多目标优化神经模型选择中的决策器实现

R. A. Teixeira, A. P. Braga, R. Takahashi, R. R. Saldanha
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引用次数: 4

摘要

这项工作提出了一种新的学习方案来提高多层感知器(mlp)的泛化能力。提出的多目标算法既使网络权向量的平方和最小,又使网络权向量的范数最小,从而得到pareto最优解。由于帕累托最优解不是唯一的,我们需要一个决策阶段(“决策者”),以便通过使用验证集选择最佳解作为最终解。期望最终的解决方案能够平衡网络方差和偏差,从而产生具有高泛化能力的解决方案,避免过拟合和欠拟合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decisor implementation in neural model selection by multiobjective optimization
This work presents a new learning scheme for improving the generalization of multilayer perceptrons (MLPs). The proposed multiobjective algorithm approach minimizes both the sum of squared error and the norm of network weight vectors to obtain the Pareto-optimal solutions. Since the Pareto-optimal solutions are not unique, we need a decision phase ("decisor") in order to choose the best one as a final solution by using a validation set. The final solution is expected to balance network variance and bias and, as a result, generates a solution with high generalization capacity, avoiding over and under fitting.
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