What are T Values and P Values in Statistics? (2024)

Topics: Hypothesis Testing

If you’re not a statistician, looking through statistical output can sometimes make you feel a bit like Alice in Wonderland. Suddenly, you step into a fantastical world where strange and mysterious phantasms appear out of nowhere.

For example, consider the T and P in your t-test results.

“Curiouser and curiouser!” you might exclaim, like Alice, as you gaze at your output.

What are T Values and P Values in Statistics? (1)

What are these values, really? Where do they come from? Even if you’ve used the p-value to interpret the statistical significance of your resultsumpteen times, its actual origin may remain murky to you.

T & P: The Tweedledee and Tweedledum of a T-test

T and P are inextricably linked. They go arm in arm, like Tweedledee and Tweedledum. Here's why.

When you perform a t-test, you're usually trying to find evidence of a significant difference between population means (2-sample t) or between the population mean and a hypothesized value (1-sample t). The t-value measures the size of the difference relative to the variation in your sample data. Put another way, T is simply the calculated difference represented in units of standard error. The greater the magnitude of T, the greater the evidence against the null hypothesis. This means there is greater evidence that there is a significant difference. The closer T is to 0, the more likely there isn't a significant difference.

Remember, the t-value in your output is calculated from only one sample from the entire population. It you took repeated random samples of data from the same population, you'd get slightly different t-values each time, due to random sampling error (which is really not a mistake of any kind–it's just the random variation expected in the data).

How different could you expect the t-values from many random samples from the same population to be? And how does the t-value from your sample data compare to those expected t-values?

You can use a t-distribution to find out.

Using a t-distribution to calculate probability

For the sake of illustration, assume that you're using a 1-sample t-test to determine whether the population mean is greater than a hypothesized value, such as 5, based on a sample of 20 observations, as shown in the above t-test output.

  1. In Minitab, choose Graph > Probability Distribution Plot.
  2. Select View Probability, then click OK.
  3. From Distribution, select t.
  4. In Degrees of freedom, enter 19. (For a 1-sample t test, the degrees of freedom equals the sample size minus 1).
  5. Click Shaded Area. Select X Value. Select Right Tail.
  6. In X Value, enter 2.8 (the t-value), then click OK.

What are T Values and P Values in Statistics? (2)

The highest part (peak) of the distribution curve shows you where you can expect most of the t-values to fall. Most of the time, you’d expect to get t-values close to 0. That makes sense, right? Because if you randomly select representative samples from a population, the mean of most of those random samples from the population should be close to the overall population mean, making their differences (and thus the calculated t-values) close to 0.

Ready for a demo of Minitab Statistical Software? Just ask!

What are T Values and P Values in Statistics? (3)

T values, P values, and poker hands

T values of larger magnitudes (either negative or positive) are less likely. The far left and right "tails" of the distribution curve represent instances of obtaining extreme values of t, far from 0. For example, the shaded region represents the probability of obtaining a t-value of 2.8 or greater. Imagine a magical dart that could be thrown to land randomly anywhere under the distribution curve. What's the chance it would land in the shaded region? The calculated probability is 0.005712.....which rounds to 0.006...which is...the p-value obtained in the t-test results!What are T Values and P Values in Statistics? (4)

In other words, the probability of obtaining a t-value of 2.8 or higher, when sampling from the same population (here, a population with a hypothesized mean of 5), is approximately 0.006.

How likely is that? Not very! For comparison, the probability of being dealt 3-of-a-kind in a 5-card poker hand is over three times as high (≈ 0.021).

Given that the probability of obtaining a t-value this high or higher when sampling from this population is so low, what’s more likely? It’s more likely this sample doesn’t come from this population (with the hypothesized mean of 5). It's much more likely that this sample comes from different population, one with a mean greater than 5.

To wit: Because the p-value is very low (< alpha level), you reject the null hypothesis and conclude that there's a statistically significant difference.

In this way, T and P are inextricably linked. Consider them simply different ways to quantify the "extremeness" of your results under the null hypothesis. You can’t change the value of one without changing the other.

The larger the absolute value of the t-value, the smaller the p-value, and the greater the evidence against the null hypothesis.(You can verify this by entering lower and higher t values for the t-distribution in step 6 above).

