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Intelligent sampling for neural network data mining models

机译:神经网络数据挖掘模型的智能采样

摘要

A method, system, and computer program product provides automated determination of the size of the sample that is to be used in training a neural network data mining model that is large enough to properly train the neural network data mining model, yet is no larger than is necessary. A method of performing training of a neural network data mining model comprises the steps of: a) providing a training dataset for training an untrained neural network data mining model, the first training dataset comprising a plurality of rows of data, b) selecting a row of data from the training dataset for performing training processing on the neural network data mining model, c) computing an estimate of a gradient or cost function of the neural network data mining model, d) determining whether the gradient or cost function of the neural network data mining model has converged, based on the computed estimate of the gradient or cost function of the neural network data mining model, e) repeating steps b)-d), if the gradient or cost function of the neural network data mining model has not converged, and f) updating weights of the neural network data mining model, if the gradient or cost function of the neural network data mining model has converged.
机译:一种方法,系统和计算机程序产品提供了用于训练神经网络数据挖掘模型的样本大小的自动确定,该样本足够大以适当地训练神经网络数据挖掘模型,但不大于有必要的。一种执行神经网络数据挖掘模型训练的方法,包括以下步骤:a)提供用于训练未训练的神经网络数据挖掘模型的训练数据集,第一训练数据集包括多行数据,b)选择一行来自训练数据集的数据以对神经网络数据挖掘模型执行训练处理,c)计算神经网络数据挖掘模型的梯度或成本函数的估计值,d)确定神经网络的梯度函数或成本函数是基于神经网络数据挖掘模型的梯度或成本函数的计算估计值,数据挖掘模型已经收敛,如果神经网络数据挖掘模型的梯度或成本函数尚未收敛,则e)重复步骤b)-d) f)如果神经网络数据挖掘模型的梯度或成本函数已收敛,则更新神经网络数据挖掘模型的权重。

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