Statistical Pattern Recognition
2nd Semester 401-402 (Jan. 2023)
Class Meetings: Sunday and Tuesday from 08:00 am to 09:30 am
Room #29-ECE Build.
Instructor: Dr. Mohammad Reza Ahmadzadeh
Office Location: ECE Building - 212B
Internal Telephone: Ext. 5370
External Telephone: Iran: +98 (0)31 33915370
Fax: Iran: +98 (0)31 33912451
Email: Ahmadzadeh @ iut.ac.ir
Homepage: https://ahmadzadeh.iut.ac.ir/
Office Hours:
I will try to be in my office on Sundays and Tuesdays from 11:00to 12:00 am, but I will always do my best to be available for students by appointment or any time that I am free.
Course Description:
This course covers the fundamentals of Pattern Recognition techniques, both supervised and unsupervised learning algorithms. Machine intelligence algorithms to be presented include parametric and non-parametric pattern detection and classification, logistic discrimination, support vector machines, decision trees, feature extraction and selection, principal component analysis, independent component analysis, clustering, artificial neural networks, and others.
Outline:
1- Introduction
2- Bayesian decision theory
3- Maximum likelihood and Bayesian parameter estimation
4- Nonparametric techniques
5- Linear Discriminant Functions
6- Nonlinear Classifiers
7- Feature Selection
8- Algorithm-independent machine learning
9- Unsupervised Learning and Clustering
Textbook:
2- Duda, Hart and Stork, Pattern Classification, Second Edition, Wiley, 2001.
The textbook has a web site. In particular, you may find the errata list useful.
Slides from the authors of the book.
Optional:
1- Bishop, Christopher M. Pattern Recognition and Machine Learning, 2006
URL: http://research.microsoft.com/~cmbishop/PRML/index.htm
2- Andrew R.Webb • Keith D. Copsey, Statistical Pattern Recognition, 3rd Ed., 2011.
Lecture Notes:
Slides modified by Instructor and lecture notes can be obtained via E-Learning LMS (Enrolled students, Password protected).
Link: http://yekta.iut.ac.ir/
Attachment | Size |
---|---|
pr-ch1.pdf | 2.37 MB |
pr-ch2-part1.pdf | 572.09 KB |
pr-ch2-part2.pdf | 2.09 MB |
pr-ch2-part3.pdf | 2.56 MB |
pr-ch2-part4.pdf | 902.87 KB |
pr-ch3-part1.pdf | 527.96 KB |
pr-ch3-part2.pdf | 1.4 MB |
pr-ch3-part3.pdf | 914.39 KB |
pr-ch3-part4.pdf | 1.05 MB |
pr-ch3-part5.pdf | 3.75 MB |
pr-ch3-part6.pdf | 1.06 MB |
pr-ch4-part1.pdf | 1.79 MB |
pr-ch4-part2.pdf | 4.44 MB |
pr-ch5.pdf | 3.91 MB |
pr-ch6.pdf | 1.63 MB |
pr-ch8.pdf | 1.33 MB |
pr-ch10.pdf | 3.1 MB |
0-mathreview.pdf | 1.8 MB |
1_classifiers_bayes.pdf | 7.72 MB |
2_linear_classifiers.pdf | 2.58 MB |
3_non_linear_classifiers_0.pdf | 4.17 MB |
4_feature_selection_0.pdf | 1.79 MB |
5_feature_generation_0.pdf | 1.58 MB |
6_template_matching_0.pdf | 978.98 KB |
7_context_dependent_classification_0.pdf | 1.36 MB |
8_clustering-basic_concepts.pdf | 1.37 MB |
11_k-means_clustering.pdf | 1.92 MB |