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Correlation, Independance and Inverse Modeling

机译:相关,独立和逆建模

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摘要

Learning from examples has a wide number of forms depending on what is to be learned from which available information. One of these form is y = f(x) where the input-output pair (x, y) is the available information and f represents the process mapping x ∈ χ to y ∈ y. In general and for real world problems, it is not reasonnable to expect having the exact representation of f. A fortiori when the dimension of x is large and the number of examples is little. In this paper, we introduce a new model, capable to reduce the complexity of many ill-posed problems without loss of generality. The underlying Bayesian artifice is presented as an alternative to the currently used frequency approaches which does not offer a compelling criterion in the case of high dimensional problems.
机译:从示例中学习有多种形式,具体取决于要从哪些可用信息中学习什么。这些形式之一是y = f(x),其中输入输出对(x,y)是可用信息,f表示过程映射x∈χ到y∈y。通常,对于现实世界中的问题,没有理由期望拥有f的精确表示。 x的维数较大且示例数较少时的一个优势。在本文中,我们介绍了一种新模型,该模型能够在不失去一般性的情况下降低许多不适定问题的复杂性。提出了潜在的贝叶斯技巧作为当前使用的频率方法的替代方法,该方法在高维问题的情况下不提供令人信服的标准。

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