The course will enable the students to
1. To study and learn the concepts of predictive analysis with the tool R.
2. To develop their skills on data analysis on large data sets using R.
Course Outcomes (COs).
Course Outcome (at course level) | Learning and teaching strategies | Assessment Strategies |
---|---|---|
On completion of this course, the students will: CO181. Apply analysis tool R to solve practical problems in a variety of disciplines. CO182. Apply basic and advanced statistical techniques used in data science research. CO183. Analyze large sets of data to gain useful business understanding. CO184. Describe and demonstrate R methods for data visualisation CO185. Evaluate the statistical tests on real world data sets. | Approach in teaching: Interactive Lectures, Discussion, Demonstration
Learning activities for the students: Self-learning assignments, Quiz activity, Effective questions, presentation, flip classroom, project development | Class test, Semester end examinations, Quiz, Solving problems in tutorials, Assignments, Presentation, Individual and group projects and peer review. |
Using R Studio:
1) Logical Arguments, Missing Values, Characters, Factors and Numeric, Help in R, Vector to Matrix, Matrix Access
2) Data Frames, Data Frame Access, Basic Data Manipulation Techniques, Usage of various apply functions – apply, lapply, sapply and tapply, Outliers treatment.
3) Charts (Bar, Pie, Histogram)
4) Measures of Central Tendency
5) Measures of dispersion
6) Discrete Probability Distributions: Binomial, Poisson, Continuous Probability Distribution: Normal Distribution.
7) Parametric tests (applications of chi-square test, t test and F test)
SUGGESTED READINGS:
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