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*Slectures on Neyman-Pearson test and ROC curves  
 
*Slectures on Neyman-Pearson test and ROC curves  
 
**[[Neyman-Pearson Lemma and Receiver Operating Characteristic Curve]] by [https://engineering.purdue.edu/~lee714/ Soonam Lee]  
 
**[[Neyman-Pearson Lemma and Receiver Operating Characteristic Curve]] by [https://engineering.purdue.edu/~lee714/ Soonam Lee]  
**[[ROC_curve_analysis_sletucr_ECE662_Spring0214_Sun|Video slecture]] by Jianxin Sun
+
**[[ROC_curve_analysis_slecture_ECE662_Spring0214_Sun|Video slecture]] by Jianxin Sun
 
*Slectures on Density Estimation  
 
*Slectures on Density Estimation  
 
**Maximum Likelihood Estimation (MLE)  
 
**Maximum Likelihood Estimation (MLE)  

Revision as of 08:12, 29 April 2014



ECE662: Statistical Pattern Recognition and Decision Making Processes, Spring 2014 (cross-listed with CS662)


                Welcome to ECE662!

  • HW2 grades have been entered into the "instructor's Comment" box.
  • Reviews for HW2 are activated. Please complete your review before class on Tuesday April 29.
  • Does anybody in the class speak Spanish (besides Francis)? If so, please send me an email. -pm
  • Does anybody in the class speak Russian (besides Aziza)? If so, please send me an email. -pm

Course Information

Instructor:

Office: MSEE342
Office hours
Assignment Drop Box

Lecture:

  • When? TuTh, 10:30 - 11:45
  • Where? EE117 (subject to change)

Slectures

Please use this template for text slectures or this template for video slectures


Peer Reviews


Discussion

Feel free to use the space below for discussion, or create a page for discussion and link it below.


Back to main ECE662 page

Alumni Liaison

BSEE 2004, current Ph.D. student researching signal and image processing.

Landis Huffman