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arxiv: nucl-th/0109081 · v1 · pith:Y4EA3PTZnew · submitted 2001-09-27 · ⚛️ nucl-th

Statistical Modeling of Nuclear Systematics

classification ⚛️ nucl-th
keywords modelingstatisticalnucleartechniquesalgorithmsalternativeapproachesartificial
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Statistical modeling of data sets by neural-network techniques is offered as an alternative to traditional semiempirical approaches to global modeling of nuclear properties. New results are presented to support the position that such novel techniques can rival conventional theory in predictive power, if not in economy of description. Examples include the statistical inference of atomic masses and beta-decay halflives based on the information contained in existing databases. Neural network modeling, as well as other statistical strategies based on new algorithms for artificial intelligence, may prove to be a useful asset in the further exploration of nuclear phenomena far from stability.

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