Skip to content
HOME
FAQ
ABOUT
Expand
About Company
Vision and Mission
Our Team
Privacy Policy
Terms of Use
CONTACT
SMART HEALTH
Expand
Online Health Assistance from Indian Doctors and Specialist . Live Video Consultation
BUY NOW
LOGIN
Register
Live Assistance
Toggle Menu
Home
Courses
Engineering
Computer Science – Pattern Recognition
Curriculum
1 Section
42 Lessons
10 Weeks
Expand all sections
Collapse all sections
Computer Science - Pattern Recognition
42
2.1
Mod-01 Lec-01 Principles of Pattern Recognition I (Introduction and Uses)
2.2
Mod-01 Lec-02 Principles of Pattern Recognition II (Mathematics)
2.3
Mod-01 Lec-03 Principles of Pattern Recognition III (Classification and Bayes Decision Rule)
2.4
Mod-01 Lec-04 Clustering vs. Classification
2.5
Mod-01 Lec-05 Relevant Basics of Linear Algebra, Vector Spaces
2.6
Mod-01 Lec-06 Eigen Value and Eigen Vectors
2.7
Mod-01 Lec-07 Vector Spaces
2.8
Mod-01 Lec-08 Rank of Matrix and SVD
2.9
Mod-02 Lec-09 Types of Errors
2.10
Mod-02 Lec-10 Examples of Bayes Decision Rule
2.11
Mod-02 Lec-11 Normal Distribution and Parameter Estimation
2.12
Mod-02 Lec-12 Training Set, Test Set
2.13
Mod-02 Lec-13 Standardization, Normalization, Clustering and Metric Space
2.14
Mod-02 Lec-14 Normal Distribution and Decision Boundaries I
2.15
Mod-02 Lec-15 Normal Distribution and Decision Boundaries II
2.16
Mod-02 Lec-16 Bayes Theorem
2.17
Mod-02 Lec-17 Linear Discriminant Function and Perceptron
2.18
Mod-02 Lec-18 Perceptron Learning and Decision Boundaries
2.19
Mod-02 Lec-19 Linear and Non-Linear Decision Boundaries
2.20
Mod-02 Lec-20 K-NN Classifier
2.21
Mod-02 Lec-21 Principal Component Analysis (PCA)
2.22
Mod-02 Lec-22 Fisher’s LDA
2.23
Mod-02 Lec-23 Gaussian Mixture Model (GMM)
2.24
Mod-02 Lec-24 Assignments
2.25
Mod-03 Lec-25 Basics of Clustering, Similarity/Dissimilarity Measures, Clustering Criteria.
2.26
Mod-03 Lec-26 K-Means Algorithm and Hierarchical Clustering..
2.27
Mod-03 Lec-27 K-Medoids and DBSCAN
2.28
Mod-04 Lec-28 Feature Selection : Problem statement and Uses
2.29
Mod-04 Lec-29 Feature Selection : Branch and Bound Algorithm
2.30
Mod-04 Lec-30 Feature Selection : Sequential Forward and Backward Selection
2.31
Mod-04 Lec-31 Cauchy Schwartz Inequality
2.32
Mod-04 Lec-32 Feature Selection Criteria Function: Probabilistic Separability Based
2.33
Mod-04 Lec-33 Feature Selection Criteria Function: Interclass Distance Based
2.34
Mod-05 Lec-34 Principal Components
2.35
Mod-06 Lec-35 Comparison Between Performance of Classifiers
2.36
Mod-06 Lec-36 Basics of Statistics, Covariance, and their Properties
2.37
Mod-06 Lec-37 Data Condensation, Feature Clustering, Data Visualization
2.38
Mod-06 Lec-38 Probability Density Estimation
2.39
Mod-06 Lec-39 Visualization and Aggregation
2.40
Mod-06 Lec-40 Support Vector Machine (SVM)
2.41
Mod-06 Lec-41 FCM and Soft-Computing Techniques
2.42
Mod-06 Lec-43 Examples of Real-Life Dataset
This content is protected, please
login
and
enroll
in the course to view this content!
HOME
FAQ
ABOUT
Toggle child menu
Expand
About Company
Vision and Mission
Our Team
Privacy Policy
Terms of Use
CONTACT
SMART HEALTH
Toggle child menu
Expand
Online Health Assistance from Indian Doctors and Specialist . Live Video Consultation
BUY NOW
LOGIN
Register