Question

In: Operations Management

A Type I error is a greater concern than a Type II error. Agree or disagree...

A Type I error is a greater concern than a Type II error. Agree or disagree with this statement and use examples to support your position. Choose a classmate with an opposing view and try to respectfully persuade them to your point of view.

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Expert Solution

I do no longer trust the assertion that type I mistakes is greater subject as examine to kind II error. This is due to the fact kind II mistakes occur while we not reject the false null hypothesis and no end is drawn out of it. On the other hand, kind I blunders occur whilst we wrongly reject the null hupothesis this is real and consequently made a prediction that isn't authentic. For example, whilst we check the person for the presence of HIV virus, type I errors occur when we wrongly inform the patient that he is having HIV fine but in truth he isn't always and sort II errors ocvur while the character with HIV , informed that he isn't always have virus. Both those mistakes are similarly incorrect and in this case type II will be greater worse because character with HIV +ve would no longer able to get to recognise that he is suffering from AIDS , that could lead to the dying of individual.


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