Cross-Validation

  • Refaeilzadeh P
  • Tang L
  • Liu H
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Abstract

Cross-Validation is a statistical method of evaluating and comparing learning algorithms by dividing data into two segments: one used to learn or train a model and the other used to validate the model. In typical cross-validation, the training and validation sets must cross-over in successive rounds such that each data point has a chance of being validated against. The basic form of cross-validation is k-fold cross-validation. Other forms of cross-validation are special cases of k-fold cross-validation or involve repeated rounds of k-fold cross-validation.

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Refaeilzadeh, P., Tang, L., & Liu, H. (2009). Cross-Validation. In Encyclopedia of Database Systems (pp. 532–538). Springer US. https://doi.org/10.1007/978-0-387-39940-9_565

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