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Generalized Prediction Intervals for Arbitrary Distributed High-Dimensional Data
Published 19 Sep 2008 in cs.CV, cs.AI, and cs.LG | (0809.3352v1)
Abstract: This paper generalizes the traditional statistical concept of prediction intervals for arbitrary probability density functions in high-dimensional feature spaces by introducing significance level distributions, which provides interval-independent probabilities for continuous random variables. The advantage of the transformation of a probability density function into a significance level distribution is that it enables one-class classification or outlier detection in a direct manner.
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