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Bayesian experimental design provides a general probability-theoretical framework from which other theories on experimental design can be derived. It is based on
Bayesian inference Bayesian inference is a method of statistical inference in which Bayes' theorem is used to update the probability for a hypothesis as more evidence or information becomes available. Bayesian inference is an important technique in statistics, a ...
to interpret the observations/data acquired during the experiment. This allows accounting for both any prior knowledge on the parameters to be determined as well as uncertainties in observations. The theory of Bayesian experimental design is to a certain extent based on the theory for making optimal decisions under uncertainty. The aim when designing an experiment is to maximize the expected utility of the experiment outcome. The utility is most commonly defined in terms of a measure of the accuracy of the information provided by the experiment (e.g. the Shannon information or the negative of the variance), but may also involve factors such as the financial cost of performing the experiment. What will be the optimal experiment design depends on the particular utility criterion chosen.


Relations to more specialized optimal design theory


Linear theory

If the model is linear, the prior probability density function (PDF) is homogeneous and observational errors are normally distributed, the theory simplifies to the classical optimal experimental design theory.


Approximate normality

In numerous publications on Bayesian experimental design, it is (often implicitly) assumed that all posterior PDFs will be approximately normal. This allows for the expected utility to be calculated using linear theory, averaging over the space of model parameters, an approach reviewed in . Caution must however be taken when applying this method, since approximate normality of all possible posteriors is difficult to verify, even in cases of normal observational errors and uniform prior PDF.


Posterior distribution

In many cases, the posterior distribution is not available in closed form and has to be approximated using numerical methods. The most common approach is to use Monte Carlo methods to generate samples from the posterior, which can then be used to approximate the expected utility. Another approach is to use a variational Bayes approximation of the posterior, which can often be calculated in closed form. This approach has the advantage of being computationally more efficient than Monte Carlo methods, but the disadvantage that the approximation might not be very accurate. Some authors such as and proposed approaches that use the
posterior predictive distribution Posterior may refer to: * Posterior (anatomy), the end of an organism opposite to its head ** Buttocks, as a euphemism * Posterior horn (disambiguation) * Posterior probability The posterior probability is a type of conditional probability that r ...
to assess the effect of new measurements on prediction uncertainty, while suggest maximizing the mutual information between parameters, predictions and potential new experiments.


Mathematical formulation

Given a vector \theta of parameters to determine, a prior PDF p(\theta) over those parameters and a PDF p(y\mid\theta,\xi) for making observation y, given parameter values \theta and an experiment design \xi, the posterior PDF can be calculated using
Bayes' theorem In probability theory and statistics, Bayes' theorem (alternatively Bayes' law or Bayes' rule), named after Thomas Bayes, describes the probability of an event, based on prior knowledge of conditions that might be related to the event. For examp ...
:p(\theta \mid y, \xi) = \frac \, , where p(y\mid\xi) is the marginal probability density in observation space :p(y\mid\xi) = \int p(\theta)p(y\mid\theta,\xi)\,d\theta \, . The expected utility of an experiment with design \xi can then be defined :U(\xi)=\int p(y\mid\xi)U(y,\xi)\,dy, where U(y,\xi) is some real-valued functional of the posterior PDF p(\theta \mid y, \xi) after making observation y using an experiment design \xi.


Gain in Shannon information as utility

Utility may be defined as the prior-posterior gain in Shannon information : U(y, \xi) = - \int \log(p(\theta \mid y, \xi))\,p(\theta , y, \xi) \, d\theta + \int \log(p(\theta))\,p(\theta)\,d\theta \, . Another possibility is to define the utility as :U(y, \xi) = D_(p(\theta\mid y,\xi) \, p(\theta)) \, , the Kullback–Leibler divergence of the prior from the posterior distribution. noted that the expected utility will then be coordinate-independent and can be written in two forms : \begin U(\xi) & = - \int \int \log(p(\theta \mid y,\xi))\,p(\theta, y \mid \xi) \, d\theta\,dy + \int\log(p(\theta))\,p(\theta) \, d\theta \\ & = - \int \int \log(p(y \mid \theta,\xi))\,p(\theta, y \mid \xi)\,dy\,d\theta + \int\log(p(y \mid \xi))\,p(y\mid \xi) \, dy, \end \, of which the latter can be evaluated without the need for evaluating individual posterior PDFs p(\theta \mid y,\xi) for all possible observations y. It is worth noting that the second term on the second equation line will not depend on the design \xi, as long as the observational uncertainty doesn't. On the other hand, the integral of p(\theta) \log p(\theta) in the first form is constant for all \xi, so if the goal is to choose the design with the highest utility, the term need not be computed at all. Several authors have considered numerical techniques for evaluating and optimizing this criterion, e.g. and . Note that :U(\xi) = I(\theta;y)\, , the expected information gain being exactly the mutual information between the parameter ''θ'' and the observation ''y''. An example of Bayesian design for linear dynamical model discrimination is given in . Since I(\theta;y)\, , was difficult to calculate, its lower bound has been used as a utility function. The lower bound is then maximized under the signal energy constraint. Proposed Bayesian design has been also compared with classical average D-optimal design. It was shown that the Bayesian design is superior to D-optimal design. The
Kelly criterion In probability theory, the Kelly criterion (or Kelly strategy or Kelly bet), is a formula that determines the optimal theoretical size for a bet. It is valid when the expected returns are known. The Kelly bet size is found by maximizing the expec ...
also describes such a utility function for a gambler seeking to maximize profit, which is used in
gambling and information theory Statistical inference might be thought of as gambling theory applied to the world around us. The myriad applications for logarithmic information measures tell us precisely how to take the best guess in the face of partial information. In that sen ...
; Kelly's situation is identical to the foregoing, with the side information, or "private wire" taking the place of the experiment.


See also

* Bayesian optimization * Optimal design * Active Learning


References

* * * * * * * * * {{Statistics, collection, state=collapsed Experimental design Design of experiments Optimal decisions Industrial engineering Systems engineering