Classifier design for computer‐aided diagnosis: Effects of finite sample size on the mean performance of classical and neural network classifiers

Volume: 26, Issue: 12, Pages: 2654 - 2668
Published: Dec 1, 1999
Abstract
Classifier design is one of the key steps in the development of computer-aided diagnosis (CAD) algorithms. A classifier is designed with case samples drawn from the patient population. Generally, the sample size available for classifier design is limited, which introduces variance and bias into the performance of the trained classifier, relative to that obtained with an infinite sample size. For CAD applications, a commonly used performance...
Paper Details
Title
Classifier design for computer‐aided diagnosis: Effects of finite sample size on the mean performance of classical and neural network classifiers
Published Date
Dec 1, 1999
Volume
26
Issue
12
Pages
2654 - 2668
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