Try this two-tailed follow up...

The t-distribution example shown above is based on a one-tailed t-test to determine whether the mean of the population is greater than a hypothesized value. Therefore the t-distribution example shows the probability associated with the t-value of 2.8 only in one direction (the right tail of the distribution).

How would you use the t-distribution to find the p-value associated with a t-value of 2.8 for two-tailed t-test (in both directions)?

Hint: In Minitab, adjust the options in step 5 to find the probability for both tails. If you don't have a copy of Minitab, download a free 30-day trial version.

What are T Values and P Values in Statistics? (5)

What are T Values and P Values in Statistics? (2024)

FAQs

What are t-values and P values? ›

The t-statistic is a measure of the difference between the two sets expressed in units of standard error. The P-value is a measure of the probability of an observation lying at extreme t-values, therefore a low p-value also implies “significance”.

What is a good t test value? ›

Generally, a t-statistic of 2 or higher is considered to be statistically significant. However, the exact value of the t-statistic that is considered to be statistically significant will depend on the sample size and the level of confidence desired.

When the p-value is less than 0.05 then which of the following is accepted? ›

If the p-value is less than 0.05, it is judged as “significant,” and if the p-value is greater than 0.05, it is judged as “not significant.” However, since the significance probability is a value set by the researcher according to the circ*mstances of each study, it does not necessarily have to be 0.05.

What is a good p-value in statistics? ›

A P-Value < or = 0.05 is considered statistically significant. It denotes strong evidence against the null hypothesis, since there is below 5% probability of the null being correct. So, we reject the null hypothesis and accept the alternative hypothesis.

How do you interpret the T and P values? ›

A big t, with a small p-value, means that the null hypothesis is discredited, and we would assert that the means are significantly different in the way specified by the null hypothesis (and a small t, with a big p-value means they are not significantly different in the way specified by the null hypothesis).

What is the p-value in simple terms? ›

The P value is defined as the probability under the assumption of no effect or no difference (null hypothesis), of obtaining a result equal to or more extreme than what was actually observed. The P stands for probability and measures how likely it is that any observed difference between groups is due to chance.

What is an acceptable t-value range? ›

Definition of T-value

Generally, any t-value greater than +2 or less than - 2 is acceptable. The higher the t-value, the greater the confidence we have in the coefficient as a predictor. Low t-values are indications of low reliability of the predictive power of that coefficient.

What is a high t-value mean? ›

The greater the magnitude of T, the greater the evidence against the null hypothesis. This means there is greater evidence that there is a significant difference. The closer T is to 0, the more likely there isn't a significant difference.

Do you reject if p-value is greater than a? ›

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 happens if p-value is less than A? ›

The p-value is less than or equal to alpha. In this case, we reject the null hypothesis. When this happens, we say that the result is statistically significant. In other words, we are reasonably sure that there is something besides chance alone that gave us an observed sample.

What if p is less than significance level? ›

If your P value is less than the chosen significance level then you reject the null hypothesis i.e. accept that your sample gives reasonable evidence to support the alternative hypothesis.

What does a t-test tell you? ›

A t-test is an inferential statistic used to determine if there is a significant difference between the means of two groups and how they are related. T-tests are used when the data sets follow a normal distribution and have unknown variances, like the data set recorded from flipping a coin 100 times.

What does a P value of 0.9 mean? ›

If the null hypothesis holds, then the p-values of your statistic have a uniform distribution. A p-value of 0.2 just means that you'd get a statistic greater than that 20% of the time under the null hypothesis; a p-value of 0.9 means you'd see a greater value 90% of the time.

What does a P value of 0.3 mean? ›

E.g. a p-value of 0.3 means "repeating the study many times, given that the null hypothesis + all other assumptions are true, I would see the result I'm seeing (or a more extreme result) 30% of time, so it wouldn't be super unusual.

Is a negative t-value significant? ›

A negative t value only means there is a significant (if P<. 05) decrease between the former set with the next set. If you reverse order the values in the calculator the T value will be positive. For instance if your data is time related, Like temperature of January Vs May.

What is the difference between p-value Z and T? ›

P-values provide a quick check for statistical significance, while t/z scores offer deeper insights into effect sizes and are more informative when data distributions are well-understood.

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