Development of an efficient parameter estimation method for the inference of Vohradský's neural network models of genetic networks

Shuhei Kimura, Masanao Sato, Mariko Okada
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Abstract

Vohradský has proposed a neural network model to describe biochemical networks. Based on this model, several researchers have proposed genetic network inference methods. When trying to analyze large-scale genetic networks, however, these methods must solve high-dimensional function optimization problems. In order to resolve the high-dimensionality in the estimation of the parameters of the Vohradský's neural network model, this study proposes a new method. The proposed method estimates the parameters of the neural network model by solving two-dimensional function optimization problems. Although these two-dimensional problems are non-linear, their low-dimensionality would make the estimation of the model parameters easier. Finally, we confirm the effectiveness of the proposed method through numerical experiments.
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开发了一种有效的参数估计方法来推断Vohradský遗传网络的神经网络模型
Vohradský提出了一个神经网络模型来描述生化网络。基于这个模型,一些研究者提出了遗传网络推理方法。然而,当试图分析大规模遗传网络时,这些方法必须解决高维函数优化问题。为了解决Vohradský神经网络模型参数估计的高维性问题,本文提出了一种新的方法。该方法通过求解二维函数优化问题来估计神经网络模型的参数。虽然这些二维问题是非线性的,但它们的低维性使模型参数的估计更容易。最后,通过数值实验验证了该方法的有效性。
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