P-Value (Definition, Formula, Table & Example) | Significant P-Value (2024)

In Statistics, the researcher checks the significance of the observed result, which is known as test static. For this test, a hypothesis test is also utilized. The P-valueor probability value concept is used everywhere in statistical analysis. It determines the statistical significance and the measure of significance testing. In this article, let us discuss its definition, formula, table, interpretation and how to use P-value to find the significance level etc. in detail.

Table of Contents:

  • P-value Definition
  • Table
  • Formula
  • Example
  • FAQs

P-value Definition

The P-value is known as the probability value. It is defined as the probability of getting a result that is either the same or more extreme than the actual observations. The P-value is known as the level of marginal significance within the hypothesis testing that represents the probability of occurrence of the given event. The P-value is used as an alternative to the rejection point to provide the least significance at which the null hypothesis would be rejected. If the P-value is small, then there is stronger evidence in favour of the alternative hypothesis.

P-value Table

The P-value table shows the hypothesis interpretations:

P-value

Decision

P-value > 0.05

The result is not statistically significant and hence don’t reject the null hypothesis.

P-value < 0.05

The result is statistically significant. Generally, reject the null hypothesis in favour of the alternative hypothesis.

P-value < 0.01

The result is highly statistically significant, and thus rejects the null hypothesis in favour of the alternative hypothesis.

Generally, the level of statistical significance is often expressed in p-value and the range between 0 and 1. The smaller the p-value, the stronger the evidence and hence, the result should be statistically significant. Hence, the rejection of the null hypothesis is highly possible, as the p-value becomes smaller.

Let us look at an example to better comprehend the concept of P-value.

Let’s say a researcher flips a coin ten times with the null hypothesis that it is fair. The total number of heads is the test statistic, which is two-tailed. Assume the researcher notices alternating heads and tails on each flip (HTHTHTHTHT). As this is the predicted number of heads, the test statistic is 5 and the p-value is 1 (totally unexceptional).

Assume that the test statistic for this research was the “number of alternations” (i.e., the number of times H followed T or T followed H), which is two-tailed once again. This would result in a test statistic of 9, which is extremely high and has a p-value of 1/28 = 1/256, or roughly 0.0039. This would be regarded as extremely significant, much beyond the 0.05 level. These findings suggest that the data set is exceedingly improbable to have happened by random in terms of one test statistic, yet they do not imply that the coin is biased towards heads or tails.

The data have a high p-value according to the first test statistic, indicating that the number of heads observed is not impossible. The data have a low p-value according to the second test statistic, indicating that the pattern of flips observed is extremely unlikely. There is no “alternative hypothesis,” (therefore only the null hypothesis can be rejected), and such evidence could have a variety of explanations – the data could be falsified, or the coin could have been flipped by a magician who purposefully swapped outcomes.

This example shows that the p-value is entirely dependent on the test statistic used and that p-values can only be used to reject a null hypothesis, not to explore an alternate hypothesis.

P-value Formula

We Know that P-value is a statistical measure, that helps to determine whether the hypothesis is correct or not. P-value is a number that lies between 0 and 1. The level of significance(α) is a predefined threshold that should be set by the researcher. It is generally fixed as 0.05. The formula for the calculation for P-value is

Step 1: Find out the test static Z is

\(\begin{array}{l}z = \frac{\hat{p}-p0}{\sqrt{\frac{po(1-p0)}{n}}}\end{array} \)

Where,

\(\begin{array}{l}\hat{p} = \text{Sample Proportion}\end{array} \)

P0 = assumed population proportion in the null hypothesis

N = sample size

Step 2: Look at the Z-table to find the corresponding level of P from the z value obtained.

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P-Value Example

An example to find the P-value is given here.

Question: A statistician wants to test the hypothesis H0: μ = 120 using the alternative hypothesis Hα: μ > 120 and assuming that α = 0.05. For that, he took the sample values as

n =40, σ = 32.17 and x̄ = 105.37. Determine the conclusion for this hypothesis?

Solution:

We know that,

\(\begin{array}{l}\sigma _{\bar{x}}=\frac{\sigma }{\sqrt{n}}\end{array} \)

Now substitute the given values

\(\begin{array}{l}\sigma _{\bar{x}}=\frac{32.17 }{\sqrt{40}}= 5.0865\end{array} \)

Now, using the test static formula, we get

t = (105.37 – 120) / 5.0865

Therefore, t = -2.8762

Using the Z-Score table, we can find the value of P(t>-2.8762)

From the table, we get

P (t<-2.8762) = P(t>2.8762) = 0.003

Therefore,

If P(t>-2.8762) =1- 0.003 =0.997

P- value =0.997 > 0.05

Therefore, from the conclusion, if p>0.05, the null hypothesis is accepted or fails to reject.

Hence, the conclusion is “fails to reject H0.

Stay tuned with BYJU’S – The Learning App for related concepts on P-value and examples and explore more videos.

Frequently Asked Questions on P-Value

Q1

What is meant by P-value?

The p-value is defined as the probability of obtaining the result at least as extreme as the observed result of a statistical hypothesis test, assuming that the null hypothesis is true.

Q2

What does a smaller P-value represent?

