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AIME
2009
Springer

Data-Efficient Information-Theoretic Test Selection

14 years 3 months ago
Data-Efficient Information-Theoretic Test Selection
We use the concept of conditional mutual information (MI) to approach problems involving the selection of variables in the area of medical diagnosis. Computing MI requires estimates of joint distributions over collections of variables. However, in general computing accurate joint distributions conditioned on a large set of variables is expensive in terms of data and computing power. Therefore, one must seek alternative ways to calculate the relevant quantities and still use all the available observations. We describe and compare a basic approach consisting of averaging MI estimates conditioned on individual observations and another approach where it is possible to condition on all observations at once by making some conditional independence assumptions. This yields a data-efficient variant of information maximization for test selection. We present experimental results on public heart disease data and data from a controlled study in the area of breast cancer diagnosis. 1 Information Max...
Marianne Mueller, Rómer Rosales, Harald Ste
Added 12 Aug 2010
Updated 12 Aug 2010
Type Conference
Year 2009
Where AIME
Authors Marianne Mueller, Rómer Rosales, Harald Steck, Sriram Krishnan, Bharat Rao, Stefan Kramer
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