23,044 research outputs found
Bayesian sequential change diagnosis
Sequential change diagnosis is the joint problem of detection and
identification of a sudden and unobservable change in the distribution of a
random sequence. In this problem, the common probability law of a sequence of
i.i.d. random variables suddenly changes at some disorder time to one of
finitely many alternatives. This disorder time marks the start of a new regime,
whose fingerprint is the new law of observations. Both the disorder time and
the identity of the new regime are unknown and unobservable. The objective is
to detect the regime-change as soon as possible, and, at the same time, to
determine its identity as accurately as possible. Prompt and correct diagnosis
is crucial for quick execution of the most appropriate measures in response to
the new regime, as in fault detection and isolation in industrial processes,
and target detection and identification in national defense. The problem is
formulated in a Bayesian framework. An optimal sequential decision strategy is
found, and an accurate numerical scheme is described for its implementation.
Geometrical properties of the optimal strategy are illustrated via numerical
examples. The traditional problems of Bayesian change-detection and Bayesian
sequential multi-hypothesis testing are solved as special cases. In addition, a
solution is obtained for the problem of detection and identification of
component failure(s) in a system with suspended animation
Sequential Bayesian updating for Big Data
The velocity, volume, and variety of big data present both challenges and opportunities for cognitive science. We introduce sequential Bayesian updat-ing as a tool to mine these three core properties. In the Bayesian approach, we summarize the current state of knowledge regarding parameters in terms of their posterior distributions, and use these as prior distributions when new data become available. Crucially, we construct posterior distributions in such a way that we avoid having to repeat computing the likelihood of old data as new data become available, allowing the propagation of information without great computational demand. As a result, these Bayesian methods allow continuous inference on voluminous information streams in a timely manner. We illustrate the advantages of sequential Bayesian updating with data from the MindCrowd project, in which crowd-sourced data are used to study Alzheimer’s Dementia. We fit an extended LATER (Linear Ap-proach to Threshold with Ergodic Rate) model to reaction time data from the project in order to separate two distinct aspects of cognitive functioning: speed of information accumulation and caution
Bayesian outliers functions for linear models.
This paper introduces two new diagnostic tools: the Bayesian outlier curve (BOC) and the Sequential Bayesian outlier curve (SEBOC). Both are built using the posterior odds for every possible number of outliers in a scale contaminated linear model. It is shown that these functions have a cross-validation interpretation, and can be useful to judge the robustness of the fitted model. The computation of these curves is carried out using ideas from stratified sampling.Cross-validations; Diagnosis; Mixture models; Model selection;
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