Sorry, you need to enable JavaScript to visit this website.

  • 7:13 PM, Tuesday, 16 Sep 2025


Course Postgraduate
Semester Electives
Subject Code AVD867
Subject Title Pattern Recognition and Machine Learning

Syllabus

PR overview - Feature extraction - Statistical Pattern Recognition - Supervised Learning - Parametric methods - non-parametric methods; ML estimation - Bayes estimation - KNN approaches. Dimensionality reduction, data normalization. Regression, and time series analysis. Linear discriminant functions. Fisher's linear discriminant and linear perceptron. Kernel methods and Support vector machine. Decision trees for classification. Unsupervised learning and clustering. K-means and hierarchical clustering. Decision Trees for classification. Ensemble/Adaboost classifier, soft computing paradigms for classification and clustering. Applications to document analysis and recognition.

Text Books

Same as Reference

References

1. Pattern classification, Duda and Hart, John Wiley and sons,2001.

2. Machine learning, TM Mitchel, Mc Graw Hills, 1997.

3. Pattern Recognition and Machine Learning, Christopher M.Bishop, Springer, 2006.