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Is the P value the type 1 error?

Sophia Martinez | 2023-06-17 08:00:31 | page views:1911
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Harper Johnson

Studied at the University of Edinburgh, Lives in Edinburgh, Scotland.
As a domain expert in statistics, I'd like to clarify the concept of the p-value and its relationship with Type I error. The p-value is a statistic that measures the strength of the evidence against a null hypothesis. It is calculated under the assumption that the null hypothesis is true. However, it is not the same as the Type I error rate, which is the probability of incorrectly rejecting a true null hypothesis.
The p-value is used to make a decision about whether to reject the null hypothesis in a hypothesis test. A low p-value indicates strong evidence against the null hypothesis, suggesting that the observed data would be unlikely if the null hypothesis were true. Typically, a p-value threshold, such as 0.05, is chosen before conducting the test. If the p-value is less than this threshold, the null hypothesis is rejected in favor of the alternative hypothesis.

Now, let's address the misconception presented in the provided statement. The statement suggests that the p-value is the probability of making a Type I error given that the null hypothesis is true and we decide to reject it. This is not accurate. The p-value is not a probability statement about the decision to reject the null hypothesis; rather, it is a measure of how incompatible the data are with the null hypothesis.

The Type I error rate, denoted by \( \alpha \), is a threshold set by the researcher before conducting the test. It represents the maximum acceptable probability of committing a Type I error. The p-value is compared to \( \alpha \) to decide whether to reject the null hypothesis. If the p-value is less than \( \alpha \), the evidence is strong enough to reject the null hypothesis at the chosen level of significance.

It's important to note that the p-value does not change with the decision to reject or fail to reject the null hypothesis. It is a property of the data given the null hypothesis. The decision to reject or not is based on the comparison of the p-value to the pre-set significance level \( \alpha \).

In summary, the p-value is a statistic that provides information about the strength of the evidence against the null hypothesis. It is not a direct measure of the Type I error rate. The Type I error rate is a threshold that determines the decision-making process in hypothesis testing.


2024-04-22 14:34:52

Zoe Lee

Studied at the University of Cape Town, Lives in Cape Town, South Africa.
My understanding of one interpretation of a p-value is the following: "the p-value tells us the probability of making a type 1 error, conditional on the fact that the null hypothesis is true and we do indeed decide to reject the null hypothesis".Jun 24, 2015
2023-06-26 08:00:31

Cameron Hall

QuesHub.com delivers expert answers and knowledge to you.
My understanding of one interpretation of a p-value is the following: "the p-value tells us the probability of making a type 1 error, conditional on the fact that the null hypothesis is true and we do indeed decide to reject the null hypothesis".Jun 24, 2015
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