Introduce structural equation modelling to machine learning problems for building an explainable and persuasive model

Jiarui Li, T. Sawaragi, Y. Horiguchi
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引用次数: 8

Abstract

With the development of artificial intelligence technologies, the high accuracy of machine learning methods has become a non-unique standard. People are beginning to be more concerned about the understandability between humans and machines. The interference procedure of the machines is hoped to accord with human thinking as much as possible, which has spawned the recent and ongoing demands for developing explainable models. The present study proposes a new explainable and persuasive model for machine learning problems by introducing Structural Equation Modelling into the picture. Six parts make up the model, from data collection to model evaluation. The model can be used for data analysis, machine learning, and causal analysis. The proposed model is also transparent and can be interpreted from design to application. A practical experiment shows its effectiveness in a healthcare problem.
将结构方程建模引入机器学习问题,以建立一个可解释和有说服力的模型
随着人工智能技术的发展,机器学习方法的高精度已经成为一个非唯一的标准。人们开始更加关注人与机器之间的可理解性。人们希望机器的干扰过程尽可能符合人类的思维,这催生了近期和持续发展的可解释模型的需求。本研究通过引入结构方程模型,为机器学习问题提出了一个新的可解释和有说服力的模型。从数据收集到模型评价,共分为六个部分。该模型可用于数据分析、机器学习和因果分析。所提出的模型也是透明的,并且可以从设计到应用进行解释。一个实际的实验证明了它在医疗保健问题上的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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