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首页> 外文期刊>Journal of Statistical Planning and Inference >An efficient model-free estimation of multiclass conditional probability
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An efficient model-free estimation of multiclass conditional probability

机译:一种高效的无模型的多类条件概率估计

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摘要

Conventional multiclass conditional probability estimation methods, such as Fisher's discriminate analysis and logistic regression, often require restrictive distributional model assumption. In this paper, a model-free estimation method is proposed to estimate multiclass conditional probability through a series of conditional quantile regression functions. Specifically, the conditional class probability is formulated as a difference of corresponding cumulative distribution functions, where the cumulative distribution functions can be converted from the estimated conditional quantile regression functions. The proposed estimation method is also efficient as its computation cost does not increase exponentially with the number of classes. The theoretical and numerical studies demonstrate that the proposed estimation method is highly competitive against the existing competitors, especially when the number of classes is relatively large.
机译:常规的多类条件概率估计方法(例如Fisher的判别分析和逻辑回归)通常需要限制性的分布模型假设。本文提出了一种无模型估计方法,它通过一系列条件分位数回归函数来估计多类条件概率。具体地,将条件类别概率表述为对应的累积分布函数的差,其中可以从估计的条件分位数回归函数转换累积分布函数。所提出的估计方法也是有效的,因为其计算成本不会随着类别的数量呈指数增加。理论和数值研究表明,所提出的估计方法与现有竞争者相比具有很高的竞争力,尤其是当类别数量相对较大时。

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