In statistical hypothesis testing, this fraction is given the letter β. Ĭomplementarily, the false negative rate (FNR) is the proportion of positives which yield negative test outcomes with the test, i.e., the conditional probability of a negative test result given that the condition being looked for is present. Increasing the specificity of the test lowers the probability of type I errors, but may raise the probability of type II errors (false negatives that reject the alternative hypothesis when it is true). In statistical hypothesis testing, this fraction is given the Greek letter α, and 1 − α is defined as the specificity of the test. The specificity of the test is equal to 1 minus the false positive rate. The false positive rate is equal to the significance level. The false positive rate (FPR) is the proportion of all negatives that still yield positive test outcomes, i.e., the conditional probability of a positive test result given an event that was not present. Main articles: Sensitivity and specificity and False positive rate Related terms False positive and false negative rates The condition "the woman is pregnant", or "the person is guilty" holds, but the test (the pregnancy test or the trial in a court of law) fails to realize this condition, and wrongly decides that the person is not pregnant or not guilty.Ī false negative error is a type II error occurring in a test where a single condition is checked for, and the result of the test is erroneous, that the condition is absent. For example, when a pregnancy test indicates a woman is not pregnant, but she is, or when a person guilty of a crime is acquitted, these are false negatives. False negative error Ī false negative error, or false negative, is a test result which wrongly indicates that a condition does not hold. The latter is known as the false positive risk (see Ambiguity in the definition of false positive rate, below). However it is important to distinguish between the type 1 error rate and the probability of a positive result being false. For example, a pregnancy test which indicates a woman is pregnant when she is not, or the conviction of an innocent person.Ī false positive error is a type I error where the test is checking a single condition, and wrongly gives an affirmative (positive) decision. The terms are often used interchangeably, but there are differences in detail and interpretation due to the differences between medical testing and statistical hypothesis testing.Ī false positive error, or false positive, is a result that indicates a given condition exists when it does not. In statistical hypothesis testing, the analogous concepts are known as type I and type II errors, where a positive result corresponds to rejecting the null hypothesis, and a negative result corresponds to not rejecting the null hypothesis. They are also known in medicine as a false positive (or false negative) diagnosis, and in statistical classification as a false positive (or false negative) error. These are the two kinds of errors in a binary test, in contrast to the two kinds of correct result (a true positive and a true negative). For other uses, see False Positive (disambiguation).Ī false positive is an error in binary classification in which a test result incorrectly indicates the presence of a condition (such as a disease when the disease is not present), while a false negative is the opposite error, where the test result incorrectly indicates the absence of a condition when it is actually present.
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