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Abundant Inverse Regression Using Sufficient Reduction and Its Applications

机译:充分约简的大量逆回归及其应用

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Statistical models such as linear regression drive numerous applications in computer vision and machine learning. The landscape of practical deployments of these formulations is dominated by forward regression models that estimate the parameters of a function mapping a set of p covariates, x, to a response variable, y. The less known alternative, Inverse Regression, offers various benefits that are much less explored in vision problems. The goal of this paper is to show how Inverse Regression in the "abundant" feature setting (i.e., many subsets of features are associated with the target label or response, as is the case for images), together with a statistical construction called Sufficient Reduction, yields highly flexible models that are a natural fit for model estimation tasks in vision. Specifically, we obtain formulations that provide relevance of individual covariates used in prediction, at the level of specific examples/samples - in a sense, explaining why a particular prediction was made. With no compromise in performance relative to other methods, an ability to interpret why a learning algorithm is behaving in a specific way for each prediction, adds significant value in numerous applications. We illustrate these properties and the benefits of Abundant Inverse Regression on three distinct applications.
机译:诸如线性回归之类的统计模型推动了计算机视觉和机器学习中的众多应用。这些公式的实际部署情况由前向回归模型控制,前向回归模型估计将一组p个协变量x映射到响应变量y的函数的参数。鲜为人知的替代方案“逆回归”具有多种优势,而这些优势在视力问题中很少得到探讨。本文的目的是展示“丰富”特征设置中的逆回归(即,许多特征子集与目标标签或响应相关联,如图像的情况),以及称为“充分归约”的统计构造生成高度灵活的模型,这些模型很自然地适合视觉中的模型估计任务。具体而言,从某种意义上讲,我们获得的公式可以在特定示例/样本的水平上提供预测中使用的各个协变量的相关性,从某种意义上讲,它解释了做出特定预测的原因。相对于其他方法,在性能上没有任何妥协,能够解释为什么学习算法针对每种预测以特定方式表现的能力,在众多应用中都具有重要的价值。我们在三个不同的应用程序上说明了这些属性以及大量逆回归的好处。

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