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Managing large-scale scientific hypotheses as uncertain and probabilistic data with support for predictive analytics
Published 22 May 2014 in cs.DB | (1405.5905v2)
Abstract: The sheer scale of high-resolution raw data generated by simulation has motivated non-conventional approaches for data exploration referred as immersive' andin situ' query processing of the raw simulation data. Another step towards supporting scientific progress is to enable data-driven hypothesis management and predictive analytics out of simulation results. We present a synthesis method and tool for encoding and managing competing hypotheses as uncertain data in a probabilistic database that can be conditioned in the presence of observations.
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