What Does It Mean For Data To Be Statistically Significant?

by | Last updated on January 24, 2024

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A result of an experiment is said to have

statistical significance

, or be statistically significant, if it is likely not caused by chance for a given statistical significance level. … It also means that there is a 5% chance that you could be wrong.

What does it mean when research results are statistically significant?

A study result is statistically significant

if the p-value of the data analysis is less than the prespecified alpha (significance level)

. In our example, the p-value is 0.02, which is less than the pre-specified alpha of 0.05, so the researcher concludes there is statistical significance for the study.

How do you know if data is statistically significant?

The level at which one can accept whether an event is statistically significant is known as the significance level. Researchers use a test statistic known as the p-value to determine statistical significance:

if the p-value falls below the significance level

, then the result is statistically significant.

What does it mean if data is not statistically significant?

This means that the results are considered to be „statistically non-significant‟ if the analysis

shows that differences as large as (or larger than) the observed difference would be expected to occur by chance more than one out of twenty times

(p > 0.05).

What does it mean when data is significant?


Statistical significance

is a determination by an analyst that the results in the data are not explainable by chance alone. … A p-value of 5% or lower is often considered to be statistically significant.

What is an example of statistical significance?

Your statistical significance level

reflects your risk tolerance and confidence level

. For example, if you run an A/B testing experiment with a significance level of 95%, this means that if you determine a winner, you can be 95% confident that the observed results are real and not an error caused by randomness.

Is statistical results are absolutely correct?

Explanation: Statistical results only show the average behaviours and as such are

not universally true

. For example, average marks of 50 students in a class cannot be taken to mean the every student of that class has secured 50 marks. Hence, they are true only on the average.

What is statistical significance and why is it important?

What is statistical significance? “Statistical significance

helps quantify whether a result is likely due to chance or to some factor of interest

,” says Redman. When a finding is significant, it simply means you can feel confident that’s it real, not that you just got lucky (or unlucky) in choosing the sample.

What is the meaning of significant difference in statistics?

A statistically significant difference is

simply one where the measurement system (including sample size, measurement scale, etc.) was capable of detecting a difference (with a defined level of reliability)

. Just because a difference is detectable, doesn’t make it important, or unlikely.

What is a 5% significance level?

The significance level, also denoted as alpha or α, is the probability of rejecting the null hypothesis when it is true. For example, a significance level of 0.05 indicates

a 5% risk of concluding that a difference exists when there is no actual difference

.

What is a significant result?

In principle, a statistically significant result (usually a difference) is

a result that’s not attributed to chance

. More technically, it means that if the Null Hypothesis is true (which means there really is no difference), there’s a low probability of getting a result that large or larger.

Can we ever find 100% significance?


We can never be completely 100% certain that a relationship exists between two variables

. There are too many sources of error to be controlled, for example, sampling error, researcher bias, problems with reliability and validity, simple mistakes, etc.

What does it mean by no significant difference?

Instead, ‘

no statistically significant difference

‘ is often further abbreviated, making it even less representative of its true meaning (Figure 1). Also, the P value might be presented as >0.05 or as not significant, rather than its actual value, which further reduces the amount of information provided.

How do you know if something is significant or not?

If your P-value is lower than the significance level, you can conclude that your observation is

statistically significant

. Let’s take a look at an example. … We also set a significance level (α) value of 0.05, which means the results are significant only if the P-value is below 0.05..

How do you interpret statistical significance?

  1. A p-value less than 0.05 (typically ≤ 0.05) is statistically significant. …
  2. A p-value higher than 0.05 (> 0.05) is not statistically significant and indicates strong evidence for the null hypothesis.

Is .000 statistically significant?

000 which is impossible and must be taken as p< . 001, i.e null hypothesis is rejected (test

is statistically significant

). … P value 0.000 means the null hypothesis is true.

Amira Khan
Author
Amira Khan
Amira Khan is a philosopher and scholar of religion with a Ph.D. in philosophy and theology. Amira's expertise includes the history of philosophy and religion, ethics, and the philosophy of science. She is passionate about helping readers navigate complex philosophical and religious concepts in a clear and accessible way.