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Model Goodness Measures
by
Wu, James
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Automatic control engineering
/ Data mining
/ Probability & statistics
2012
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Model Goodness Measures
by
Wu, James
in
Automatic control engineering
/ Data mining
/ Probability & statistics
2012
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Book Chapter
Model Goodness Measures
2012
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Overview
In the construction of models one attempts to find the best fit of a mathematical expression (formula, rules, ...) to a set of given data by adjusting
free parameters in the model. This can be thought of as fitting an (n − 1)–
dimensional hypersurface to points existing in an n-dimensional space. In this
fitting process one tries to find this set of best parameters according to some
definition of “best.” Included in this concept of best are (1) some quantitative
measure of goodness of fit to an objective function and (2) the need for the
model to generalize beyond the particular given data set. Generally these are
competing and somewhat conflicting goals. Specifically, one can fit the model
exactly to the given data, but when new data comes sometimes the fit is not
as good for this new data. Thus the standard practice of separating data into
training, testing, and validation sets has become routine in machine learning.
In this chapter we discuss a variety of topics around the concept of model
fitting/generalization and the ways to measure the goodness of a model fit. If
a model fits the training data well but not the testing data we say that the
model is overfit, which is a cardinal sin in modeling.
Publisher
Chapman and Hall/CRC,CRC Press LLC
ISBN
1439869464, 9781439869468
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