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New approach to the Parton Distribution Functions: Self-Organizing Maps

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arxiv 0811.0213 v1 pith:VOMFNBK2 submitted 2008-11-03 hep-ph

New approach to the Parton Distribution Functions: Self-Organizing Maps

classification hep-ph
keywords fittingsomsdistributioniterationmapsnetworkneuralparton
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a Parton Distribution Function (PDF) fitting technique which is based on an interactive neural network algorithm using Self-Organizing Maps (SOMs). SOMs are visualization algorithms based on competitive learning among spatially-ordered neurons. Our SOMs are trained with stochastically generated PDF samples. On every optimization iteration the PDFs are clustered on the SOM according to a user-defined feature and the most promising candidates are selected as a seed for the subsequent iteration. Our main goal is thus to provide a fitting procedure that, at variance with the global analyses and standard neural network approaches, allows for an increased control of the systematic bias by enabling user interaction in the various stages of the fitting process.

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