In biospectroscopy, suitably annotated and statistically independent samples (e. g. patients, batches, etc.) for classifier training and testing are scarce and costly. Learning curves show the model performance as function of the training sample size and can help to determine the sample size needed to train good classifiers. However, building a good model is actually not enough: the performance must also be proven. We discuss learning curves for typical small sample size situations with 5 – 25 independent samples per class. Although the classification models achieve acceptable performance, the learning curve can be completely masked by the random testing uncertainty due to the equally limited test sample size. In consequence, we determine t...
MOTIVATION: Classification algorithms for high-dimensional biological data like gene expression prof...
Machine learning and statistical model based classifiers have increasingly been used with more compl...
Machine learning and statistical model based classifiers have increasingly been used with more compl...
The goal of sample-size planning (SSP) is to determine the number of measurements needed for statist...
<div><p>Clinical trials increasingly employ medical imaging data in conjunction with supervised clas...
Background: Data generated using ‘omics’ technologies are characterized by high dimensionality, wher...
Clinical trials increasingly employ medical imaging data in conjunction with supervised classifiers,...
Clinical trials increasingly employ medical imaging data in conjunction with supervised classifiers,...
Determining sample sizes for microarray experiments is important but the complexity of these experim...
The promise of microarray technology in providing prediction classifiers for cancer outcome estimati...
<div><p>The promise of microarray technology in providing prediction classifiers for cancer outcome ...
Clinical trials increasingly employ medical imaging data in conjunction with supervised clas-sifiers...
Motivation: The standard paradigm for a classifier design is to obtain a sample of feature-label pai...
Raman microspectroscopy has been investigated for some time for use in label-free cell sorting devic...
Abstract Background Supervised learning methods need annotated data in order to generate efficient m...
MOTIVATION: Classification algorithms for high-dimensional biological data like gene expression prof...
Machine learning and statistical model based classifiers have increasingly been used with more compl...
Machine learning and statistical model based classifiers have increasingly been used with more compl...
The goal of sample-size planning (SSP) is to determine the number of measurements needed for statist...
<div><p>Clinical trials increasingly employ medical imaging data in conjunction with supervised clas...
Background: Data generated using ‘omics’ technologies are characterized by high dimensionality, wher...
Clinical trials increasingly employ medical imaging data in conjunction with supervised classifiers,...
Clinical trials increasingly employ medical imaging data in conjunction with supervised classifiers,...
Determining sample sizes for microarray experiments is important but the complexity of these experim...
The promise of microarray technology in providing prediction classifiers for cancer outcome estimati...
<div><p>The promise of microarray technology in providing prediction classifiers for cancer outcome ...
Clinical trials increasingly employ medical imaging data in conjunction with supervised clas-sifiers...
Motivation: The standard paradigm for a classifier design is to obtain a sample of feature-label pai...
Raman microspectroscopy has been investigated for some time for use in label-free cell sorting devic...
Abstract Background Supervised learning methods need annotated data in order to generate efficient m...
MOTIVATION: Classification algorithms for high-dimensional biological data like gene expression prof...
Machine learning and statistical model based classifiers have increasingly been used with more compl...
Machine learning and statistical model based classifiers have increasingly been used with more compl...