(New page: = SA 10503: Introduction to Machine Learning & Pattern Recognition= Maymester Course in Turkey 250px ==Peer Legacy== Read what students who previously took this cou...)
 
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= SA 10503: Introduction to Machine Learning & Pattern Recognition=
 
= SA 10503: Introduction to Machine Learning & Pattern Recognition=
 
Maymester Course in Turkey
 
Maymester Course in Turkey
 
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*[[Maymester_Intro_to_Machine_learning_2011|official announcement for 2011]]
[[Image:Turkey1.jpg|250px]]
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==Peer Legacy==
 
==Peer Legacy==
 
Read what students who previously took this course have to say about it on the [[Peer_Legacy_SA10503|Peer Legacy page]] of this course.
 
Read what students who previously took this course have to say about it on the [[Peer_Legacy_SA10503|Peer Legacy page]] of this course.
==Course Info==
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This course is designed for Engineering, MGMT, Science/Technology, Agriculture students and other students
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== Related Topics ==
from related areas. Students may use this 3-credit course to count toward their plan of study.
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* [[About Pattern Recognition]]
 
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* [[Bayes_Decision_Theory]]
'''When''':  May – June     
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* [[Discriminant Functions]]
 
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* [[Fisher Linear Discriminant]]
'''Where''':  ISTANBUL, TURKEY    (EUROPE & ASIA)
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* [[Bayesian Decision Theory for Normally Distributed Features]]
: ANTALYA, TURKEY        (ASIA)
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* [[Feature Extraction]]
 
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* [[Density Estimation]]
View the official announcement for 2011 [[Maymester_Intro_to_Machine_learning_2011|here]]
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* [[Linear classifiers]]
 
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* [[Artificial Neural Networks]]
 
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* [[Support Vector Machines]]
==Subjects Covered==
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* [[Clustering]]
 
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* [[Decision Trees]]
==Related Rhea Pages==
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*View the announcement for the 2011 edition of this Maymester [[Maymester_Intro_to_Machine_learning_2011|here]]
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== Interesting Rhea pages related to machine learning ==
 
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*[[ECE662:Glossary_Old_Kiwi|Decision Theory Glossary]]
 
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*[[Parametric_Estimators_OldKiwi|About Parametric Estimators]]
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*[[Bayes_Rate_Fallacy:_Bayes_Rules_under_Severe_Class_Imbalance|Bayes rule under severe class imbalance]]
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*[[Fisher_discriminant_under_nonlinear_data|Fisher linear discriminant can be used for non-linearly separable data too!]]
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*[[ANN_Simulink_examples_ece662_Sp2010|A jump start on using Simulink to develop a ANN-based classifier]]
 
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[[Meta_Course_List|Back to Course list]]
 
[[Meta_Course_List|Back to Course list]]

Revision as of 16:15, 4 November 2010

SA 10503: Introduction to Machine Learning & Pattern Recognition

Maymester Course in Turkey


Peer Legacy

Read what students who previously took this course have to say about it on the Peer Legacy page of this course.


Related Topics


Interesting Rhea pages related to machine learning


Back to Course list

Alumni Liaison

Abstract algebra continues the conceptual developments of linear algebra, on an even grander scale.

Dr. Paul Garrett