Explain the use and use of both non-parametric and parametric statistics. Distinguish between statistics that are parametric and those that are not.
Describe the application and uses of parametric and non-parametric statistics. Differentiate between parametric and non-parametric statistics.
Share
1. Parametric Statistics: Application and Uses
Parametric statistics are based on specific assumptions about the population distribution, typically assuming that the data follows a normal distribution. These statistics require interval or ratio level data and are used in situations where the underlying population distribution is known or can be reasonably assumed to be normal.
Application and Uses of Parametric Statistics:
2. Non-parametric Statistics: Application and Uses
Non-parametric statistics do not rely on assumptions about the population distribution and are used when the data do not meet the requirements for parametric tests. Non-parametric methods are often employed with ordinal or nominal level data or when the sample size is small.
Application and Uses of Non-parametric Statistics:
3. Difference Between Parametric and Non-parametric Statistics
Assumptions:
Data Type:
Sample Size:
Precision:
Conclusion
Parametric and non-parametric statistics serve distinct purposes and are applied in different situations depending on the nature of the data and the underlying assumptions. Parametric statistics rely on assumptions about the population distribution and are used with interval or ratio level data when these assumptions are met. Non-parametric statistics, on the other hand, do not make distributional assumptions and are employed when dealing with non-normally distributed data or small sample sizes. Understanding the differences between parametric and non-parametric statistics is essential for selecting the appropriate statistical methods and ensuring valid and reliable results in research and data analysis.