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[[Pattern recognition]] is a very active field of research intimately bound to [[machine learning]]. Also known as classification or [[statistical classification]], pattern recognition aims at building a [[classifier (mathematics)|classifier]] that can determine the class of an input pattern. This procedure, known as training, corresponds to learning an unknown decision function based only on a set of input-output pairs <math>(\boldsymbol{x}_i,y_i)</math> that form the training data (or training set). Nonetheless, in real world applications such as [[character recognition]], a certain amount of information on the problem is usually known beforehand. The incorporation of this prior knowledge into the training is the key element that will allow an increase of performance in many applications.
== Prior
Prior knowledge<ref>B. Scholkopf and A. Smola, "[https://books.google.com/books?id=y8ORL3DWt4sC
The importance of prior knowledge in machine learning is suggested by its role in search and optimization. Loosely, the [[No free lunch in search and optimization|no free lunch theorem]] states that all search algorithms have the same average performance over all problems, and thus implies that to gain in performance on a certain application one must use a specialized algorithm that includes some prior knowledge about the problem. <!-- This sentence is still not right. Read the "no free lunch" article to see why.
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* [[Translation (geometry)|translation]];
* [[Rotation (mathematics)|rotation]];
* [[Shear mapping|skewing]];
* [[Scaling (geometry)|scaling]].
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== References ==
* E. Krupka and N. Tishby, "[
[[Category:Machine learning]]
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