克服复杂生化反应网络过度参数化的正则化技术

Daniel P. Howsmon;Juergen Hahn
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引用次数: 9

摘要

生物化学反应网络的模型通常包含大量参数,而与此同时,可用于其估计的(有噪声的)数据数量有限。因此,许多参数的值并不为人所知,因为必须从公开的科学文献中确定标称参数值,并且大量的值可能是在不同于建模的细胞类型或生物体中得出的。显然需要从实验数据中估计至少一些参数值;然而,在这些类型的模型中常见的少量可用数据和大量参数需要使用正则化技术来避免过拟合。正则化技术教程,包括参数集选择,在信号转导网络中估计参数的案例研究之前。提出了交叉验证结果而不是拟合结果,以进一步强调对模型的需求,该模型能够很好地推广到新数据,而不是简单地拟合当前数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regularization Techniques to Overcome Overparameterization of Complex Biochemical Reaction Networks
Models of biochemical reaction networks commonly contain a large number of parameters, while at the same time, there is only a limited amount of (noisy) data available for their estimation. As such, the values of many parameters are not well known as nominal parameter values have to be determined from the open scientific literature and a significant number of the values may have been derived in different cell types or organisms than that which is modeled. There clearly is a need to estimate at least some of the parameter values from experimental data; however, the small amount of available data and the large number of parameters commonly found in these types of models require the use of regularization techniques to avoid overfitting. A tutorial of regularization techniques, including parameter set selection, precedes a case study of estimating parameters in a signal transduction network. Cross-validation results rather than fitting results are presented to further emphasize the need for models that generalize well to new data instead of simply fitting the current data.
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