Returns the right-tailed probability of the chi-squared distribution.
The χ2 distribution is associated with a χ2 test. Use the χ2 test to compare observed and expected values. For example, a genetic experiment might hypothesize that the next generation of plants will exhibit a certain set of colors. By comparing the observed results with the expected ones, you can decide whether your original hypothesis is valid.
The CHISQ.DIST.RT function syntax has the following arguments (argument: A value that provides information to an action, an event, a method, a property, a function, or a procedure.):
- X Required. The value at which you want to evaluate the distribution.
- Deg_freedom Required. The number of degrees of freedom.
- If either argument is nonnumeric, CHISQ.DIST.RT function returns the #VALUE! error value.
- If any argument is nonnumeric, CHISQ.DIST.RT function returns the #VALUE! error value.
- If deg_freedom is not an integer, it is truncated.
- If deg_freedom < 1 or deg_freedom > 10^10, CHISQ.DIST.RT returns the #NUM! error value.
The example may be easier to understand if you copy it to a blank worksheet.
How do I copy an example?
- Select the example in this article. If you are copying the example in Excel Online, copy and paste one cell at a time.
Important: Do not select the row or column headers.
Selecting an example from Help
- Press CTRL+C.
- Create a blank workbook or worksheet.
- In the worksheet, select cell A1, and press CTRL+V. If you are working in Excel Online, repeat copying and pasting for each cell in the example.
Important: For the example to work properly, you must paste it into cell A1 of the worksheet.
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After you copy the example to a blank worksheet, you can adapt it to suit your needs.
||Value at which you want to evaluate the distribution
||Degrees of freedom
||One-tailed probability of the chi-squared distribution, for the above terms (0.050001)