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STATISTICAL LIKELIHOOD REPRESENTATIONS OF PRIOR KNOWLEDGE IN MACHINE LEARNING

机译:在机器学习中先前知识的统计可能性表示

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摘要

We show that maximum a posteriori (MAP) statistical methods can be used in nonparametric machine learning problems in the same way as their current applications in parametric statistical problems, and give some examples of applications. This MAPN (MAP for nonparametric machine learning) paradigm can also reproduce much more transparently the same results as regularization methods in machine learning, spline algorithms in continuous complexity theory, and Baysian minimum risk methods.
机译:我们显示最大后验(地图)统计方法可以以与参数统计问题中的当前应用程序相同的方式,并提供一些应用程序的示例。此MAPN(非参数机学习的地图)范例还可以更透明地再现与机器学习中的正则化方法相同的结果,连续复杂性理论的样条算法和贝叶斯最小风险方法。

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