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An Improved Adaptive Boosting Algorithm for Neural Network Ensemble Based on Multi-dimensional Cloud Model

机译:基于多维云模型的改进的神经网络集成自适应Boosting算法

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AdaBoosting is widely used in neural network ensemble as a variety of boosting algorithm. However, with the learning pattern of focusing on hard sample, AdaBooting makes neural network fall into degradation easily. Additionally, in neural network ensemble the weight of individual neural network only takes into account the misclassifying rate. In fact, due to the characteristic of neural network's tendency of learning hard samples in Adaboosting algorithm, the predictive accuracy of individual neural network's training for a particular sample space is much higher than for the whole sample space. This paper proposes an improved AdaBoosting algorithm called Cloud-AdaBoosting. In this method, it is introduced the concept of cloud model and applied the technique of filling training set with similar samples generated by cloud generator to overcome the degradation phenomena resulted from the tendency of learning hard samples. Through calculating the certainty degree of each test sample relative to neural network, it is adjusted dynamically the weight of whole neural network output by individual neural network which can reflect the prediction ability of a part of samples in neural network ensemble, and then enhance the whole prediction performance of the ensemble. The experiment results show that the proposed algorithm is efficient to increase the prediction accuracy of neural network ensemble.
机译:AdaBoosting被广泛用作神经网络集成中的各种增强算法。然而,通过专注于硬样本的学习模式,AdaBooting使得神经网络容易陷入退化。另外,在神经网络集成中,单个神经网络的权重仅考虑了错误分类率。实际上,由于Adaboosting算法中神经网络倾向于学习硬样本的趋势的特征,单个神经网络对特定样本空间进行训练的预测精度远高于整个样本空间。本文提出了一种改进的AdaBoosting算法,称为Cloud-AdaBoosting。该方法介绍了云模型的概念,并应用云生成器生成的相似样本填充训练集的技术,以克服由于学习硬样本的趋势而导致的退化现象。通过计算每个测试样本相对于神经网络的确定度,通过单个神经网络动态调整整个神经网络输出的权重,从而可以反映出部分样本在神经网络集合中的预测能力,进而增强整个神经网络的权重。合奏的预测性能。实验结果表明,该算法有效地提高了神经网络集成的预测精度。

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