Supervised machine learning is the search for algorithms that reason from externally supplied instances to produce general hypotheses, which then make predictions about future instances. In other words, the goal of supervised learning is to build a concise model of the distribution of class labels in terms of predictor features. The resulting classifier is then used to assign class labels to the testing instances
where the values of the predictor features are known, but the value of the class label is unknown. This paper describes various supervised machine learning classification techniques. Of course, a single article cannot be a complete review of all supervised machine learning classification algorithms (also known induction classification algorithms), yet we hope that the references cited will cover the major
theoretical issues, guiding the researcher in interesting research directions and suggesting possible bias combinations that have yet to be explored.
%0 Journal Article
%1 kotsiantis2007sml
%A Kotsiantis, S B
%D 2007
%J Informatica
%K algorithms analysis classifiers computational connectionism data intelligent learning machine mining networks neural supervised wleformativeeassessment
%N 3
%P 249-268
%T Supervised Machine Learning: A Review of Classification Techniques
%U http://www.informatica.si/PDF/31-3/11_Kotsiantis%20-%20Supervised%20Machine%20Learning%20-%20A%20Review%20of...pdf
%V 31
%X Supervised machine learning is the search for algorithms that reason from externally supplied instances to produce general hypotheses, which then make predictions about future instances. In other words, the goal of supervised learning is to build a concise model of the distribution of class labels in terms of predictor features. The resulting classifier is then used to assign class labels to the testing instances
where the values of the predictor features are known, but the value of the class label is unknown. This paper describes various supervised machine learning classification techniques. Of course, a single article cannot be a complete review of all supervised machine learning classification algorithms (also known induction classification algorithms), yet we hope that the references cited will cover the major
theoretical issues, guiding the researcher in interesting research directions and suggesting possible bias combinations that have yet to be explored.
@article{kotsiantis2007sml,
abstract = {Supervised machine learning is the search for algorithms that reason from externally supplied instances to produce general hypotheses, which then make predictions about future instances. In other words, the goal of supervised learning is to build a concise model of the distribution of class labels in terms of predictor features. The resulting classifier is then used to assign class labels to the testing instances
where the values of the predictor features are known, but the value of the class label is unknown. This paper describes various supervised machine learning classification techniques. Of course, a single article cannot be a complete review of all supervised machine learning classification algorithms (also known induction classification algorithms), yet we hope that the references cited will cover the major
theoretical issues, guiding the researcher in interesting research directions and suggesting possible bias combinations that have yet to be explored.},
added-at = {2008-09-26T10:44:07.000+0200},
author = {Kotsiantis, S B},
biburl = {https://www.bibsonomy.org/bibtex/2ab76f20224a0f1bfc6649973291a4444/yish},
interhash = {923bad3021a70430ed017dd8d3967ac4},
intrahash = {ab76f20224a0f1bfc6649973291a4444},
journal = {Informatica},
keywords = {algorithms analysis classifiers computational connectionism data intelligent learning machine mining networks neural supervised wleformativeeassessment},
number = 3,
pages = {249-268},
timestamp = {2008-09-26T10:44:07.000+0200},
title = {Supervised Machine Learning: A Review of Classification Techniques},
url = {http://www.informatica.si/PDF/31-3/11_Kotsiantis%20-%20Supervised%20Machine%20Learning%20-%20A%20Review%20of...pdf},
volume = 31,
year = 2007
}