Controlling Informative Features for Improved Accuracy and Faster Predictions in Omentum Cancer Models
Controlling Informative Features for Improved Accuracy and Faster Predictions in Omentum Cancer Models
Authored by Damian R Mingle
Identification of suitable biomarkers for accurate prediction of
phenotypic outcomes is a goal for personalized medicine. However,
current machine learning approaches are either too complex or perform
poorly. Here, a novel feature detection and engineering machine-learning
framework is presented to address this need. First, the Rip Curl process is applied which generates a set of 10 additional features. Second, we rank all features including the Rip Curl
features from which the top-ranked will most likely contain the most
informative features for prediction of the underlying biological
classes. The top-ranked features are used in model building. This
process creates for more expressive features which are captured in
models with an eye towards the model learning from increasing sample
amount and the accuracy/time results. The performance of the proposed Rip Curl classification framework was tested on omentum cancer data. Rip Curl
outperformed other more sophisticated classification methods in terms
of prediction accuracy, minimum number of classification markers, and
computational time.
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