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Finding hidden-feature depending laws inside a data set and classifying it using Neural Network

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arxiv 2101.10427 v1 pith:GK2XI74T submitted 2021-01-25 cs.LG cs.NEstat.ML

Finding hidden-feature depending laws inside a data set and classifying it using Neural Network

classification cs.LG cs.NEstat.ML
keywords functionlossneurallogcoshmeanset-valuedadvantageartificial
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The logcosh loss function for neural networks has been developed to combine the advantage of the absolute error loss function of not overweighting outliers with the advantage of the mean square error of continuous derivative near the mean, which makes the last phase of learning easier. It is clear, and one experiences it soon, that in the case of clustered data, an artificial neural network with logcosh loss learns the bigger cluster rather than the mean of the two. Even more so, the ANN, when used for regression of a set-valued function, will learn a value close to one of the choices, in other words, one branch of the set-valued function, while a mean-square-error NN will learn the value in between. This work suggests a method that uses artificial neural networks with logcosh loss to find the branches of set-valued mappings in parameter-outcome sample sets and classifies the samples according to those branches.

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