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A central limit theorem with application to inference in \(\alpha\)-stable regression models
2016
Neural Information Processing Systems
It is well known that the α-stable distribution, while having no closed form density function in the general case, admits a Poisson series representation (PSR) in which the terms of the series are a function of the arrival times of a unit rate Poisson process. In our previous work we have shown how to carry out inference for regression models using this series representation, which leads to a very convenient conditionally Gaussian framework, amenable to straightforward Gaussian inference
dblp:conf/nips/RiabizAG16
fatcat:i4btdymzbzeq5elz5ml35xtk3e