Null hypothesis
In statistics, the null hypothesis (H0) is a statement that assumes there is no significant difference or relationship between the variables being tested
In statistics, the null hypothesis (H0) is a statement that assumes there is no significant difference or relationship between the variables being tested. It is the initial assumption or default position that is tested against an alternative hypothesis (H1) during a statistical analysis.
The null hypothesis is usually formulated based on the belief that any observed differences or relationships in the data are due to random chance. It represents the idea that there is no real effect or relationship present in the population being studied.
To better understand the concept of a null hypothesis, let’s imagine a simple example. Suppose you want to investigate whether a new drug is effective in treating a certain medical condition. The null hypothesis in this case would state that the drug has no effect, and any observed improvements in patients’ conditions are merely due to chance or other factors.
When conducting a statistical analysis, you collect data from a sample population and perform hypothesis testing to determine whether the null hypothesis can be rejected or not. In this case, if the statistical analysis shows that the data provides strong evidence against the null hypothesis, you may reject it in favor of the alternative hypothesis, indicating that there is a significant effect or relationship between the variables.
However, it is important to note that failing to reject the null hypothesis does not necessarily mean that the null hypothesis is true. It simply means that there is not enough evidence to support the alternative hypothesis based on the given data.
More Answers:
Understanding Sampling Error: Exploring the Natural Variability in Statistical AnalysisA Comprehensive Guide to Descriptive and Inferential Interpretations in Data Analysis
A Comprehensive Guide to Null Hypothesis Testing in Statistics