6.5 - Power | STAT 200 (2024)

The probability of rejecting the null hypothesis, given that the null hypothesis is false, is known aspower. In other words, power is the probability of correctly rejecting \(H_0\).

The power of a test can be increased in a number of ways, for example increasing the sample size, decreasing the standard error, increasing the difference between the sample statistic and the hypothesized parameter, or increasing the alpha level. Using a directional test (i.e., left- or right-tailed) as opposed to a two-tailed test would also increase power.

When we increase the sample size, decrease the standard error, or increase the difference between the sample statistic and hypothesized parameter, the p value decreases, thus making it more likely that we reject the null hypothesis. When we increase the alpha level, there is a larger range of p values for which we would reject the null hypothesis. Going from a two-tailed to a one-tailed test cuts the p value in half. In all of these cases, we say that statistically power is increased.

There is a relationship between \(\alpha\) and \(\beta\).If the sample size is fixed, then decreasing \(\alpha\) will increase \(\beta\). If we want both \(\alpha\) and \(\beta\) to decrease (i.e., decreasing the likelihood of both Type I and Type II errors), then we should increase the sample size.

Try it! Section

Question 1

If the power of a statistical test is increased, for example by increasing the sample size, how does the probability of a Type II error change?

The probability of committing a Type II error is known as \(\beta\).

\(Power+\beta=1\)

\(Power=1-\beta\)

If power increases then \(\beta\) must decrease. So, if the power of a statistical test is increased, for example by increasing the sample size, the probability of committing a Type II error decreases.

Question 2

When we fail to reject the null hypothesis,can we accept the null hypothesis? For example, with a p value of0.12we fail to reject the null hypothesis at 0.05 alpha level. Can we say that the data support the null hypothesis?

No. When we perform a hypothesis test, we only set the Type I error rate (i.e., alpha level) and guard against it. Thus, we can only present the strength of evidence against the null hypothesis. We can sidestep the concern about Type II error if the conclusion never mentions that the null hypothesis is accepted. When the null hypothesis cannot be rejected, there are two possible cases:

1) The null hypothesis is really true.

2) The sample size is not large enough to reject the null hypothesis (i.e., statistical power is too low).

Question 3

A study was conducted by a retail store to determine if the majority of their customers were teenagers. With \(\widehat{p}=0.48\), the null hypothesis was not rejected and the company concluded that they did not have enough evidence that the majority of their customers were teenagers. But, in reality, the proportion of all of their customers (i.e., the population) who are teenagersis actually \(p=0.53\). Did this research study result in a Type I error, Type II error, or correct decision?

The result of the study was to fail to reject the null hypothesis. In reality, the null hypothesis was false. This is a Type II error.

Question 4

A university conducted a hypothesis test to determine if their students' average SAT-Math score was greater than the national average of 500. They collected a sample of \(n=800\) students and found \(\overline{x}=506\). The t-test statistic was 1.70 and \(p=0.045\) therefore they rejected the null hypothesis and concluded that the mean SAT-Math score at their university was higher than the national average. However, in reality, in the population of all students at the university, the mean SAT-Math score is 503. Did this research study result in a Type I error, Type II error, or correct decision?

This study came to a correct conclusion. They rejected the null hypothesis and concluded that \(\mu>500\) when in reality \(\mu=503\) which is greater than 500.

6.5 - Power | STAT 200 (2024)

FAQs

Does power increase with sample size? ›

The concept of statistical power is more associated with sample size, the power of the study increases with an increase in sample size. Ideally, minimum power of a study required is 80%.

How to calculate the power of a test? ›

In hypothesis testing, we usually focus on power, which is defined as the probability that we reject H0 when it is false, i.e., power = 1- β = P(Reject H0 | H0 is false). Power is the probability that a test correctly rejects a false null hypothesis.

How to increase the power of a test? ›

The power of a test can be increased in a number of ways, for example increasing the sample size, decreasing the standard error, increasing the difference between the sample statistic and the hypothesized parameter, or increasing the alpha level.

Does increasing sample size change p-value? ›

Technically, the p-value depends on the size of the data being tested: the larger the sample size, the smaller the p-value.

What is a good power for a study? ›

We can design studies to have particulat levels of power. We typically go for 80 or 90% power which mean 80% or 90% of the time, our study will correctly reject the null hypothesis. It's unethical and a waste of time to do a study that is too small or a study that is too BIG.

How do you increase power with small sample size? ›

So even with a small sample, you might improve power by reducing the sample further. Likewise, in a clustered experiment, you might want to screen out a cluster that is really different in size from the other clusters and have more similarly sized clusters.

What is the sample size of 200 population? ›

Determining Sample Size
PopulationSamplePopulation
180123900
190127950
2001321000
2101361100
28 more rows

What is the rule for calculating power? ›

The formula for power in watts is given by the work and the time. The formula is P = W/t, where W is the work done in some time t.

What is 80% power of a test? ›

Power is usually set at 80%. This means that if there are true effects to be found in 100 different studies with 80% power, only 80 out of 100 statistical tests will actually detect them. If you don't ensure sufficient power, your study may not be able to detect a true effect at all.

How can you increase power? ›

Power depends on genetics, training, and diet. Genetics dictate types and amounts of muscle fibers. While you can't dictate genetics, you can have an effective power training program that includes strength, anaerobic training, and aerobic capacity. You can also eat foods that will increase your power.

What is a disadvantage of using large sample size? ›

However, challenges arise with larger samples, including increased costs, time consumption, and potential exposure of more participants to risks[3]. Moreover, a statistically significant finding from a large sample may not always be clinically relevant[3].

What three factors will increase the power of a test? ›

Increase sample size, Increase the significance level (alpha), Reduce measurement error by increasing the precision and accuracy of your measurement devices and procedures, Use a one-tailed test instead of a two-tailed test for t tests and z tests.

What is the difference between p-value and power? ›

Significance (p-value) is the probability that we reject the null hypothesis while it is true. Power is the probability of rejecting the null hypothesis while it is false. Significance is thus the probability of Type I error, whereas 1−power is the probability of Type II error.

What is the power to reject the null hypothesis? ›

Power is the probability of making a correct decision (to reject the null hypothesis) when the null hypothesis is false. Power is the probability that a test of significance will pick up on an effect that is present.

Why does sample size increase power? ›

As the sample size increases, so does the power of the significance test. This is because a larger sample size constricts the distribution of the test statistic. This means that the standard error of the distribution is reduced and the acceptance region is reduced which in turn increases the level of power.

What happens when you increase sample size? ›

In other words, as the sample size increases, the variability of sampling distribution decreases. Also, as the sample size increases the shape of the sampling distribution becomes more similar to a normal distribution regardless of the shape of the population.

What sample size is needed for 80% power? ›

To have 80% power to detect an effect size, it would be sufficient to have a total sample size of n = (5.6/0.5)2 = 126, or n/2 = 63 in each group. Sample size calculations for continuous outcomes are based on estimated effect sizes and standard deviations in the population—that is, ∆ and σ.

Why does small sample size decrease power? ›

The smaller the effect, the larger the sample size required to detect it. Small studies are generally only able to detect large effects, they are not good at detecting medium or small effects. All three magnitudes of effect can occur by chance without being a true effect.

What happens to power when we increase sample size holding all else equal? ›

Outcome variance and sample size: Sample outcome variance decreases as sample size increases, as larger samples are more representative of the underlying population. This leads to a more precise treatment effect estimate, which in turn lowers the probability of a type II error and hence increases power.

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