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Robust Model-Free Multiclass Probability Estimation

机译:鲁棒的无模型多类概率估计

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摘要

Classical statistical approaches for multiclass probability estimation are typically based on regression techniques such as multiple logistic regression, or density estimation approaches such as linear discriminant analysis (LDA) and quadratic discriminant analysis (QDA). These methods often make certain assumptions on the form of probability functions or on the underlying distributions of subclasses. In this article, we develop a model-free procedure to estimate multiclass probabilities based on large-margin classifiers. In particular, the new estimation scheme is employed by solving a series of weighted large-margin classifiers and then systematically extracting the probability information from these multiple classification rules. A main advantage of the proposed probability estimation technique is that it does not impose any strong parametric assumption on the underlying distribution and can be applied for a wide range of large-margin classification methods. A general computational algorithm is developed for class probability estimation. Furthermore, we establish asymptotic consistency of the probability estimates. Both simulated and real data examples are presented to illustrate competitive performance of the new approach and compare it with several other existing methods.
机译:用于多类概率估计的经典统计方法通常基于诸如多重逻辑回归之类的回归技术,或诸如线性判别分析(LDA)和二次判别分析(QDA)之类的密度估计方法。这些方法通常对概率函数的形式或子类的基础分布做出某些假设。在本文中,我们开发了一种无模型的过程来基于大利润分类器来估计多类概率。特别地,通过求解一系列加权的大余量分类器,然后从这些多个分类规则中系统地提取概率信息,来采用新的估计方案。所提出的概率估计技术的主要优点是,它不会对基础分布强加任何强大的参数假设,并且可以应用于各种大利润分类方法。开发了用于类别概率估计的通用计算算法。此外,我们建立了概率估计的渐近一致性。给出了模拟和实际数据示例,以说明新方法的竞争性能,并将其与其他几种现有方法进行比较。

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