研究目的
Investigating the use of regularization techniques to avoid overfitting in the parameter estimation of biochemical reaction networks due to the large number of uncertain parameters and limited noisy data.
研究成果
Regularization techniques are essential for avoiding overfitting in the parameter estimation of biochemical reaction networks due to the large number of uncertain parameters and limited noisy data. The choice of regularization depends on the modeler’s preference and the desired qualities of the estimated parameters. Cross validation should be employed to ensure that the model can predict new data well rather than simply reflect the current data.
研究不足
The study acknowledges that while the regularization techniques work well for the presented biochemical reaction network, there is no guarantee that this will always hold, and each particular example may lead to slightly different conclusions.