主权国家信用评级的 K-近邻距离度量新方法

IF 1.2 4区 综合性期刊 Q3 MULTIDISCIPLINARY SCIENCES
Ali İhsan Çetin , Ali Hakan Büyüklü
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引用次数: 0

摘要

本研究介绍了特征重要性 K 近邻算法(FIKNN),这是对 K 近邻算法(KNN)的创新调整,专门用于主权国家信用评级分类。其主要目的是通过整合源自随机森林算法的特征重要性机制来提高 KNN 的预测准确性,该机制可优先考虑重要特征并减少不相关特征的影响,同时完善 KNN 中的距离计算。利用主权信用评级的综合数据集,使用各种特征集和自举样本对 FIKNN 和传统 KNN 的性能进行了评估。FIKNN 模型的分类准确率始终比标准 KNN 高出约 1%,这归功于根据重要性调整特征影响的加权距离度量。主要研究结果表明,FIKNN 能有效管理具有不同特征相关性的数据集,并证明特征多样性与模型性能之间存在正相关关系。未来的研究将探索其他距离度量和完善特征重要性加权机制,以扩大 FIKNN 在各种预测任务中的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new approach to K-nearest neighbors distance metrics on sovereign country credit rating
This study introduces feature importance K-nearest neighbors (FIKNN), an innovative adaptation of the K-nearest neighbors (KNN) algorithm tailored for classifying sovereign country credit ratings. The primary objective is to enhance KNN's predictive accuracy by integrating a feature importance mechanism derived from the random forest algorithm, which prioritizes significant features and reduces the impact of less relevant ones, refining the distance computation within KNN. Utilizing a comprehensive dataset of sovereign credit ratings, the performance of FIKNN was assessed against traditional KNN using various feature sets and bootstrap samples. The FIKNN model consistently outperformed the standard KNN by approximately 1% in classification accuracy, attributed to the weighted distance metric adjusting feature influence based on importance. Key findings indicate that FIKNN effectively manages datasets with varying feature relevance and demonstrates a positive correlation between feature diversity and model performance. Future research will explore other distance metrics and refine the feature importance weighting mechanism to broaden FIKNN's applicability in diverse predictive tasks.
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来源期刊
Kuwait Journal of Science
Kuwait Journal of Science MULTIDISCIPLINARY SCIENCES-
CiteScore
1.60
自引率
28.60%
发文量
132
期刊介绍: Kuwait Journal of Science (KJS) is indexed and abstracted by major publishing houses such as Chemical Abstract, Science Citation Index, Current contents, Mathematics Abstract, Micribiological Abstracts etc. KJS publishes peer-review articles in various fields of Science including Mathematics, Computer Science, Physics, Statistics, Biology, Chemistry and Earth & Environmental Sciences. In addition, it also aims to bring the results of scientific research carried out under a variety of intellectual traditions and organizations to the attention of specialized scholarly readership. As such, the publisher expects the submission of original manuscripts which contain analysis and solutions about important theoretical, empirical and normative issues.
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