TY - JOUR
T1 - On the parameter combinations that matter and on those that do not
T2 - data-driven studies of parameter (non)identifiability
AU - Evangelou, Nikolaos
AU - Wichrowski, Noah J.
AU - Kevrekidis, George A.
AU - Dietrich, Felix
AU - Kooshkbaghi, Mahdi
AU - McFann, Sarah
AU - Kevrekidis, Ioannis G.
N1 - Publisher Copyright:
© The Author(s) 2022. Published by Oxford University Press on behalf of the National Academy of Sciences.
PY - 2022/9/1
Y1 - 2022/9/1
N2 - We present a data-driven approach to characterizing nonidentifiability of a model s parameters and illustrate it through dynamic as well as steady kinetic models. By employing Diffusion Maps and their extensions, we discover the minimal combinations of parameters required to characterize the output behavior of a chemical system: a set of effective parameters for the model. Furthermore, we introduce and use a Conformal Autoencoder Neural Network technique, as well as a kernel-based Jointly Smooth Function technique, to disentangle the redundant parameter combinations that do not affect the output behavior from the ones that do. We discuss the interpretability of our data-driven effective parameters, and demonstrate the utility of the approach both for behavior prediction and parameter estimation. In the latter task, it becomes important to describe level sets in parameter space that are consistent with a particular output behavior. We validate our approach on a model of multisite phosphorylation, where a reduced set of effective parameters (nonlinear combinations of the physical ones) has previously been established analytically.
AB - We present a data-driven approach to characterizing nonidentifiability of a model s parameters and illustrate it through dynamic as well as steady kinetic models. By employing Diffusion Maps and their extensions, we discover the minimal combinations of parameters required to characterize the output behavior of a chemical system: a set of effective parameters for the model. Furthermore, we introduce and use a Conformal Autoencoder Neural Network technique, as well as a kernel-based Jointly Smooth Function technique, to disentangle the redundant parameter combinations that do not affect the output behavior from the ones that do. We discuss the interpretability of our data-driven effective parameters, and demonstrate the utility of the approach both for behavior prediction and parameter estimation. In the latter task, it becomes important to describe level sets in parameter space that are consistent with a particular output behavior. We validate our approach on a model of multisite phosphorylation, where a reduced set of effective parameters (nonlinear combinations of the physical ones) has previously been established analytically.
KW - data mining
KW - manifold learning
KW - model order reduction
KW - parameter nonidentifiability
UR - http://www.scopus.com/inward/record.url?scp=85147375863&partnerID=8YFLogxK
U2 - 10.1093/pnasnexus/pgac154
DO - 10.1093/pnasnexus/pgac154
M3 - Article
AN - SCOPUS:85147375863
SN - 2752-6542
VL - 1
JO - PNAS Nexus
JF - PNAS Nexus
IS - 4
M1 - pgac154
ER -