首页> 外文会议>Computational Intelligence and Design, 2009. ISCID '09 >Influence of Learning Rate and Neuron Number on Prediction of Animal Phenotype Value Using Back-Propagation Artificial Neural Network
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Influence of Learning Rate and Neuron Number on Prediction of Animal Phenotype Value Using Back-Propagation Artificial Neural Network

机译:学习率和神经元数量对反向传播人工神经网络预测动物表型价值的影响

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In the past, a prediction equation based on the Single Nucleotide Polymorphisms (SNP) is derived to calculate genomic breeding values (GEBV). However, the genome is very complex; a function could not reflect the relation between markers and phenotypes. Unlike the methods of regression, artificial neural networks (ANNs) could perform well for optimization in complex non-linear systems, however, artificial neural networks (ANNs) have not been used to calculate genomic breeding values (CEBV).In this paper, back-propagation neural network is used to predict the genomic breeding values (GEBV) or polygenic genotype value, and the different learning rate and hidden neurons number were used to discuss the influencing of the learning rate on estimating the polygenic genotype value. The result showed artificial neural networks could gather knowledge by detecting the relations between molecular marker polymorphism and phenotype value, and could predict the animal polygenic genotype value or breeding values as well as the molecular marker genotype being given. Training speed, prediction accuracy and stability could be improved along with enlargement of number of hidden neurons. The learning rate could not affect the prediction accuracy, and could almost affect the training speed. The training process was quite sensitive to the number of hidden neurons, even a hidden neurons change could lead to conspicuously training time prolong. It was necessary to have an applicable number of hidden neurons for predicting polygenic genotype value.
机译:过去,推导了基于单核苷酸多态性(SNP)的预测方程式,以计算基因组育种值(GEBV)。但是,基因组非常复杂。函数不能反映标记和表型之间的关系。与回归方法不同,人工神经网络(ANN)可以在复杂的非线性系统中进行优化,但是,人工神经网络(ANN)尚未用于计算基因组育种值(CEBV)。 -传播神经网络用于预测基因组育种值(GEBV)或多基因基因型值,并使用不同的学习速率和隐藏的神经元数量来讨论学习速率对估计多基因基因型值的影响。结果表明,人工神经网络可以通过检测分子标记多态性与表型值之间的关系来收集知识,并可以预测动物的多基因基因型值或育种值以及给出的分子标记基因型。训练速度,预测准确性和稳定性可随着隐藏神经元数量的增加而提高。学习率不会影响预测准确性,并且几乎会影响训练速度。训练过程对隐藏神经元的数量非常敏感,即使隐藏神经元的变化也可能导致训练时间明显延长。为了预测多基因基因型价值,有必要拥有一定数量的隐藏神经元。

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