This paper aims to understand the concept of hypothesis and sampling distributions and its applications.
Course |
Learning outcomes (at course level |
Learning and teaching strategies |
Assessment Strategies
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Paper Code |
Paper Title |
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STT-301 |
Sampling Distributions |
CO 26: Ability to Identify the behaviour of the sample and their distribution.
CO 27: Ability to frame the hypothesis and give inference through probability curve
CO 28: Analyse the behaviour of the data and also fit the appropriate sampling distributions on them.
CO 29: Able to apply the applications of sampling distributions to the real-world problems. |
Approach in teaching: Interactive Lectures, Group Discussion, Classroom Assignment Problem Solving Sessions
Learning activities for the students: Assignments Seminar Presentation Subject based Activities |
Classroom Quiz Assignments Class Test Individual Presentation |
Concept of statistic and sampling distribution. Sampling Distribution of sum of Binomial, Poisson and mean of Normal Distribution. Standard Error: Meaning and role. The Central Limit Theorem for identically independently distributed (i.i.d) random variable.
Definition, Simple and Composite hypotheses. Null and Alternative Hypotheses, procedure of testing, two Types of errors, critical region , level of significance critical and p-values, statistical test: one tailed and two tailed test, Power and size of the test.
Definition, Derivation, Moments, Moment Generating Function, Cumulant Generating Function. Limiting and Additive property of Chi-square variates. Distribution of ratio of chi-square variates. Applications of Chi-square: Chi-square test for testing normal population variance, Test for goodness of fit, Contingency table and Test for independence of attributes, Yates correction for 2x2 contingency table conditions of Chi-square.
Definition of Student’s-t and Fisher’s-t statistics and derivation of their distributions. Limiting property of t-distribution. Applications: Testing of single mean, Difference of two means, paired t-test and test of sample correlation coefficient.
Definition of Snedecor’s F-distribution and its derivation. Applications- Testing of equality of two variance. Fisher’s transformation and its uses. Relationship between ‘t’, ‘F’ and chi-square statistics.