Binary classification: Difference between revisions

no edit summary
No edit summary
No edit summary
Line 1: Line 1:
{{see also|Machine learning terms}}
Binary classification is a type of machine learning problem in which the goal is to classify input data into two classes or categories. Often, these classes are labeled as positive (1) and negative(0), or true(1) and false(0) respectively.
Binary classification is a type of machine learning problem in which the goal is to classify input data into two classes or categories. Often, these classes are labeled as positive (1) and negative(0), or true(1) and false(0) respectively.


Line 8: Line 10:


Examples of binary classification problems include spam email detection, fraud detection, disease diagnosis and sentiment analysis.
Examples of binary classification problems include spam email detection, fraud detection, disease diagnosis and sentiment analysis.
[[Category:Terms]] [[Category:Machine learning terms]]