Skip to main content Accessibility help
×
Hostname: page-component-7479d7b7d-rvbq7 Total loading time: 0 Render date: 2024-07-11T13:14:20.589Z Has data issue: false hasContentIssue false

28 - Bayesian experimental design

from PART V - REAL-WORLD APPLICATIONS

Published online by Cambridge University Press:  05 July 2014

Wolfgang von der Linden
Affiliation:
Technische Universität Graz, Austria
Volker Dose
Affiliation:
Max-Planck-Institut für Plasmaphysik, Garching, Germany
Udo von Toussaint
Affiliation:
Max-Planck-Institut für Plasmaphysik, Garching, Germany
Get access

Summary

The previous examples on parameter estimation and model comparison have demonstrated the benefits of Bayesian probability theory for quantitative inference based on prior knowledge and measured data. However, Bayesian probability theory is not a magic black box capable of compensating for badly designed experiments. Information absent in the data cannot be revealed by any kind of data analysis. This immediately raises the question of how the information provided by a measurement can be quantified and, in a next step, how to optimize experiments to maximize the information gain. Here one of the very recent areas of applied Bayesian data analysis is entered: Bayesian experimental design is an increasingly important topic driven by progress in computer power and algorithmic improvements [132, 214]. So far it has been implicitly assumed that there is little choice in the actual execution of the experiment, in other words, the data to be analysed were assumed to be given. While this is the most widespread use of data analysis, the active selection of data holds great promise to improve the measurement process. There are several scenarios in which an active selection of the data to be collected or evaluated is obviously very advantageous, for example:

• Expensive and/or time-consuming measurements, thus one wants to know where to look next to learn as much as possible – or when to stop performing further experiments.

Type
Chapter
Information
Bayesian Probability Theory
Applications in the Physical Sciences
, pp. 491 - 506
Publisher: Cambridge University Press
Print publication year: 2014

Access options

Get access to the full version of this content by using one of the access options below. (Log in options will check for institutional or personal access. Content may require purchase if you do not have access.)

Save book to Kindle

To save this book to your Kindle, first ensure coreplatform@cambridge.org is added to your Approved Personal Document E-mail List under your Personal Document Settings on the Manage Your Content and Devices page of your Amazon account. Then enter the ‘name’ part of your Kindle email address below. Find out more about saving to your Kindle.

Note you can select to save to either the @free.kindle.com or @kindle.com variations. ‘@free.kindle.com’ emails are free but can only be saved to your device when it is connected to wi-fi. ‘@kindle.com’ emails can be delivered even when you are not connected to wi-fi, but note that service fees apply.

Find out more about the Kindle Personal Document Service.

Available formats
×

Save book to Dropbox

To save content items to your account, please confirm that you agree to abide by our usage policies. If this is the first time you use this feature, you will be asked to authorise Cambridge Core to connect with your account. Find out more about saving content to Dropbox.

Available formats
×

Save book to Google Drive

To save content items to your account, please confirm that you agree to abide by our usage policies. If this is the first time you use this feature, you will be asked to authorise Cambridge Core to connect with your account. Find out more about saving content to Google Drive.

Available formats
×