integrativeME: integrative mixture of experts
Mixture of experts models (Jacobs et al., 1991) were
introduced to account for nonlinearities and other complexities
in the data. It is based on a divide-and-conquer strategy.
Mixture of experts are of interest due to their wide
applicability and the advantages of fast learning via the
expectation-maximization (EM) algorithm. We have extended and
implemented mixture of experts to combine categorical clinical
factors and continuous microarray data in a binary
classification framework to analyze cancer studies. To provide
a hybrid signature of clinical factors and gene markers, we
propose to apply different gene selection procedures as a first
step.
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