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Self-Organizing Maps and Parton Distributions Functions

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arxiv 1008.4197 v1 pith:OHES74CG submitted 2010-08-25 hep-ph

Self-Organizing Maps and Parton Distributions Functions

classification hep-ph
keywords partonfunctionsdatadistributiondistributionsmapsself-organizinganalysis
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present a new method to extract parton distribution functions from high energy experimental data based on a specific type of neural networks, the Self-Organizing Maps. We illustrate the features of our new procedure that are particularly useful for an anaysis directed at extracting generalized parton distributions from data. We show quantitative results of our initial analysis of the parton distribution functions from inclusive deep inelastic scattering.

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