Litcius/Paper detail

Enriched Random Forest for High Dimensional Genomic Data

Debopriya Ghosh, Javier Cabrera

2021IEEE/ACM Transactions on Computational Biology and Bioinformatics130 citationsDOIOpen Access PDF

Abstract

Ensemble methods such as random forest works well on high-dimensional datasets. However, when the number of features is extremely large compared to the number of samples and the percentage of truly informative feature is very small, performance of traditional random forest decline significantly. To this end, we develop a novel approach that enhance the performance of traditional random forest by reducing the contribution of trees whose nodes are populated with less informative features. The proposed method selects eligible subsets at each node by weighted random sampling as opposed to simple random sampling in traditional random forest. We refer to this modified random forest algorithm as "Enriched Random Forest". Using several high-dimensional micro-array datasets, we evaluate the performance of our approach in both regression and classification settings. In addition, we also demonstrate the effectiveness of balanced leave-one-out cross-validation to reduce computational load and decrease sample size while computing feature weights. Overall, the results indicate that enriched random forest improves the prediction accuracy of traditional random forest, especially when relevant features are very few.

Topics & Concepts

Random forestSimple random sampleFeature (linguistics)Computer scienceStratified samplingSampling (signal processing)Node (physics)Data miningStatisticsPattern recognition (psychology)Artificial intelligenceMathematicsEngineeringFilter (signal processing)DemographyPhilosophyComputer visionStructural engineeringPopulationSociologyLinguisticsGene expression and cancer classificationFace and Expression RecognitionMachine Learning and ELM