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Comparison of combining methods using Extreme Learning Machines under small sample scenario

机译:小样本情况下使用极限学习机的合并方法比较

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Making accurate predictions is a difficult task that is encountered throughout many research domains. In certain cases, the number of available samples is so scarce that providing reliable estimates is a challenging problem. In this paper, we are interested in giving as accurate predictions as possible based on the Extreme Learning Machine type of a neural network in small sample data scenarios. Most of the Extreme Learning Machine literature is focused on choosing a particular model from a pool of candidates, but such approach usually ignores model selection uncertainty and has inferior performance compared to combining methods. We empirically examine several model selection criteria coupled with new model combining approaches that were recently proposed. The results obtained indicate that a careful choice among the combinations must be performed in order to have the most accurate and stable predictions. (C) 2015 Elsevier B.V. All rights reserved.
机译:做出准确的预测是一项艰巨的任务,在许多研究领域中都会遇到。在某些情况下,可用样本的数量如此之少,以至于无法提供可靠的估计值是一个具有挑战性的问题。在本文中,我们有兴趣在小样本数据场景中基于神经网络的极限学习机类型给出尽可能准确的预测。极限学习机的大多数文献都集中在从候选对象中选择特定模型,但是这种方法通常会忽略模型选择的不确定性,并且与组合方法相比性能较差。我们根据经验检查了几种模型选择标准,并结合了最近提出的新模型组合方法。获得的结果表明,必须对组合进行仔细的选择,才能获得最准确,最稳定的预测。 (C)2015 Elsevier B.V.保留所有权利。

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