Discovering the Unexpected in Astronomical Survey Data
Ray P Norris

TL;DR
This paper emphasizes the importance of designing next-generation astronomical surveys to explicitly detect unexpected objects and phenomena, leveraging machine learning and simulations to enhance scientific discovery.
Contribution
It proposes a novel process for discovering the unexpected in astronomical survey data, integrating machine learning and simulations into survey design.
Findings
Highlights the need for explicit discovery processes in surveys
Proposes a machine learning-based implementation for detection
Emphasizes the role of simulations in identifying surprises
Abstract
Most major discoveries in astronomy are unplanned, and result from surveying the Universe in a new way, rather than by testing a hypothesis or conducting an investigation with planned outcomes. For example, of the 10 greatest discoveries made by the Hubble Space Telescope, only one was listed in its key science goals. So a telescope that merely achieves its stated science goals is not achieving its potential scientific productivity. Several next-generation astronomical survey telescopes are currently being designed and constructed that will significantly expand the volume of observational parameter space, and should in principle discover unexpected new phenomena and new types of object. However, the complexity of the telescopes and the large data volumes mean that these discoveries are unlikely to be found by chance. Therefore, it is necessary to plan explicitly for these unexpected…
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