Statistics with R Programming Pdf Notes- Download B.Tech Notes, Study Material, Books

Download Statistics with R Programming Pdf Notes. We provide B.tech Statistical with R Programming study materials to B.Tech  student with free of cost and it can download easily and without registration need. You can Check Statistical with R Programming of B.Tech  Study Materials and Lecture Notes with Syllabus and Important Questions (R ప్రోగ్రామింగ్‌తో గణాంకాలు). From the following B.tech Statistical with R Programming Notes, you can get the complete Study Material in Single Download Link.

Also, Read The following links for More Information

Statistics with R Programming Pdf Notes

After taking the course, students will be able to Use R for statistical programming, computation, graphics, and modeling, Write functions and use R in an efficient way, Fit some basic types of statistical models, Use R in their own research, Be able to expand their knowledge of R on their own. R is a statistical computer program made available through the Internet under the General Public License (GPL).

That is, it is supplied with a license that allows you to use it freely, distribute it, or even sell it, as long as the receiver has the same rights and the source code is freely available. It exists for Microsoft Windows XP or later, for a variety of Unix and Linux platforms, and for Apple Macintosh OS X.

Introduction to R Statistics:

R is an open source programming language and software environment for statistical computing and graphics that is supported by the R Foundation for Statistical Computing. The  R language is widely used among statisticians and data miners for developing statistical software and data analysis. … R is a GNU package.

Statistics with R programming Pdf Notes

introduction to r statistics

Download

introduction to r programming

Download

Statistics with R Programming notes pdf Study material

Download

Statistics with R Programming Question Paper

Download

List of Reference Books for Statistics with R Programming- 2nd Year

  • The Art of R Programming, Norman Matloff, Cengage Learning
  • R for Everyone, Lander, Pearson
  • Siegel, S. (1956), Nonparametric Statistics for the Behavioral Sciences, McGraw-Hill International, Auckland.
  • R Cookbook, PaulTeetor, Oreilly.
  • R in Action, Rob Kabacoff, Manning
  • Venables, W. N., and Ripley, B. D. (2000), S Programming, Springer-Verlag, New York.
  • Venables, W. N., and Ripley, B. D. (2002), Modern Applied Statistics with S, 4th ed., Springer-Verlag, New York.
  • Weisberg, S. (1985), Applied Linear Regression, 2nd ed., John Wiley & Sons, New York.
  • Zar, J. H. (1999), Biostatistical Analysis, Prentice Hall, Englewood Cliffs, NJ

Statistics with R Programming Syllabus – 1st sem

UNIT-I:

Introduction, How to run R, R Sessions, and Functions, Basic Math, Variables, Data Types, Vectors, Conclusion, Advanced Data Structures, Data Frames, Lists, Matrices, Arrays, Classes.

UNIT-II:

R Programming Structures, Control Statements, Loops, – Looping Over Nonvector Sets,- If-Else, Arithmetic, and Boolean Operators and values, Default Values for Argument, Return Values, Deciding Whether to explicitly call return- Returning Complex Objects, Functions are Objective, No Pointers in R, Recursion, A Quicksort Implementation-Extended Extended Example: A Binary Search Tree.

UNIT-III:

Doing Math and Simulation in R, Math Function, Extended Example Calculating Probability- Cumulative Sums and Products-Minima and Maxima- Calculus, Functions Fir Statistical Distribution, Sorting, Linear Algebra Operation on Vectors and Matrices, Extended Example: Vector cross Product- Extended Example: Finding Stationary Distribution of Markov Chains, Set Operation, Input /out put, Accessing the Keyboard and Monitor, Reading and writer Files,

UNIT-IV:

Graphics, Creating Graphs, The Workhorse of R Base Graphics, the plot() Function – Customizing Graphs, Saving Graphs to Files.

UNIT-V:

Probability Distributions, Normal Distribution- Binomial Distribution- Poisson Distributions Other Distribution, Basic Statistics, Correlation and Covariance, T-Tests,-ANOVA.

UNIT-VI:

Linear Models, Simple Linear Regression, -Multiple Regression Generalized Linear Models, Logistic Regression, – Poisson Regression- other Generalized Linear Models-Survival Analysis, Nonlinear Models, Splines- Decision- Random Forests,

OUTCOMES:

At the end of this course, students will be able to:
• List motivation for learning a programming language
• Access online resources for R and import new function packages into the R workspace
• Import, review, manipulate and summarize data-sets in R
• Explore data-sets to create testable hypotheses and identify appropriate statistical tests
• Perform appropriate statistical tests using R Create and edit visualizations with

Statistics with R Programming Important Questions

  • Explain about Variables, Constants and Data Types in R Programming
  • How to create, name , access , merging and manipulate list elements? Explain with examples.
  •  Write about Arithmetic and Boolean operators in R programming?
  •  How to create user defined function in R? How to define default values in R? Write syntax and examples?
  •  Explain functions for accessing the keyboard and monitor, Reading and writing files
  •  Write an R function to find sample covariance.
  • Write about the following functions with example
    a)points() b) legend() c)text() d) locator()
  •  Describe R functions for Reading a Matrix or Data Frame From a File
  • Fit a poisson distribution to the following data
    x 0,1,2,3,4,5
    f 3,9,12,27,4,1
    Also, test the adequacy of the model
  •  Calculate the coefficient of correlation to the following data
    X 10 12 18 24 23 27
    Y 13 18 12 25 30 10

Buy Statistics with R Programming Books for 1st year Online at Amazon.in

Introductory Statistics with R (Statistics and Computing)
  • Peter Dalgaard
  • Springer
  • Edition no. 1st ed. 2002. Corr. 3d printing (02/10/2004)
  • Paperback: 267 pages
Statistics: An Introduction using R
  • Michael J. Crawley
  • Wiley-Blackwell
  • Paperback: 342 pages
A Handbook of Statistical Analyses using R
  • CRC Press
  • Torsten Hothorn, Brian S. Everitt
  • Chapman and Hall/CRC
  • Edition no. 3 (08/14/2014)
  • Paperback: 456 pages
Sale
A First Course in Statistical Programming with R
  • Cambridge University Press
  • W. John Braun, Duncan J. Murdoch
  • Cambridge University Press
  • Edition no. 2 (07/18/2016)
  • Paperback: 230 pages
Sale
Statistical Analysis with R For Dummies (For Dummies (Computer/Tech))
  • FOR DUMMIES
  • Joseph Schmuller
  • John Wiley & Sons
  • Paperback: 456 pages
Sale
Discovering Statistics Using R
  • Sage Publications (CA)
  • Andy Field
  • SAGE Publications Limited
  • Edition no. 1 (03/01/1900)
  • Paperback: 992 pages

We provided the Download Links to Statistics with R Programming Pdf Notes- Download B.Tech Notes, Study Material, Books, for Engineering Students. Share this article with your classmates and friends so that they can also follow Latest Study Materials and Notes on Engineering Subjects.  Any University student can download given B.Tech Notes and Study material or you can buy B.Tech 1st Year Statistics with R Programming Books at Amazon also. For any query regarding Statistics with R, Programming Pdf Contact us via the comment box below.

📢 Get Latest Exam Updates via E-mail ✉

Note : Submit your name, email, state and updates category below.
  • This field is for validation purposes and should be left unchanged.
2 Comments
  1. sasi says

    is there any pdf material for this r programming

  2. Chandra Shekar says

    R program notes

Leave A Reply

Your email address will not be published.