Bayesian statistics
Bayesian statistics is a subset of the field of statistics in which the evidence about the true state of the world is expressed in terms of degrees of belief or, more specifically, Bayesian probabilities. Such an interpretation is only one of a number of interpretations of probability and there are other statistical techniques that are not based on "degrees of belief".

Bayesian statistics is a subset of the field of statistics in which the evidence about the true state of the world is expressed in terms of degrees of belief or, more specifically, Bayesian probabilities. Such an interpretation is only one of a number of interpretations of probabilityand there are other statistical techniques that are not based on "degrees of belief".

Contents

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  • 1 Outline
    • 1.1 Statistical inference
    • 1.2 Statistical modeling
    • 1.3 Design of experiments
    • 1.4 Statistical graphics
  • 2 External links

Outline[edit]

The general set of statistical techniques can be divided into a number of activities, many of which have special "Bayesian" versions.

Statistical inference[edit]

Bayesian inference is an approach to statistical inference, that is distinct from frequentist inference. It is specifically based on the use ofBayesian probabilities to summarize evidence.

Statistical modeling[edit]

The formulation of statistical models for use in Bayesian statistics has the additional feature, not present with other types of statistical techniques, of requiring the formulation of a set of prior distributions for any unknown parameters. Such prior distributions are as much part of the statistical model as the part that expresses the probability distribution of observations given the model parameters. The specification of a set of prior distributions for a problem may involve hyperparameters and hyperprior distributions.

Design of experiments[edit]

The usual considerations in the design of experiments are extended in the case of Bayesian design of experiments to include the influence of prior beliefs. Importantly, the application ofsequential analysis techniques allow the outcome of earlier experiments to influence the design of the next experiment, based on the updating of beliefs as expressed by the prior andposterior distribution. Part of the problem of the design of experiments is that they should make good use of resources of all types: one example of the Bayesian design of experiments aimed at such efficiency is the multi-armed bandit problem.

Statistical graphics[edit]

Statistical graphics includes methods for data exploration, for model validation, etc. The use of certain modern computational techniques for Bayesian inference, specifically the various types of Markov chain Monte Carlo techniques, have led to the need for checks, often made in graphical form, on the validity of such computations in expressing the required posterior distributions.

External links[edit]

CONTEXT(Help)
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Machine Learning Methods & Algorithms »Machine Learning Methods & Algorithms
Supervised learning »Supervised learning
Bayesian statistics
Bayesian interpretation of regularization »Bayesian interpretation of regularization
Bayesian knowledge base »Bayesian knowledge base
Bayesian network »Bayesian network
Naive Bayes classifier »Naive Bayes classifier
AODE - Averaged one-dependence estimators »AODE - Averaged one-dependence estimators
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