Title :
Interactive Machine Learning in Data Exploitation
Author :
Porter, Richard ; Theiler, James ; Hush, Don
Author_Institution :
Los Alamos Nat. Lab., Los Alamos, NM, USA
Abstract :
The goal of interactive machine learning is to help scientists and engineers exploit more specialized data from within their deployed environment in less time, with greater accuracy and fewer costs. A basic introduction to the main components is provided here, untangling the many ideas that must be combined to produce practical interactive learning systems. This article also describes recent developments in machine learning that have significantly advanced the theoretical and practical foundations for the next generation of interactive tools.
Keywords :
data handling; human computer interaction; interactive systems; learning (artificial intelligence); data exploitation; interactive machine learning system; interactive tools; Data processing; Image segmentation; Information processing; Interactive systems; Learning systems; Machine learning; Random variables; Vocabulary; interactive systems; machine learning; pattern recognition; scientific computing;
Journal_Title :
Computing in Science & Engineering
DOI :
10.1109/MCSE.2013.74