Title :
Comparison of Adaptive Resonance Theory Neural Networks for Astronomical Region of Interest Detection and Noise Characterization
Author :
Young, Robert J. ; Ritthaler, Mike ; Zimmer, Peter ; McGraw, John ; Healy, Michael J. ; Caudell, Thomas P.
Author_Institution :
Univ. of New Mexico, Albuquerque
Abstract :
While learning algorithms have been used for astronomical data analysis, the vast majority of those algorithms have used supervised learning. In a continuation of the work described in Young et ah [18] we examine the use of unsupervised learning for this task with two types of Adaptive Resonance Theory (ART) neural networks. Using synthetic astronomical data from SkyMaker[2], [3] which was designed to mimic the dynamic range of the CTI-[14] telescope, we compared the ability of the ART-1 neural network[4] and the ART-1 neural network with category theoretic modiflcation[9], [11] to detect regions of interest and to characterize noise. We show a difference in the geometries of the templates created by each architecture. We also show an analysis of the two architectures over a range of parameter settings. The results provided show that ART neural networks and unsupervised learning algorithms in general should not be overlooked for astronomical data analysis.
Keywords :
ART neural nets; astronomy computing; data analysis; learning (artificial intelligence); adaptive resonance theory neural network; astronomical data analysis; noise characterization; unsupervised learning algorithm; Data analysis; Dynamic range; Geometry; Neural networks; Optical design; Resonance; Subspace constraints; Supervised learning; Telescopes; Unsupervised learning;
Conference_Titel :
Neural Networks, 2007. IJCNN 2007. International Joint Conference on
Conference_Location :
Orlando, FL
Print_ISBN :
978-1-4244-1379-9
Electronic_ISBN :
1098-7576
DOI :
10.1109/IJCNN.2007.4371286