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Statistics I Syllabus: B.Sc. CSIT 2nd Semester (2080)

Statistics I Syllabus: B.Sc. CSIT 2nd Semester (2080)

Statistics I Syllabus


General Information

CourseB.SC. CSIT
Course TitleStatistics I
Course NoSTA169
Nature of the courseTheory + Lab
SemesterII (Second)
Full Marks60 + 20 + 20
Pass Marks24 + 8 + 8
Credit Hrs.3


CHAPTER LIST: Statistics I

S.N.ChapterTime
Unit 1Introduction4 Hrs
Unit 2Descriptive Statistics6 Hrs
Unit 3Introduction to Probability8 Hrs
Unit 4Sampling3 Hrs
Unit 5Random Variables and Mathematical Expectation5 Hrs
Unit 6Probability Distributions12 Hrs
Unit 7Correlation and Linear Regression7 Hrs


Course Description: This course contains basics of statistics, descriptive statistics, probability, sampling, random variables and mathematical expectations, probability distribution, correlation and regression.


Course Objectives: The main objective of this course is to impart the knowledge of descriptive statistics, correlation, regression, sampling, theoretical as well as applied knowledge of probability and some probability distributions.



Course Contents:


Unit 1: Introduction

(4 Hrs.)


Basic concept of statistics; Application of Statistics in the field of Computer Science &
Information technology; Scales of measurement; Variables; Types of Data; Notion of a statistical population


Unit 2: Descriptive Statistics

(6 Hrs.)


Measures of central tendency; Measures of dispersion; Measures of skewness; Measures of kurtosis; Moments; Steam and leaf display; five number summary; box plot Problems and illustrative examples related to computer Science and IT


Unit 3: Introduction to Probability

(8 Hrs.)


Concepts of probability; Definitions of probability; Laws of probability; Bayes theorem; prior and posterior probabilities Problems and illustrative examples related to computer Science and IT


Unit 4: Sampling

(3 Hrs.)


Definitions of population; sample survey vs. census survey; sampling error and non sampling error; Types of sampling


5. Random Variables and Mathematical Expectation

(5 Hrs.)


Concept of a random variable; Types of random variables; Probability distribution of a random variable; Mathematical expectation of a random variable; Addition and multiplicative theorems of expectation

Problems and illustrative examples related to computer Science and IT


Unit 6: Probability Distributions

(12 Hrs.)


Probability distribution function, Joint probability distribution of two random variables; Discrete distributions: Bernoulli trial, Binomial and Poisson distributions; Continuous distribution: Normal distributions; Standardization of normal distribution; Normal distribution as an approximation of Binomial and Poisson distribution; Exponential, Gamma distribution

Problems and illustrative examples related to computer Science and IT


Unit 7: Correlation and Linear Regression

(7 Hrs.)


Bivariate data; Bivariate frequency distribution; Correlation between two variables; Karl Pearson’s coefficient of correlation(r); Spearman’s rank correlation; Regression Analysis: Fitting of lines of regression by the least squares method; coefficient of determination


Problems and illustrative examples related to computer Science and IT



Laboratory Works:


The laboratory work includes using any statistical software such as Microsoft Excel, SPSS, STATA etc. whichever convenient using Practical problems to be covered in the Computerized Statistics laboratory

 

Practical problems

S. No.Title of the practical problemsNo. of practical problems
1Computation of measures of central tendency (ungrouped and grouped data)1
2Computation measures of dispersion (ungrouped and grouped data) and computation of coefficient of variation1
3Measures of skewness and kurtosis using method of moments, Measures of Skewness using Box and whisker plot2
4Scatter diagram, correlation coefficient (ungrouped data) and interpretation. Compute manually and check with computer output1
5Fitting of lines of regression (Results to be verified with computer output)1
6Fitting of lines of regression and computation of correlation coefficient, Mean residual sum of squares, residual plot1
7Conditional probability and Bayes theorem3
8Obtaining descriptive statistics of probability distributions2
9Fitting probability distributions in real data (Binomial, Poisson and Normal)3
Total number of practical problems15

Statistics I Books

 

Text Books:


1. Michael Baron (2013). Probability and Statistics for Computer Scientists. 2nd Ed., CRC Press, Taylor & Francis Group, A Chapman & Hall Book.


2. Ronald E. Walpole, Raymond H. Myers, Sharon L. Myers, & Keying Ye (2012).
Probability & Statistics for Engineers & Scientists. 9th Ed., Printice Hall.


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