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Research on Machine Learning Methods for Intelligent Decision Problems

机译:智能决策问题的机器学习方法研究

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摘要

In order to improve the accuracy, objectivity and scientificity of decision-making, people propose to use machine learning to automatically learn data and extract complex patterns from it, so as to make objective and fair decisions. Machine learning provides a new way to effectively solve decision support problems in many fields by virtue of its powerful ability to automatically learn data and extract complex patterns from them to make intelligent decisions. This paper mainly studies the construction of a supervisory classification model with strong generalization ability to solve complex decision-making problems such as disease diagnosis and financial risk prediction. Supervised classification learning methods such as SVM and FKNN are mainly studied. Diagnostic decision support methods based on combination RS and SVM, combined LFDA and SVM are proposed.
机译:为了提高决策的准确性,客观性和科学性,人们提出使用机器学习来自动学习数据并从中提取复杂的模式,从而做出客观公正的决策。机器学习凭借其自动学习数据并从中提取复杂模式以做出智能决策的强大功能,提供了一种有效解决许多领域决策支持问题的新方法。本文主要研究具有较强泛化能力的监督分类模型的构建,以解决疾病诊断和财务风险预测等复杂的决策问题。主要研究了监督分类学习方法,如SVM和FKNN。提出了基于RS和SVM,LFDA和SVM相结合的诊断决策支持方法。

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