This is the 9th day of my participation in the August More Text Challenge

This paper introduces a series of basic evaluation indicators of machine learning.

Basic definition

  • T: True indicates that the judgment is correct
  • F: False indicates incorrect judgment
  • P: PostIve indicates that the sample is judged to be positive
  • N: Negative indicates that the sample is Negative

Index definition

If you are always confused, translate the meaning according to the alphabetical order above.

  • TP: (T) The judgment is correct, (P) the sample is judged to be positive (in fact, the sample is positive)
  • TN: (T) The judgment is correct, and (N) the sample is judged to be negative (in fact, the sample is negative)
  • FP: (F) The judgment is wrong, (P) the sample is judged to be positive (in fact, the sample is negative)
  • FN: (F) The judgment is wrong, (N) the sample is judged to be a negative sample (in fact, the sample is positive)
Evaluation indicators Predicted results
Is the sample Negative samples
The actual

situation
Is the sample TP FN
Negative samples FP TN

Deepen the understanding

  • TP and TN are the cases judged correctly by the discriminator, and the original positive/negative samples are classified correctly

  • FP means that the negative sample is mistaken for the positive sample, which is a false alarm

  • FN indicates that positive sample is mistaken as negative sample, indicating alarm leakage