The smaller the p-value, the greater the statistical significance of the observed difference, which results in the rejection of the null hypothesis in favour of alternative hypotheses.

Q3

What does the p-value greater than 0.05 represent?

If the p-value is greater than 0.05, then the result is not statistically significant.

Q4

Can the p-value be greater than 1?

P-value means probability value, which tells you the probability of achieving the result under a certain hypothesis. Since it is a probability, its value ranges between 0 and 1, and it cannot exceed 1.

Q5

What does the p-value less than 0.05 represent?

If the p-value is less than 0.05, then the result is statistically significant, and hence we can reject the null hypothesis in favour of the alternative hypothesis.

P-Value (Definition, Formula, Table & Example) | Significant P-Value (2024)

FAQs

What is an example of a significant p-value? ›

P-values are expressed as decimals and can be converted into percentage. For example, a p-value of 0.0237 is 2.37%, which means there's a 2.37% chance of your results being random or having happened by chance. The smaller the P-value, the more significant your results are.

What is the formula for the p-value? ›

For a lower-tailed test, the p-value is equal to this probability; p-value = cdf(ts). For an upper-tailed test, the p-value is equal to one minus this probability; p-value = 1 - cdf(ts).

How is p-value calculated from a table? ›

The p-value also depends in part on whether you are conducting a lower-tailed test, upper-tailed test, or two-tailed test. The actual p-value is calculated by integrating the probability distribution function to find the relevant areas under the curve using integral calculus. This process can be quite complicated.

What is the p-value of 0.05 considered significant? ›

Is a 0.05 P-Value Significant? A p-value less than 0.05 is typically considered to be statistically significant, in which case the null hypothesis should be rejected. A p-value greater than 0.05 means that deviation from the null hypothesis is not statistically significant, and the null hypothesis is not rejected.

What is the p-value for dummies? ›

The p-value is used to either reject or retain (not reject) the null hypothesis in a hypothesis test. If the calculated p-value is smaller than the significance level, which in most cases is 5%, then the null hypothesis is rejected, otherwise it is not rejected.

How to calculate p-value by hand? ›

To compute a p-value by hand all you do is find the area “outside” of the test ratio value from step 6 in 'normal curve' – that is your p-value. There are two areas “outside” of your test ratio from step 6 – one on each side of the normal curve. The p-value is the area to the “outside” of the z-scores of -2.0 and 2.0.

How to find p-value on a calculator? ›

You can get a p-value by doing an inference test, which can be done by pressing the stat key followed by two clicks to the right. There will be a list of tests, and by putting in your numbers, the calculator will give you a p-value.

What is p in the formula? ›

The P-value formula is short for probability value. P-value defines the probability of getting a result that is either the same or more extreme than the other actual observations. The P-value represents the probability of occurrence of the given event.

How to calculate statistical significance? ›

Here are the steps for calculating statistical significance:
  1. Create a null hypothesis.
  2. Create an alternative hypothesis.
  3. Determine the significance level.
  4. Decide on the type of test you'll use.
  5. Perform a power analysis to find out your sample size.
  6. Calculate the standard deviation.
  7. Use the standard error formula.
Aug 8, 2022

What is the p-value in layman's terms? ›

The p value is a number, calculated from a statistical test, that describes how likely you are to have found a particular set of observations if the null hypothesis were true. P values are used in hypothesis testing to help decide whether to reject the null hypothesis.

How do you explain p-value to non-technicians? ›

The p-value helps you understand the likelihood that your results could have occurred by chance if the null hypothesis were true. A low p-value indicates that your findings are unlikely to be due to random chance, suggesting that the effect you're investigating may indeed be real.

What is the magic p-value? ›

The result seems clear to most when p is a lot smaller or a lot bigger than 0.05, but when it is around that magical number 0.05, that is when people get really obscure yet creative: p=0.073 is a “barely detectable statistically significant difference”; p=0.054 means “approached acceptance levels of statistical ...

What is the difference between p-value and significance level? ›

The p-value represents the strength of evidence against the null hypothesis, while the significance level represents the level of evidence required to reject the null hypothesis. If the p-value is less than the significance level, the null hypothesis is rejected, and the alternative hypothesis is accepted.

What are very significant p values? ›

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P valueWordingSummary
0.0001 to 0.001Extremely significant***
0.001 to 0.01Very significant**
0.01 to 0.05Significant*
≥ 0.05Not significantns
1 more row

Is p 0.0001 statistically significant? ›

Conventionally, p < 0.05 is referred as statistically significant and p < 0.001 as statistically highly significant.

When to use 0.01 and 0.05 level of significance? ›

How to Find the Level of Significance? If p > 0.05 and p ≤ 0.1, it means that there will be a low assumption for the null hypothesis. If p > 0.01 and p ≤ 0.05, then there must be a strong assumption about the null hypothesis. If p ≤ 0.01, then a very strong assumption about the null hypothesis is indicated.

Is p-value of .10 significant? ›

As has been said earlier, it was the practice of Fisher to assign P the value of 0.05 as a measure of evidence against null effect. One can make the “significant test” more stringent by moving to 0.01 (1%) or less stringent moving the borderline to 0.10 (10%).

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