LIGO detector characterization with genetic programming
Abstract
Genetic Programming (GP) is a supervised approach to Machine Learning. GP has for two decades been applied to a diversity of problems, from predictive and financial modelling to data mining, from code repair to optical character recognition and product design. GP uses a stochastic search, tournament, and fitness function to explore a solution space. GP evolves a population of individual programs, through multiple generations, following the principals of biological evolution (mutation and reproduction) to discover a model that best fits or categorizes features in a given data set. We apply GP to categorization of LIGO noise and show that it can effectively be used to characterize the detector non-astrophysical noise both in low latency and offline searches.
National Science Foundation award PHY-1404139.- Publication:
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APS April Meeting Abstracts
- Pub Date:
- January 2017
- Bibcode:
- 2017APS..APR.X6008C