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A First Approach to Birth Weight Prediction Using RBFNNs

机译:使用RBFNN预测体重的第一种方法

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This paper presents a first approach to try to determine the weight of a newborn using a set of variables determined uniquely by the mother. The proposed model to approximate the weight is a Radial Basis Function Neural Network (RBFNN) because it has been successfully applied to many real world problems. The problem of determining the weight of a newborn could be very useful by the time of diagnosing the gestational diabetes mellitus, since it can be a risk factor, and also to determine if the newborn is macrosomic. However, the design of RBFNNs is another issue which still remains as a challenge since there is no perfect methodology to design an RBFNN using a reduced data set, keeping the generalization capabilities of the network. Within the many design techniques existing in the literature, the use of clustering algorithms as a first initialization step for the RBF centers is a quite common solution and many approaches have been proposed. The following work presents a comparative of RBFNNs generated using several algorithms recently developed concluding that, although RBFNNs that can approximate a training data set with an acceptable error, further work must be done in order to adapt RBFNN to large dimensional spaces where the generalization capabilities might be lost.
机译:本文提出了第一种方法,尝试使用一组由母亲唯一确定的变量来确定新生儿的体重。提议的近似权重模型是径向基函数神经网络(RBFNN),因为它已成功应用于许多现实问题。在诊断妊娠糖尿病时,确定新生儿体重的问题可能会非常有用,因为它可能是危险因素,并且还可能确定新生儿是否长寿。但是,RBFNN的设计仍然是一个挑战,因为尚无完善的方法来使用减少的数据集来设计RBFNN,从而保持网络的泛化能力,因此仍然是一个挑战。在文献中存在的许多设计技术中,使用聚类算法作为RBF中心的第一个初始化步骤是一种非常常见的解决方案,并且已经提出了许多方法。以下工作提供了使用最近开发的几种算法生成的RBFNN的比较,结论是,尽管可以用可接受的误差近似训练数据集的RBFNN,但必须做进一步的工作才能使RBFNN适应可能具有泛化能力的大维空间迷路了。

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