Course Outcome
CO1: Ability to find significance level and testing of hypothesis in software R
CO2: Ability to find regression equations and analyze the data in R
CO3: Ability to understand and analyze Multiple Regression and test using R- software.
CO4: Apply the knowledge of R gained to data Analytics in Estimation theory and Analysis of variance
List of Practical
- Testing of significance and confidence intervals for single proportion and difference of two proportion
- Testing of significance and confidence intervals for single mean and difference of two means and paired tests.
- Testing of significance and confidence intervals for difference of two standard deviations.
- Exact Sample Tests based on Chi-Square Distribution.
- Testing if the population variance has a specific value and its confidence intervals.
- Testing of goodness of fit.
- Testing of independence of attributes.
- Testing based on 2 X 2 contingency table without and with Yates’ corrections.
- Testing of significance and confidence intervals of an observed sample correlation coefficient.
- Testing and confidence intervals of equality of two population variances
- Simple Linear Regression
- Multiple Regression
- Tests for Linear Hypothesis
- Bias in regression estimates
- Lack of fit
- Orthogonal Polynomials
- Analysis of Variance of a one way classified data
- Analysis of Variance of a two way classified data with one observation per cell
- Analysis of Covariance of a one way classified data
- Analysis of Covariance of a two way classified data.