Which of the following errors refers to the wrong negation of a true null hypothesis?
A.
Type I Error
B.
Type II Error
C.
Logical Error
D.
Hypothesis Error
E.
None of the above
The Answer Is:
A
This question includes an explanation.
Explanation:
In hypothesis testing, two main types of errors are defined:
Type I Error (Option A): Occurs when the null hypothesis (H₀) is true, but we incorrectly reject it. This is known as a false positive. Example: Concluding a drug is effective when it is not.
Type II Error (Option B): Occurs when the null hypothesis (H₀) is false, but we fail to reject it. This is a false negative. Example: Concluding a drug has no effect when it actually does.
Logical Error / Hypothesis Error (Options C and D): Not standard terms in statistical hypothesis testing.
Thus, the “wrong negation of a true null hypothesis” refers to a Type I Error (false positive).
[Reference:, DASCA Data Scientist Knowledge Framework (DSKF) – Statistical Foundations in Data Science: Hypothesis Testing & Errors., ]
SDS PDF/Engine
Printable Format
Value of Money
100% Pass Assurance
Verified Answers
Researched by Industry Experts
Based on Real Exams Scenarios
100% Real Questions
Get 65% Discount on All Products,
Use Coupon: "ac4s65"