强化化学计量学中的决策过程:特征选择与算法优化

Samer Muthana Sarsam
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引用次数: 10

摘要

随着社会的发展,数据挖掘方案在化学计量学领域的应用越来越多,这使得该领域非常受欢迎。然而,机器学习算法在选择最佳算法参数以及选择影响决策过程的数据特征方面面临挑战。有限的研究深入探索了化学计量学领域中增强决策支持系统的方法。因此,本研究旨在通过提出一种鲁棒的方法来强化决策过程:“特征选择”和“算法优化”结合“交叉验证”。采用分层十倍交叉验证方法,一方面对多层感知器和偏最小二乘回归算法的参数选择进行评估,另一方面选择最佳预测特征。结果表明,多层感知器模型优于偏最小二乘回归模型。这证实了多层感知器可以有效地应用于化学计量学领域。我们的结果还列出了所使用数据的选定特性。因此,目前的研究打开了提升工业的大门,一般来说,特别是与化学计量学相关的制造业。同时也说明了在化学计量学领域中采用交叉验证进行模型选择和参数优化对提高决策质量的重要意义。
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Reinforcing the Decision-making Process in Chemometrics: Feature Selection and Algorithm Optimization
With the development of society, applying data mining schemes in the chemometrics discipline is increasing rapidly which makes this field very popular. However, machine learning algorithms face challenges in selecting best algorithm's parameters as well as selecting the features of the data that affect the decision-making process. Limited studies have in-depth explored ways of enhancing decision support systems in the chemometrics domain. Therefore, this study aims at reinforcing the decision-making process through proposing a robust approach: "feature selection" and "algorithm optimization" in conjunction with "cross-validation". Precisely, stratified tenfold cross-validation method was utilized to evaluate the parameter selection of both Multilayer perceptron and Partial least-squares regression algorithms, from the one hand, and to select the best prediction features, from the other hand. Results exhibited that Multilayer perceptron model overperformed partial least-squares regression model. This confirms that Multilayer perceptron can be efficiently used in the chemometrics discipline. Our result also listed the selected feature for the utilized data. Consequently, current study opens the door for enhancing the industry, generally, and the chemometrics-related manufacturing, especially. It also sheds some light on the significance of adopting cross-validation for model selection and parameter optimization in the chemometrics domain for improving the quality of the decision-making process.
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