Title :
Efficient batch-mode active learning of random forest
Author :
Nguyen, Hieu T. ; Yadegar, Joseph ; Kong, Bailey ; Wei, Hai
Author_Institution :
UtopiaCompression Corp., Los Angeles, CA, USA
Abstract :
Active learning is a useful tool for in-situ learning and adaptive classification systems. While traditional active learning is focused mostly on the single-sample mode, the batch mode of active learning is more interactions efficient. This paper proposes a computationally efficient approach for maximizing the joint entropy of a batch of samples and thereby attaining the maximal information gain and minimizing information redundancy. Combining with an incremental random forest, an efficient active learning algorithm is developed. The algorithm is applied to adaptive classification of underwater mines, and exhibits superior performance over the naive batch mode of active learning. Performance evaluation results for public machine learning datasets are also shown.
Keywords :
entropy; forestry; geophysics computing; image classification; learning (artificial intelligence); adaptive classification systems; batch-mode active learning; in-situ learning; information redundancy; joint entropy; maximal information gain; public machine learning datasets; random forest; single-sample mode; underwater mines; Entropy; Humans; Joints; Machine learning; Machine learning algorithms; Training; Vegetation; active learning; adaptive pattern recognition; in-situ learning; incremental random forest;
Conference_Titel :
Statistical Signal Processing Workshop (SSP), 2012 IEEE
Conference_Location :
Ann Arbor, MI
Print_ISBN :
978-1-4673-0182-4
Electronic_ISBN :
pending
DOI :
10.1109/SSP.2012.6319769