boosted the random forest model’s overall accuracy by 5% and 3%, respectively, from baseline optimization methods GS and RS, and by 4% and 2% from baseline optimization methods GA and PSO. Additionally, for models like KNN and SVM, Bayesian methods with Gaussian processes had good results. When compared to the baseline algorithms RS and GS, the accuracy of the KNN model was enhanced by BO-TPE by 1% and 11%, respectively, and by BO-GP by 2% and 12%, respectively. For SVM, BO-TPE outperformed GS and RS by 6% in terms of performance, while BO-GP improved results by 5%. The paper thoroughly discusses the reasons behind the efficiency of these algorithms. By successfully identifying appropriate hyperparameter configurations, this research paper aims to assist researchers, spatial data analysts, and industrial users in developing machine learning models more effectively. The findings and insights provided in this paper can contribute to enhancing the performance and applicability of machine learning algorithms in various domains.
format Online
Article
Text
id pubmed-10422586
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-104225862023-08-13 Optimizing Machine Learning Algorithms for Landslide Susceptibility Mapping along the Karakoram Highway, Gilgit Baltistan, Pakistan: A Comparative Study of Baseline, Bayesian, and Metaheuristic Hyperparameter Optimization Techniques Abbas, Farkhanda Zhang, Feng Ismail, Muhammad Khan, Garee Iqbal, Javed Alrefaei, Abdulwahed Fahad Albeshr, Mohammed Fahad Sensors (Basel) Article Algorithms for machine learning have found extensive use in numerous fields and applications. One important aspect of effectively utilizing these algorithms is tuning the hyperparameters to match the specific task at hand. The selection and configuration of hyperparameters directly impact the performance of machine learning models. Achieving optimal hyperparameter settings often requires a deep understanding of the underlying models and the appropriate optimization techniques. While there are many automatic optimization techniques available, each with its own advantages and disadvantages, this article focuses on hyperparameter optimization for well-known machine learning models. It explores cutting-edge optimization methods such as metaheuristic algorithms, deep learning-based optimization, Bayesian optimization, and quantum optimization, and our paper focused mainly on metaheuristic and Bayesian optimization techniques and provides guidance on applying them to different machine learning algorithms. The article also presents real-world applications of hyperparameter optimization by conducting tests on spatial data collections for landslide susceptibility mapping. Based on the experiment’s results, both Bayesian optimization and metaheuristic algorithms showed promising performance compared to baseline algorithms. For instance, the metaheuristic algorithm boosted the random forest model’s overall accuracy by 5% and 3%, respectively, from baseline optimization methods GS and RS, and by 4% and 2% from baseline optimization methods GA and PSO. Additionally, for models like KNN and SVM, Bayesian methods with Gaussian processes had good results. When compared to the baseline algorithms RS and GS, the accuracy of the KNN model was enhanced by BO-TPE by 1% and 11%, respectively, and by BO-GP by 2% and 12%, respectively. For SVM, BO-TPE outperformed GS and RS by 6% in terms of performance, while BO-GP improved results by 5%. The paper thoroughly discusses the reasons behind the efficiency of these algorithms. By successfully identifying appropriate hyperparameter configurations, this research paper aims to assist researchers, spatial data analysts, and industrial users in developing machine learning models more effectively. The findings and insights provided in this paper can contribute to enhancing the performance and applicability of machine learning algorithms in various domains. MDPI 2023-08-01 /pmc/articles/PMC10422586/ /pubmed/37571627 http://dx.doi.org/10.3390/s23156843 Text en © 2023 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
Abbas, Farkhanda
Zhang, Feng
Ismail, Muhammad
Khan, Garee
Iqbal, Javed
Alrefaei, Abdulwahed Fahad
Albeshr, Mohammed Fahad
Optimizing Machine Learning Algorithms for Landslide Susceptibility Mapping along the Karakoram Highway, Gilgit Baltistan, Pakistan: A Comparative Study of Baseline, Bayesian, and Metaheuristic Hyperparameter Optimization Techniques
title Optimizing Machine Learning Algorithms for Landslide Susceptibility Mapping along the Karakoram Highway, Gilgit Baltistan, Pakistan: A Comparative Study of Baseline, Bayesian, and Metaheuristic Hyperparameter Optimization Techniques
title_full Optimizing Machine Learning Algorithms for Landslide Susceptibility Mapping along the Karakoram Highway, Gilgit Baltistan, Pakistan: A Comparative Study of Baseline, Bayesian, and Metaheuristic Hyperparameter Optimization Techniques
title_fullStr Optimizing Machine Learning Algorithms for Landslide Susceptibility Mapping along the Karakoram Highway, Gilgit Baltistan, Pakistan: A Comparative Study of Baseline, Bayesian, and Metaheuristic Hyperparameter Optimization Techniques
title_full_unstemmed Optimizing Machine Learning Algorithms for Landslide Susceptibility Mapping along the Karakoram Highway, Gilgit Baltistan, Pakistan: A Comparative Study of Baseline, Bayesian, and Metaheuristic Hyperparameter Optimization Techniques
title_short Optimizing Machine Learning Algorithms for Landslide Susceptibility Mapping along the Karakoram Highway, Gilgit Baltistan, Pakistan: A Comparative Study of Baseline, Bayesian, and Metaheuristic Hyperparameter Optimization Techniques
title_sort optimizing machine learning algorithms for landslide susceptibility mapping along the karakoram highway, gilgit baltistan, pakistan: a comparative study of baseline, bayesian, and metaheuristic hyperparameter optimization techniques
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10422586/
https://www.ncbi.nlm.nih.gov/pubmed/37571627
http://dx.doi.org/10.3390/s23156843
work_keys_str_mv AT abbasfarkhanda optimizingmachinelearningalgorithmsforlandslidesusceptibilitymappingalongthekarakoramhighwaygilgitbaltistanpakistanacomparativestudyofbaselinebayesianandmetaheuristichyperparameteroptimizationtechniques
AT zhangfeng optimizingmachinelearningalgorithmsforlandslidesusceptibilitymappingalongthekarakoramhighwaygilgitbaltistanpakistanacomparativestudyofbaselinebayesianandmetaheuristichyperparameteroptimizationtechniques
AT ismailmuhammad optimizingmachinelearningalgorithmsforlandslidesusceptibilitymappingalongthekarakoramhighwaygilgitbaltistanpakistanacomparativestudyofbaselinebayesianandmetaheuristichyperparameteroptimizationtechniques
AT khangaree optimizingmachinelearningalgorithmsforlandslidesusceptibilitymappingalongthekarakoramhighwaygilgitbaltistanpakistanacomparativestudyofbaselinebayesianandmetaheuristichyperparameteroptimizationtechniques
AT iqbaljaved optimizingmachinelearningalgorithmsforlandslidesusceptibilitymappingalongthekarakoramhighwaygilgitbaltistanpakistanacomparativestudyofbaselinebayesianandmetaheuristichyperparameteroptimizationtechniques
AT alrefaeiabdulwahedfahad optimizingmachinelearningalgorithmsforlandslidesusceptibilitymappingalongthekarakoramhighwaygilgitbaltistanpakistanacomparativestudyofbaselinebayesianandmetaheuristichyperparameteroptimizationtechniques
AT albeshrmohammedfahad optimizingmachinelearningalgorithmsforlandslidesusceptibilitymappingalongthekarakoramhighwaygilgitbaltistanpakistanacomparativestudyofbaselinebayesianandmetaheuristichyperparameteroptimizationtechniques