A Method for Improving the Performance of Ensemble Neural Networks by Introducing Randomization into Their Training Data

B. Richards, N. Emekwuru
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Abstract

We propose a methodology for training neural networks in which ensembles of under-trained neural networks are used to obtain broadly repeatable predictions, and we augment their performance by disrupting their training, with each neural network in the ensemble being trained on a potentially different data set generated from the base data by a method that we call randomization with full range sampling. Sleep habits in animals are a function of innate and environmental factors that determine the species’ place in the ecosystem and, thus, its requirement for sleep and opportunity to sleep. We apply the proposed methodology to train neural networks to predict hours of sleep from only seven correlated observations in only 39 species (one set of observations per species). The result was an ensemble of neural networks making more accurate predictions (lower mean squared error) and predictions that are more robust against variations in any one input parameter. The methodology presented here can be extended to other problems in which the data available for training are limited, or the neural network is to be applied, post-training, on a problem with substantial variation in the values of inputs (independent variables).
在集成神经网络的训练数据中引入随机化以提高其性能的方法
我们提出了一种训练神经网络的方法,其中使用未经训练的神经网络集合来获得广泛可重复的预测,并且我们通过破坏它们的训练来增强它们的性能,其中集成中的每个神经网络都在从基础数据生成的可能不同的数据集上进行训练,我们称之为全范围抽样随机化的方法。动物的睡眠习惯是先天和环境因素的作用,这些因素决定了物种在生态系统中的位置,从而决定了它对睡眠的需求和睡眠的机会。我们将提出的方法应用于训练神经网络,仅从39个物种的7个相关观察结果中预测睡眠时间(每个物种一组观察结果)。结果是一个神经网络的集合,可以做出更准确的预测(更低的均方误差),并且对任何一个输入参数的变化的预测都更稳健。这里提出的方法可以扩展到其他问题,其中可用于训练的数据有限,或者神经网络将在训练后应用于输入值(自变量)有大量变化的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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