Pattern Recognition

نویسنده

  • Timothy Slivka
چکیده

Closely related to the concept of Machine Learning, Pattern Recognition is the assignment of an output value, termed a label, to a given input value, termed an instance. This is achieved through the application of an algorithm, which usually falls into one of two general categories (although mixed techniques are beginning to be developed): supervised (requires a training set), and unsupervised, in which the machine uses statistical methods to generate categories. This mathematical approach to categorizing data is studied in fields ranging from psychology and cognitive science to physics and engineering [Anzai 1989]. Pattern recognition is a solution to the general problem of applying labels to output data. Examples include classification, in which the machine attempts to assign each input value to one of a given set of classes (for example, to determine if a fish on an assembly line is a salmon or a sea bass, or to determine if a given e-mail is ”spam” or legitimate). Examples from the GIS world include Kriging (regression analysis) and hotspot analysis (cluster analysis) [ESRI 2010]. Pattern recognition algorithms differ from pattern matching algorithms in that they aim to provide reasonable categorizations based by and large on statistical principles, whereas pattern-matching algorithms look for exact matches in the input with

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تاریخ انتشار 2010