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Extended Bayesian Statistical Inference and Renormalization Group

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(1) We make it clear that the notion of renormalization group is ... According to the change of N, the terms proportional to N behave. as follows: ... – PowerPoint PPT presentation

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Title: Extended Bayesian Statistical Inference and Renormalization Group


1
Extended Bayesian Statistical Inference and
Renormalization Group
  • Toshiaki Aida, Faculty of Engineering, Okayama
    University, Japan

The plan of our talk (1) We make it clear that
the notion of renormalization group is naturally
introduced in Bayesian framework of statistical
inference, which leads to the effectiveness of
the framework. (2) We extend the framework to
obtain better prediction performance. (3) We
report the result of a numerical analysis applied
to the extended framework.
2
1. Scaling notion in Bayesian framework
  • Two examples of non-parametric models
  • (1) Density estimation (Bialek, Callan and
    Strong, 1996)
  • (2) Regression
  • Here,
  • is a function to be inferred.
  • is a
    distribution of given data.
  • Bayes formula enables us to predict in a
    probabilistic sense.
  • (Posterior distribution)

3
  • According to the change of N, the terms
    proportional to N behave
  • as follows
  • i) -terms shift the expectation value of the
    function .
  • ii) -terms set a long-distance length scale
    (or bin size) within
  • which a datum can affect the function .
  • (1) Density estimation
  • (2) Regression

The number of effective degrees of freedom is
naturally reduced in Bayesian framework.
4
  • The connection to renormalization group
  • i) sets a long-distance cutoff scale in
    momentum space.
  • ii) The response of a system under the change of
    the scale ,
  • induced by the change of N , is crucial to
    inference problems.
  • Such a response is described by a type of
    renormalization group eq.,
  • which is called Exact renormalization group
    equation.

(1) When the number of examples N is small,
(2) When the number of examples N is large,
5
2. Prediction in Bayesian framework and its
extension
  • Our problem
  • After we have observed data
    , which are generated
  • independently of each other for
    according to a
  • probability determined by a
    function , we want to
  • predict an output for a new input
    .
  • Predictive distribution in Bayesian framework
  • The average of over the
    posterior
  • Here, is a prior distribution for a
    function .

6
  • The performance for prediction
  • The Kullback-Leibler divergence between the
    predictive distribution
  • and the true one, averaged over all the data and
    the true function.
  • The relation to RG can be easily seen by our
    rewriting this as follows.
  • Here, is a difference equation for
    effective action defined by
  • and is the solution of the equation
    , and is known to
  • be equal to the expectation value of .

7
  • The RG equation in statistical inference
  • The difference equation
    is a kind of
  • exact renormalization group equation, because the
    increase of the
  • number of examples N leads to the increase of
    the long-distance
  • cutoff scale, as is discussed previously.
  • Predictive distribution in extended Bayesian
    framework
  • Apart from Bayesian framework, if we introduce
    a scaling part
  • to the prior distribution ,
  • we are able to obtain better prediction
    performance.
  • This generalization is natural from the point of
    view of renormalization
  • group eq. .

8
  • The difference equation for the scaling part of a
    prior distribution
  • In order to achieve better prediction
    performance, our imposing that
  • leads to the difference equation for the scaling
    part of the prior
  • distribution.
  • This procedure is very effective especially in
    non-parametric Bayesian
  • statistical inference, because is
    much bigger than in parametric
  • cases.
  • We can obtain a universal form of the
    difference equation of in
  • asymptotic regime .
  • Also, we report the numerical result applied to
    a density estimation
  • problem etc..
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