Lecture 0 - How to Learn and Follow the Course
Lecture 1 - R Software and its Installation
Lecture 2 - Help, Documentation, Examples, Packages and Libraries
Lecture 3 - Command Line and Data Editor
Lecture 4 - Introduction to R Studio
Lecture 5 - R as a Calculator
Lecture 6 - Calculation with Data Vectors and Built-in Function
Lecture 7 - Matrix Operations
Lecture 8 - Matrix Operations
Lecture 9 - Univariate Data-Central Tendency and Variability
Lecture 10 - Bivariate Data
Lecture 11 - Missing Data Handling
Lecture 12 - Measuring Central Tendency with Missing Data
Lecture 13 - Measuring Variation with Missing Data
Lecture 14 - Coefficient of Variation and Summary
Lecture 15 - Boxplots and Grouped Boxplots
Lecture 16 - Bar Diagram, Subdivided and Multiple Bar Diagrams
Lecture 17 - Pie Diagram, Histogram and Multiple Histogram
Lecture 18 - Scatter Plots, Smooth Scatter Plots and Matrix Plots
Lecture 19 - Three Dimensional Plots, Star Plots and Chernoff Faces
Lecture 20 - Continuous and Discrete
Lecture 21 - Probability Functions
Lecture 22 - Probability Functions for Continuous Bivariate and Multivariate Random Variables
Lecture 23 - Theoretical Properties
Lecture 24 - Application in R Software
Lecture 25 - Bivariate Normal and Multivariate Normal Distributions in R
Lecture 26 - Chi Square (X2), t and F Distribution
Lecture 27 - Point and Interval Estimation
Lecture 28 - Maximum Likelihood Estimation
Lecture 29 - Basics of Tests of Hypothesis
Lecture 30 - Test and Confidence Interval for Mean in One Sample with Known Variance in Univariate Data
Lecture 31 - Test and Confidence Interval for Mean in One Sample with Unknown Variance in Univariate Data
Lecture 32 - Tests for Mean in Two Samples with Univariable Data
Lecture 33 - Analysis of Variance and Homogeneity of Variances with Univariate Data
Lecture 34 - Tests for Mean Vector with Multivariate Data in One Sample
Lecture 35 - Tests for Mean Vector with Multivariate Data in Two Sample
Lecture 36 - Centering, Scaling and Z-Scores
Lecture 37 - Introduction and Basic Concepts
Lecture 38 - Estimation of Parameters
Lecture 39 - Model Fitting with R Software
Lecture 40 - Test of Hypothesis and Confidence Interval Estimation on Individual Regression Coefficients
Lecture 41 - Analysis of Variance and Implementation in R Software
Lecture 42 - Goodness of Fit and Testing of Normality
Lecture 43 - Logistic Regression Model
Lecture 44 - Introduction to Classification
Lecture 45 - Bayes Procedure for Classification
Lecture 46 - Classification Procedure for Multivariate Normal Distributions
Lecture 47 - Classification Procedure and Analysis in R
Lecture 48 - Basic Concepts and Definitions
Lecture 49 - Hierarchical Classification
Lecture 50 - Hierarchical Classification and Analysis with R
Lecture 51 - Hierarchical Classification with Examples in R
Lecture 52 - Concepts and Theoretical Setup
Lecture 53 - Principle Component and Its Graphical Analysis in R
Lecture 54 - Canonical Variables and Concepts
Lecture 55 - Statistical Analysis of Canonical Variables
Lecture 56 - Canonical Variables Analysis in R