Optimization of Polynomial Functions on the NuSVR Algorithm Based on Machine Learning: Case Studies on Regression Datasets
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Published:2023-05-20
Issue:2
Volume:10
Page:151-158
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ISSN:2460-0040
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Container-title:Scientific Journal of Informatics
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language:
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Short-container-title:SJI
Author:
Budi Setyo,Akrom Muhamad,Trisnapradika Gustina Alfa,Sutojo Totok,Prabowo Wahyu Aji Eko
Abstract
Purpose: Experimental studies are usually costly, time-consuming, and resource-intensive when it comes to investigating prospective corrosion inhibitor compounds. Machine learning (ML) based on the quantitative structure-property relationship model (QSPR) has become a massive method for testing the effectiveness of chemical compounds as corrosion inhibitors. The main challenge in the ML method is to design a model that produces high prediction accuracy so that the properties of a material can be predicted accurately. In this study, we examine the performance of polynomial functions in the ML-based NuSVR algorithm in evaluating the regression dataset of corrosion inhibition efficiency of pyridine-quinoline compounds.Methods: Polynomial functions for NuSVR algorithm-based ML.Result: The outcomes demonstrate that the NuSVR model's prediction ability is greatly enhanced by the application of polynomial functions. Originality: The combination of polynomial functions and deep machine learning based NuSVR algorithms to increase the accuracy of predictive models.
Publisher
Universitas Negeri Semarang
Cited by
2 articles.
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