ijsmi books
2 min readOct 1, 2022

Introduction to Non Parametric Methods through R Software

Introduction to Non Parametric Methods through R Software

Preface

Statistical Methods are widely used in Medical, Biological, Clinical, Business and Engineering field. The data which form the basis for the statistical methods helps us to take scientific and informed decisions. Statistical methods deal with the collection, compilation, analysis and making inference from the data.

The book mainly focuses on non-parametric aspects of Statistical methods. Non parametric methods or tests are used when the assumption about the distribution of the variables in the data set is not known or does not follow normal distribution assumption. Non parametric methods are useful to deal with ordered categorical data. When the sample size is large, statistical tests are robust due to the central limit theorem property. When sample size is small one need to use non-parametric tests. Compared to parametric tests, non-parametric tests are less powerful i.e. if we fail to reject the null hypothesis even if it is false. When the data set involves ranks or measured in ordinal scale then non-parametric tests are useful and easy to construct than parametric tests. The book uses open source R statistical software to carry out different non-parametric statistical methods with sample datasets.

Editor

International Journal of Statistics and Medical Informatics

Website : www.ijsmi.com/book.php

2 | P a g e

Amazon link

https://www.amazon.com/dp/B0BH26YK76

Other books from the author

 Forecasting models — an overview with the help of R software : Time series — Past ,Present and Future

 Deep Learning Models explored with help of Python Programming

 Bayesian Methodology: An overview with the help of R software

 Machine Learning: An overview with the help of R software

 Deep Learning Models and its application: An overview with the help of R software

 Essentials of Bio-Statistics: An overview with the help of Software

 Designing and Conducting Clinical Trials An overview

 Python programming for Data Scientists: From Introductory concepts to Machine Learning Models

 Introduction to Statistical Methods

 R Programming — A comprehensive guide

 Digital Technologies An overview of concepts, tools and techniques associated with it

 Ways to become successful in career: Required skill sets

 Essential of Biostatistics: An Overview with the help of software- 2nd in Series: Pocket Guide

 Application of statistical tools in biomedical domain: An overview with help of software