Squashing flat files flatter

Abstract
A feature of data mining that distinguishes it from "classical" machine learning (ML) and statistical modeling (SM) is scale. The community seems to agree on this yet progress to this point has been limited. We present a methodology that addresses scale in a novel fashion that has the potential for revolutionizing the field. While the methodology applies most directly to flat (row by column) data sets we believe that it can be adapted to other representations. Our approach to the problem is not ...

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