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VC Dimension: Algorithm, Statistical Classification -

English
2026-03-17
€133.57 €166.96

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High Quality Content by WIKIPEDIA articles! In statistical learning theory, or sometimes computational learning theory, the VC dimension (for Vapnik-Chervonenkis dimension) is a measure of the capacity of a statistical classification algorithm, defined as the cardinality of the largest set of points that the algorithm can shatter. It is a core concept in Vapnik-Chervonenkis theory, and was originally define ... Full description

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High Quality Content by WIKIPEDIA articles! In statistical learning theory, or sometimes computational learning theory, the VC dimension (for Vapnik-Chervonenkis dimension) is a measure of the capacity of a statistical classification algorithm, defined as the cardinality of the largest set of points that the algorithm can shatter. It is a core concept in Vapnik-Chervonenkis theory, and was originally defined by Vladimir Vapnik and Alexey Chervonenkis. Informally, the capacity of a classification model is related to how complicated it can be. For example, consider the thresholding of a high-degree polynomial: if the polynomial evaluates above zero, that point is classified as positive, otherwise as negative. A high-degree polynomial can be wiggly, so it can fit a given set of training points well. But one can expect that the classifier will make errors on other points, because it is too wiggly. Such a polynomial has a high capacity. A much simpler alternative is to threshold a linear function. This polynomial may not fit the training set well, because it has a low capacity. We make this notion of capacity more rigorous below.

More Information

Publisher OmniScriptum
Release year 2026
Cover type Softcover
EAN 9786131124051
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€133.57 €166.96