用 CWBCM 方法确定机器学习中分类性能评估标准的重要性:COVID-19、糖尿病和甲状腺疾病案例研究

IF 6.7 2区 管理学 Q1 MANAGEMENT Omega-international Journal of Management Science Pub Date : 2024-04-09 DOI:10.1016/j.omega.2024.103096
Maede Parishani, Morteza Rasti-Barzoki
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引用次数: 0

摘要

多标准决策(MCDM)领域提出的方法通常用于模拟具有多重冲突标准的问题。在 MCDM 中,最重要的课题之一就是标准的权重。另一方面,分类被广泛应用于现实世界中的各种问题,如疾病诊断。为此,人们开发了多种算法。通过评估算法来评价每个问题的分类性能非常重要。对算法的评估包括多个相互冲突的标准;因此,可以将其视为一个多因素强迫管理问题。我们的目标是开发一种新的加权方法,可用于两类以上、涉及威胁人类生命风险的分类问题,并在加权时考虑不同疾病的次要特征。目前,现有的加权方法都无法满足这些要求。本研究提出了一种名为 "基于混淆矩阵的标准加权法(CWBCM)"的新方法,我们的创新之处在于首次用这种方法填补了所有这些空白。这种方法利用机器学习中的混淆矩阵精确计算标准的重要性。我们在三种疾病的六个不同数据集上实施了所提出的方法:COVID-19、甲状腺和糖尿病,并与香农和 AHP 两种常用方法进行了比较。此外,还使用了 TOPSIS 和 EDAS 两种方法对分类器进行排序。最后,结果表明,我们的方法在所有关键因素上都优于其他两种加权方法,并且具有其他方法所不具备的独特功能。
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CWBCM method to determine the importance of classification performance evaluation criteria in machine learning: Case studies of COVID-19, Diabetes, and Thyroid Disease

Problems with multiple conflicting criteria are usually modeled by the methods proposed in the field of Multi-Criteria Decision Making (MCDM). In MCDM, one of the most important topics is the weighting of criteria. On the other hand, classification is employed in numerous real-world issues, like disease diagnosis. Diverse algorithms have been developed for this purpose. It is important to evaluate the classification performance in every problem by evaluating algorithms. The evaluation of algorithms includes several conflicting criteria; Therefore, it can be represented as an MCDM problem. We aim to develop a new weighting method that can be used for the classification problem with more than two classes, involve the risk of threatening human life, and consider minor features for different diseases in weighting. At present, none of the existing weighting methods fulfill these requirements. This research presents a new method called “Criteria Weighting Based on Confusion Matrix (CWBCM)” and our innovation is that, for the first time, all these gaps are filled with this method. This method calculates the exact importance of criteria using the confusion matrix in machine learning. The proposed method has been implemented on six different datasets of three diseases: COVID-19, thyroid, and diabetes, and compared with two common methods, Shannon and AHP. Two methods, TOPSIS and EDAS, were also used to rank the classifiers. Finally, the results show that our method is superior to the other two weighting methods in all critical factors and has unique features that other methods do not have.

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来源期刊
Omega-international Journal of Management Science
Omega-international Journal of Management Science 管理科学-运筹学与管理科学
CiteScore
13.80
自引率
11.60%
发文量
130
审稿时长
56 days
期刊介绍: Omega reports on developments in management, including the latest research results and applications. Original contributions and review articles describe the state of the art in specific fields or functions of management, while there are shorter critical assessments of particular management techniques. Other features of the journal are the "Memoranda" section for short communications and "Feedback", a correspondence column. Omega is both stimulating reading and an important source for practising managers, specialists in management services, operational research workers and management scientists, management consultants, academics, students and research personnel throughout the world. The material published is of high quality and relevance, written in a manner which makes it accessible to all of this wide-ranging readership. Preference will be given to papers with implications to the practice of management. Submissions of purely theoretical papers are discouraged. The review of material for publication in the journal reflects this aim.
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