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  • In this lesson, we will learn about the errors that can be made in hypothesis testing.

  • In general, we can have two types of errors - type I error and type II error.

  • Sounds a bit boring, but this will be a fun lecture, I promise!

  • First we will define the problems, and then we will see some interesting examples.

  • Type I error is when you reject a true null hypothesis and is the more serious error.

  • It is also called ‘a false positive’.

  • The probability of making this error is alphathe level of significance.

  • Since you, the researcher, choose the alpha, the responsibility for making this error lies

  • solely on you.

  • Type II error is when you accept a false null hypothesis.

  • The probability of making this error is denoted by beta.

  • Beta depends mainly on sample size and population variance.

  • So, if your topic is difficult to test due to hard sampling or has high variability,

  • it is more likely to make this type of error.

  • As you can imagine, if the data set is hard to test, it is not your fault, so Type II

  • error is considered a smaller problem.

  • We should also mention that the probability of rejecting a false null hypothesis is equal

  • to 1 minus beta.

  • This is the researcher’s goalto reject a false null hypothesis.

  • Therefore, 1 minus beta is called the power of the test.

  • Generally, researchers increase the power of a test by increasing the sample size.

  • This is a common table statisticians use to summarize the types of errors.

  • Now, let’s see an example that I heard from my professor back when I was studying statistics

  • in university.

  • You are in love with this girl from the other class, but are unsure if she likes you.

  • There are two errors you can make.

  • First, if she likes you back and you don’t invite her out, you are making the type I

  • error.

  • The null hypothesis in this situation is: she likes you back.

  • It turns out that she really did like you back.

  • Unfortunately, you did not invite her out, because after testing the situation, you wrongly

  • thought the null hypothesis was false.

  • In other words, you made a type I error - you rejected a true null hypothesis and lost your

  • chance.

  • It is a very serious problem, because you could have been made for each other, but you

  • didn’t even try.

  • Now imagine another situation.

  • She doesn’t like you back, but you go and invite her out.

  • The null hypothesis is still: she likes you back, but this time it is false.

  • In reality she doesn’t really like you back, that is.

  • However, after testing, you accept the null hypothesis and wrongly go and invite her out.

  • She tells you she has a boyfriend that is much older, smarter and better at statistics

  • than you and turns her back.

  • You made a type II erroraccepted a false null hypothesis.

  • However, it is no big deal, as you go back to your normal life without her and soon forget

  • about this awkward situation.

  • Hypothesis testing is usually like that.

  • You don’t really want to make any of the two errors, but it happens sometimes.

  • You should be aware that statistics is very useful, but not perfect.

  • Alright.

  • That’s all from our love slash life slash statistics lesson.

  • Thanks for watching!

In this lesson, we will learn about the errors that can be made in hypothesis testing.

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タイプIのエラーとタイプIIのエラー (Type I error vs Type II error)

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    林宜悉 に公開 2021 年 01 月 14 日
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