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Cost Estimating of Weapons Development Based on Rough Sets and ANN Learning

机译:基于粗糙集和神经网络学习的武器装备开发成本估算

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There are some difficulties in using Linearity Regression method to predict the cost of MLRS development under the small sample situation. On the basis of the capacity of dealing with the nonlinear of ANN and the learning capacity of Rough Sets (RS), a new cost estimating method combined with RS and neural network is brought forward, which can use the Relative Reduce theory in Rough Sets to learn or mine the knowledge concealed in the samples, then certain elements after reduce is selected as the inputs of neural network the cost estimating of weapons development is achieved. An example is provided to prove the precision of the new method is higher than that of the gray model.
机译:在小样本情况下,使用线性回归方法来预测MLRS开发的成本存在一些困难。在处理非线性神经网络的能力和粗糙集(RS)的学习能力的基础上,提出了一种新的结合RS和神经网络的成本估算方法,该方法可以利用粗糙集的相对约简理论来进行。学习或挖掘样本中隐藏的知识,然后选择减少后的某些元素作为神经网络的输入,就可以实现武器开发的成本估算。通过实例验证了该方法的精度高于灰色模型。

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