一种新的贝叶斯方法拟合参数和非参数模型到噪声数据

M. Werman, D. Keren
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引用次数: 9

摘要

我们提供了一个简单的模型,参数和非参数拟合到噪声数据,这解决了一些与经典MSE算法相关的问题。这是通过考虑模型上的每个点作为每个数据点的可能来源来实现的。该范式还允许解决经典MSE方法中未定义的问题,例如拟合段(而不是线)。它是无偏的,对于一般曲线,即使在存在强不连续的情况下,也能得到很好的结果。结果显示了一些拟合问题,包括线,圆,段,和一般曲线,污染高斯和均匀噪声。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel Bayesian method for fitting parametric and non-parametric models to noisy data
We offer a simple paradigm for fitting models, parametric and non-parametric, to noisy data, which resolves some of the problems associated with classic MSE algorithms. This is done by considering each point on the model as a possible source for each data point. The paradigm also allows to solve problems which are not defined in the classical MSE approach, such as fitting a segment (as opposed to a line). It is shown to be non-biased, and to achieve excellent results for general curves, even in the presence of strong discontinuities. Results are shown for a number of fitting problems, including lines, circles, segments, and general curves, contaminated by Gaussian and uniform noise.
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