Enter the test statistic (Z, T, Chi-Square & F scores) to calculate the P-value and determine the statistical significance of your results.
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This P-value calculator helps you quickly determine one-tailed or two-tailed P-values from various statistical scores, such as Z-score, T-score, F-statistic, Pearson correlation (r), Chi-square, or Tukey Q score. It also compares the result with a chosen significance level to indicate whether your findings are statistically significant.
Ideal for students, researchers, and data analysts, this calculator simplifies hypothesis testing and makes interpreting statistical results fast and accurate.
Choose the statistical test you are performing: Z-test, T-test, Chi-square test, F-test, Pearson correlation, or Tukey Q test.
Input the observed test statistic from your data.
Select one-tailed or two-tailed depending on your hypothesis.
For T-tests, Chi-square, or Pearson tests, input the degrees of freedom (df).
Click “Calculate” to get the P-value instantly, along with an indication of statistical significance based on your chosen alpha level (commonly 0.05).
The P-value represents the probability of obtaining a result as extreme or more extreme than the observed data, assuming the null hypothesis (H₀) is true. It helps assess whether the observed effect is likely due to chance or represents a real effect.
Null Hypothesis (H₀): Suggests no difference or effect; any observed difference is due to random variation.
Alternative Hypothesis (H₁): Suggests a real difference or effect exists in the data.
Significance Level (α): Typically 0.05. If P ≤ α, the result is statistically significant, allowing rejection of H₀.
Each statistical test has a method to calculate P-values based on the probability distribution of the test statistic under H₀.
Used for large samples (n > 30) or known population standard deviation (σ).
Z = X - μ σ
Used for small samples (n < 30) or unknown population standard deviation.
t = X - μ S / √n
Used to test the relationship between categorical variables. Large χ² values suggest a significant difference between observed and expected counts.
χ² = Σ (O - E)² E
Used to compare variances between two or more groups.
F = (s₁)² (s₂)²
Measures the strength and direction of a linear relationship between two variables. Calculate the t-statistic:
t = r√(n-2) √(1 - r²)
Degrees of freedom: df = n - 2. Use t-distribution to find P-value.
Used in ANOVA post-hoc tests to compare group differences.
| Example | Test | Statistic | df | P-Value (Two-Tailed) | Interpretation |
|---|---|---|---|---|---|
| 1 | Z-test | z = 2.10 | — | 0.036 | 3.6% chance result is due to random variation. |
| 2 | T-test | t = 2.10 | 20 | 0.048 | Significant at α = 0.05; reject H₀. |
| 3 | χ²-test | χ² = 6.63 | 1 | 0.010 | Significant difference between observed and expected. |
| 4 | F-test | F = 3.25 | (2,18) | 0.061 | Not statistically significant at α = 0.05. |
No. P = 0.03 indicates a 3% chance of obtaining the observed result (or more extreme) assuming H₀ is true, not the probability H₀ itself is true.
No. P-values are always between 0 and 1.
Statistical significance shows whether the observed effect is likely real or due to chance. A significant P-value provides strong evidence to reject H₀.
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