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=Questions and Comments=
 
=Questions and Comments=
  
This slecture will be reviewed by Hariharan Seshadri
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[Review by Hariharan Seshadri]:
  
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* This is a very well developed slecture on Bayesian  Parametric Estimation (BPE)
  
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[Review by Hariharan Seshadri]:
  
* Question
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* What I like about this slecture is that the author is organized in his/her thoughts. The author starts of by giving a general introduction to Bayesian Parametric Distribution, and goes on to derive the "posteriori" parameters of the MEAN of a univariate Gaussian Distribution
  
 +
[Review by Hariharan Seshadri]:
  
 +
* Having obtained these "posteriori" parameters of the MEAN, the author goes on to derive the conditional probability of p(x|D) using the afore-mentioned parameters
 +
 +
[Review by Hariharan Seshadri]:
 +
 +
* The author is methodical in the derivation
 +
 +
[Review by Hariharan Seshadri]:
 +
 +
* To make this great slecture even better, the author could compare the accuracy of BPE and MLE in a classification context (just like HW 2 - Spring 2014). In short, it was a very informative slecture
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[[2014_Spring_ECE_662_Boutin|Back to ECE 662 S14 course wiki]]  
 
[[2014_Spring_ECE_662_Boutin|Back to ECE 662 S14 course wiki]]  
  
 
[[ECE662|Back to ECE 662 course page]]
 
[[ECE662|Back to ECE 662 course page]]

Revision as of 19:40, 7 May 2014

Questions and Comments for Bayesian Parameter Estimation: Gaussian Case

A slecture by ECE student Shaobo Fang




This is the talk page for the slecture notes on . Please leave me a comment below if you have any questions, if you notice any errors or if you would like to discuss a topic further.



Questions and Comments

[Review by Hariharan Seshadri]:

  • This is a very well developed slecture on Bayesian Parametric Estimation (BPE)

[Review by Hariharan Seshadri]:

  • What I like about this slecture is that the author is organized in his/her thoughts. The author starts of by giving a general introduction to Bayesian Parametric Distribution, and goes on to derive the "posteriori" parameters of the MEAN of a univariate Gaussian Distribution

[Review by Hariharan Seshadri]:

  • Having obtained these "posteriori" parameters of the MEAN, the author goes on to derive the conditional probability of p(x|D) using the afore-mentioned parameters

[Review by Hariharan Seshadri]:

  • The author is methodical in the derivation

[Review by Hariharan Seshadri]:

  • To make this great slecture even better, the author could compare the accuracy of BPE and MLE in a classification context (just like HW 2 - Spring 2014). In short, it was a very informative slecture

Back to ECE 662 S14 course wiki

Back to ECE 662 course page

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