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Determining the optimal measurements to make under a cost constraint. A measurement is "optimal" when it is expected to give the most new information about the parameters of a model. Active learning is thus an application of decision theory to the process of learning. It is also known as experiment design.
 
Determining the optimal measurements to make under a cost constraint. A measurement is "optimal" when it is expected to give the most new information about the parameters of a model. Active learning is thus an application of decision theory to the process of learning. It is also known as experiment design.
  
Artificial Neural Networks: Ripley Chapter 5
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[[Artificial Neural Networks_Old Kiwi]]: Ripley Chapter 5
  
 
Duda, Hart, and Stork Chapter 6
 
Duda, Hart, and Stork Chapter 6
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is modeled as a composition of simple functions <math>f_i</math>'s
 
is modeled as a composition of simple functions <math>f_i</math>'s
  
<math>f=f_n\bullet f_{n-1}\cdot\cdot\cdot f_1</math>
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<math>f=f_n\bullet f_{n-1}\cdots f_1</math>

Latest revision as of 10:08, 3 April 2008

Determining the optimal measurements to make under a cost constraint. A measurement is "optimal" when it is expected to give the most new information about the parameters of a model. Active learning is thus an application of decision theory to the process of learning. It is also known as experiment design.

Artificial Neural Networks_Old Kiwi: Ripley Chapter 5

Duda, Hart, and Stork Chapter 6

Nueral networks are a family of function approximation techniques, when the function is approximated,

$ f:x \rightarrow z $

is modeled as a composition of simple functions $ f_i $'s

$ f=f_n\bullet f_{n-1}\cdots f_1 $

Alumni Liaison

Correspondence Chess Grandmaster and Purdue Alumni

Prof. Dan Fleetwood