Sports Stars: Analyzing the Performance of Astronomers at Visualization-based Discovery

PUBLICATIONS OF THE ASTRONOMICAL SOCIETY OF THE PACIFIC(2017)

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摘要
In this data-rich era of astronomy, there is a growing reliance on automated techniques to discover new knowledge. The role of the astronomer may change from being a discoverer to being a confirmer. But what do astronomers actually look at when they distinguish between "sources" and "noise?" What are the differences between novice and expert astronomers when it comes to visual-based discovery? Can we identify elite talent or coach astronomers to maximize their potential for discovery? By looking to the field of sports performance analysis, we consider an established, domain-wide approach, where the expertise of the viewer (i. e., a member of the coaching team) plays a crucial role in identifying and determining the subtle features of gameplay that provide a winning advantage. As an initial case study, we investigate whether the SPORTSCODE performance analysis software can be used to understand and document how an experienced HI astronomer makes discoveries in spectral data cubes. We find that the process of timeline-based coding can be applied to spectral cube data by mapping spectral channels to frames within a movie. SPORTSCODE provides a range of easy to use methods for annotation, including featurebased codes and labels, text annotations associated with codes, and image-based drawing. The outputs, including instance movies that are uniquely associated with coded events, provide the basis for a training program or teambased analysis that could be used in unison with discipline specific analysis software. In this coordinated approach to visualization and analysis, SPORTSCODE can act as a visual notebook, recording the insight and decisions in partnership with established analysis methods. Alternatively, in situ annotation and coding of features would be a valuable addition to existing and future visualization and analysis packages.
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methods: data analysis,techniques: miscellaneous,catalogs,surveys
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