Binary classification with Fuzzy-Bayesian logistic regression using Gaussian fuzzy numbers

Georgios Charizanos , Haydar Demirhan , Duygu İçen
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Abstract

Binary classification is a critical task in pattern recognition applications in artificial intelligence and machine learning. The main weakness of binary classifiers is their sensitivity towards the imbalance in the number of observations in the binary classes and separation by a subset of features. Although various robust approaches are introduced against these issues, they need prolonged runtimes, limiting their applicability in artificial intelligence applications or for large datasets. In this study, we introduce a new binary classification framework called the fuzzy-Bayesian logistic regression, which incorporates robust Bayesian logistic regression with fuzzy classification using Gaussian fuzzy numbers. The proposed method improves classification performance while providing significant gains in computation time. We benchmark the proposed method with eight fuzzy, Bayesian, and machine learning classifiers using seventeen datasets. The results indicate that the fuzzy-Bayesian logistic regression outperforms all benchmark methods across all datasets in terms of six performance indicators. Moreover, the proposed method is shown to be significantly more efficient than its closest competitor, improving computational efficiency. The proposed method provides a promising binary classifier for a wide range of applications with its computational efficiency and robustness towards imbalance and separation issues in the data.

Abstract Image

基于高斯模糊数的模糊贝叶斯逻辑回归二元分类
二值分类是人工智能和机器学习中模式识别应用的一项关键任务。二分类器的主要缺点是它们对二分类中观测值数量的不平衡和特征子集分离的敏感性。尽管针对这些问题引入了各种健壮的方法,但它们需要较长的运行时间,限制了它们在人工智能应用程序或大型数据集中的适用性。在本研究中,我们引入了一种新的二元分类框架,称为模糊贝叶斯逻辑回归,它将鲁棒贝叶斯逻辑回归与使用高斯模糊数的模糊分类相结合。该方法提高了分类性能,同时在计算时间上有了显著的提高。我们使用17个数据集,用8个模糊、贝叶斯和机器学习分类器对所提出的方法进行基准测试。结果表明,在所有数据集上,模糊贝叶斯逻辑回归在六个性能指标上优于所有基准方法。此外,该方法的计算效率明显高于其最接近的竞争对手,提高了计算效率。该方法以其计算效率和对数据不平衡和分离问题的鲁棒性为广泛的应用提供了一种有前途的二值分类器。
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CiteScore
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