Method G: Uncertainty Quantification for Distributed Data Problems using Generalized Fiducial Inference
It is not unusual for a data analyst to encounter data sets distributed across several computers. This can happen for reasons such as privacy concerns, efficiency of likelihood evaluations, or just the sheer size of the whole data set. This presents new challenges to statisticians as even computing...
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Zusammenfassung: | It is not unusual for a data analyst to encounter data sets distributed
across several computers. This can happen for reasons such as privacy concerns,
efficiency of likelihood evaluations, or just the sheer size of the whole data
set. This presents new challenges to statisticians as even computing simple
summary statistics such as the median becomes computationally challenging.
Furthermore, if other advanced statistical methods are desired, novel
computational strategies are needed. In this paper we propose a new approach
for distributed analysis of massive data that is suitable for generalized
fiducial inference and is based on a careful implementation of a "divide and
conquer" strategy combined with importance sampling. The proposed approach
requires only small amount of communication between nodes, and is shown to be
asymptotically equivalent to using the whole data set. Unlike most existing
methods, the proposed approach produces uncertainty measures (such as
confidence intervals) in addition to point estimates for parameters of
interest. The proposed approach is also applied to the analysis of a large set
of solar images. |
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DOI: | 10.48550/arxiv.1805.07427 |