This course lays the foundation of probability distributions and sampling distributions, their application which forms the basis of Statistical Inference.
Course |
Learning outcomes (at course level) |
Learning and teaching strategies |
Assessment Strategies |
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Paper Code |
Paper Title |
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STT123 |
Probability Distributions (Theory)
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The students will be able to –
CO11: Identify the behavior of the population and sample and their distribution. CO12: Able to derive the probability distributions function of random variables and use these techniques to generate data from various distributions. CO13: Analyse the behaviour of the data by Fitting the discrete and continuous distributions. CO14: Able to translate real-world problems into probability distributions.
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Approach in teaching:
Interactive Lectures, Discussion, Power Point Presentations, Informative videos
Learning activities for the students: Self learning assignments, Effective questions, presentations, Field trips
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Quiz, Poster Presentations, Power Point Presentations, Individual and group projects, Open Book Test, Semester End Examination
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Bernoulli distribution, Binomial distribution (compound and truncated also), Poisson distribution (compound and truncated also)- moments, moment generating function, cummulant generating function, characteristic functions, recurrence relations, properties, fitting of distributions
Geometric distribution, Negative Binomial distribution, Hyper-geometric distributions, Power Series distribution- moments, moment generating function, cummulant generating function, characteristic functions, recurrence relations, properties, fitting of distributions
Rectangular distribution, Normal distribution (truncated also), Exponential distribution, Lognormal distribution, Multinomial of binomial and Poisson- moments, moment generating function, cummulant generating function, characteristic functions, recurrence relations, properties, fitting of distributions
Triangular distribution, Gamma distribution (one and two parameter) , Beta distribution( I kind and II kind) Cauchy distribution (truncated also), Laplace distributions, Pearson’s distribution (Type I, IV and VI)
Chi-Square, t and F distributions (central and non-central) and their applications. Large sample test. Fisher’s Z distributions and their applications. Order statistics: their distributions and properties; joint and marginal distributions of order statistics, sampling distributions of range and median of univariate population.
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