This paper is designed to familiarize the students with concepts of statistical inference.
Students will be able to:
Course |
Learning outcomes (at course level |
Learning and teaching strategies |
Assessment Strategies |
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Paper Code |
Paper Title |
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CSTT 301 |
Statistical Inference
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CO 21: Apply the applications of sampling distributions to real-world problems.
CO 22: Get basic theoretical knowledge about fundamental principles for statistical inference.
CO 23: Perform point estimation and interval estimation under a large variety of discrete and continuous probability models.
CO 24: Construct and interpret a confidence interval about the population and variances.
CO 25: Transform different populations in a normal distribution.
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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
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Definitions of random sample, parameter and statistic, null and alternative hypothesis, simple and composite hypothesis, procedure of testing of hypothesis, level of significance, Type I and Type II errors, p-value, power of a test and critical region. Sampling distribution of a statistic, sampling distribution of sample mean, standard error of sample mean.
Chi-square: 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.
t: 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 sample correlation coefficient.
F-distribution: Definition of Snedecor’s F-distribution and its derivation. Applications- Testing of equality of two variance. Relationship between ‘t’ , ‘F’ and chi-square statistics.
Estimation: Parameter space, sample space, point estimation, requirement of a good estimator, consistency, unbiasedness, efficiency, sufficiency, Minimum variance unbiased estimators, Cramer-Rao inequality and its applications, Methods of estimation: maximum likelihood method and their properties.
Interval Estimation: confidence intervals for the parameters of normal distribution, confidence intervals for difference of mean and for ratio of variances. Neyman-Pearson lemma and MP test: statements and applications.
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