2019
DOI: 10.48550/arxiv.1908.04265
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Recursion, Probability, Convolution and Classification for Computations

Abstract: The main motivation of this work was practical, to offer computationally and theoretical scalable ways to structuring large classes of computation. It started from attempts to optimize R code for machine learning/artificial intelligence algorithms for huge data sets, that due to their size, should be handled into an incremental (online) fashion. Our target are large classes of relational (attribute based), mathematical (index based) or graph computations. We wanted to use powerful computation representations t… Show more

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