RoBoSS: A Robust, Bounded, Sparse, and Smooth Loss Function for Supervised Learning

Mushir Akhtar;M. Tanveer;Mohd. Arshad
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Abstract

In the domain of machine learning, the significance of the loss function is paramount, especially in supervised learning tasks. It serves as a fundamental pillar that profoundly influences the behavior and efficacy of supervised learning algorithms. Traditional loss functions, though widely used, often struggle to handle outlier-prone and high-dimensional data, resulting in suboptimal outcomes and slow convergence during training. In this paper, we address the aforementioned constraints by proposing a novel robust, bounded, sparse, and smooth (RoBoSS) loss function for supervised learning. Further, we incorporate the RoBoSS loss within the framework of support vector machine (SVM) and introduce a new robust algorithm named $\mathcal {L}_{RoBoSS}$ -SVM. For the theoretical analysis, the classification-calibrated property and generalization ability are also presented. These investigations are crucial for gaining deeper insights into the robustness of the RoBoSS loss function in classification problems and its potential to generalize well to unseen data. To validate the potency of the proposed $\mathcal {L}_{RoBoSS}$ -SVM, we assess it on 88 benchmark datasets from KEEL and UCI repositories. Further, to rigorously evaluate its performance in challenging scenarios, we conducted an assessment using datasets intentionally infused with outliers and label noise. Additionally, to exemplify the effectiveness of $\mathcal {L}_{RoBoSS}$ -SVM within the biomedical domain, we evaluated it on two medical datasets: the electroencephalogram (EEG) signal dataset and the breast cancer (BreaKHis) dataset. The numerical results substantiate the superiority of the proposed $\mathcal {L}_{RoBoSS}$ -SVM model, both in terms of its remarkable generalization performance and its efficiency in training time.
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RoBoSS:用于监督学习的鲁棒、有界、稀疏且平滑的损失函数
在机器学习领域,损失函数的重要性是至关重要的,特别是在监督学习任务中。它是深刻影响监督学习算法的行为和有效性的基本支柱。传统的损失函数虽然被广泛使用,但往往难以处理容易出现异常值的高维数据,导致训练过程中的次优结果和缓慢的收敛。在本文中,我们通过提出一种新的用于监督学习的鲁棒、有界、稀疏和平滑(RoBoSS)损失函数来解决上述约束。进一步,我们将RoBoSS损失纳入支持向量机(SVM)的框架中,并引入了一种新的鲁棒算法$\mathcal {L}_{RoBoSS}$-SVM。在理论分析方面,给出了该方法的分类标定性能和泛化能力。这些研究对于深入了解RoBoSS损失函数在分类问题中的鲁棒性及其推广到未知数据的潜力至关重要。为了验证所提出的$\mathcal {L}_{RoBoSS}$-SVM的有效性,我们在来自KEEL和UCI存储库的88个基准数据集上对其进行了评估。此外,为了严格评估其在具有挑战性的场景中的性能,我们使用故意注入异常值和标签噪声的数据集进行了评估。此外,为了举例说明$\mathcal {L}_{RoBoSS}$-SVM在生物医学领域的有效性,我们在两个医学数据集上进行了评估:脑电图(EEG)信号数据集和乳腺癌(BreaKHis)数据集。数值结果证实了所提出的$\mathcal {L}_{RoBoSS}$-SVM模型在泛化性能和训练时间效率方面的优越性。
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