This module enables students to
Course Outcomes (COs).
Course Outcome (at course level)
| Learning and teaching strategies | Assessment Strategies |
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On completion of this course, the students will: CO72. Demonstrate the random variables and its functions. CO73. Infer the expectations for random variable functions. CO74. Compute the moments and characteristic functions of distributions. CO75. Identify the behaviour of the population. CO76.Analyse the behaviour of the data by fitting discrete and continuous distributions. | Approach in teaching: Interactive Lectures, Discussion, Tutorials, Reading assignments, Demonstrations. |
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Random Variable: Definition and types of random variables. Probability mass function and Probability density function. Distribution function with properties (without proof). Joint, Marginal and Conditional probability distributions. Independence of two variables, definition and application of Jacobian transformation for one and two variables.
Expectation of a random variable and its simple properties. Addition and Multiplication theorems of Expectations. Variance and covariance and their properties. Central moments and Non-central moments and their computation from data. Measure of Skewness and Kurtosis.
Chebychev’s inequality with simple applications. Moment generating functions and their properties. Cumulant generating functions. Characteristic function and their properties (without proof)
Binomial, Poisson, Geometric Distribution with simple properties and applications.
Uniform Distribution, Normal Distribution, Properties of Normal Curve, and Exponential Distribution with properties.
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