(Added a todo list.)
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There are several articles I would like to write on the Kiwi when I get the time.  If you would like to write them instead, please go for it, and let me know!
 
There are several articles I would like to write on the Kiwi when I get the time.  If you would like to write them instead, please go for it, and let me know!
  
* [[Lower bound on performance of Bayes Classification_Old Kiwi]] is <math>\frac{1}{2}</math> when the number of classes is 1
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* [[Testing, Training, and Cross-Validation Data_Old Kiwi]] -- Everyone should know what each of these are!
* [[Ideal performance of Bayes Classification_Old Kiwi]] when the two classes are Gaussian with the same variance and prior probability can be computed exactly, even when there is correlation between the dimensions
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* [[Using LibSVM effectively_Old Kiwi]] -- a brief review of what they already show in their documentation.
* [[Amount of training data needed_Old Kiwi]] as a function of dimensions, covariance, etc.
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* [[Naive Bayes_Old Kiwi]]-- What it is and why everyone should know about it.
 
* [[Naive Bayes_Old Kiwi]]-- What it is and why everyone should know about it.
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* [[Philosophies of Machine Learning_Old Kiwi]] -- A long article
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* Lower bound on performance of [[Bayes Classification_Old Kiwi]] is <math>\frac{1}{2}</math> when the number of classes is 2
 +
* Ideal performance of [[Bayes Classification_Old Kiwi]] when the two classes are Gaussian with the same variance and prior probability can be computed exactly, even when there is correlation between the dimensions
 +
* [[Amount of training data needed_Old Kiwi]] as a function of dimensions, covariance, etc.
 
* [[Classification of data not in the Reals_Old Kiwi]] (<math>\mathbb{R}^n</math>), such as text documents and graphs
 
* [[Classification of data not in the Reals_Old Kiwi]] (<math>\mathbb{R}^n</math>), such as text documents and graphs
* [[Fischer's Linear Discriminant_Old Kiwi]] -- Why it is ideal in the case of equal-variance Gaussians, a derivation that is less heuristic than the traditional development.
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* [[Fisher's Linear Discriminant_Old Kiwi]] -- Why it is ideal in the case of equal-variance Gaussians, a derivation that is less heuristic than the traditional development.
  
And there's always copying stuff over from the old kiwi!
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Administrative stuff to do:
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* Copying stuff over from the old kiwi!
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* Create a Lecture [[Template_Old Kiwi]] like someone has done manually at the bottom of every page.

Latest revision as of 08:49, 17 April 2008

Hi! I'm Josiah Yoder, and I'm a big fan of Kiwis... and wikis.

My webpage is little out of date, but you can visit it anyway!

TODO

There are several articles I would like to write on the Kiwi when I get the time. If you would like to write them instead, please go for it, and let me know!

Administrative stuff to do:

  • Copying stuff over from the old kiwi!
  • Create a Lecture Template_Old Kiwi like someone has done manually at the bottom of every page.

Alumni Liaison

Ph.D. 2007, working on developing cool imaging technologies for digital cameras, camera phones, and video surveillance cameras.

Buyue Zhang