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False Negative
Sociologyindex, Sociology Books 2011, False Negative, False Positive
False negative: is identifying someone as non-dangerous when they in fact go on to
commit a dangerous act.
When trying to identify dangerous offenders (or other
things as well), researchers often make mistakes. One of these mistakes is known as a False Positive.
The error is identifying someone as dangerous (and possibly
keeping them incarcerated or denying them parole) when they are not dangerous.
Bayes' theorem
The probability that an observed positive result is a false positive (as contrasted with
an observed positive result being a true positive) may be calculated using Bayes' theorem.
The key concept of Bayes' theorem is that the true rates of false positives and false
negatives are not a function of the accuracy of the test alone, but also the actual rate
or frequency of occurrence within the test population; and, often, the more powerful issue
is the actual rates of the condition within the sample being tested.
Type I errors and Type II errors are very often referred to as false positives and false
negatives respectively. The terms are now commonly applied in much wider and far more
general sense than Neyman and Pearson's original specific usage, as follows:
Type I errors (the "false positive"): the error
of rejecting something that should have been accepted; e.g., such as finding an innocent
person guilty.
Type II errors (the "false negative"): the error
of accepting something that should have been rejected; e.g., such as finding a guilty
person innocent.
These examples illustrate the ambiguity of which is one of
the dangers of this wider use: they assume the speaker is testing for innocence; they can
also be used in reverse, as testing for guilt. The following table illustrates the
conditions. Note that the terms true and false are used here in two different ways: the
state of the actual condition (true/false); and the accuracy or inaccuracy of the test
result (true positive, false positive, true negative, false negative).
Spam filtering
A false positive occurs when "spam filtering" or "spam blocking"
techniques wrongly classify a legitimate email message as spam; and, as a result,
interferes with its delivery. While most anti-spam tactics can block or filter a high
percentage of unwanted emails, doing so without creating significant false-positive
results is a much more demanding task.
A false negative occurs when a spam email is not detected as spam, but is classified as
"non-spam". A low number of false negatives is an indicator of the efficiency of
"spam filtering" methods.
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