Javascript must be enabled to continue!
Making predictions using poorly identified mathematical models
View through CrossRef
AbstractMany commonly used mathematical models in the field of mathematical biology involve challenges of parameter non-identifiability. Practical non-identifiability, where the quality and quantity of data does not provide sufficiently precise parameter estimates is often encountered, even with relatively simple models. In particular, the situation where some parameters are identifiable and others are not is often encountered. In this work we apply a recent likelihood-based workflow, calledProfile-Wise Analysis(PWA), to non-identifiable models for the first time. The PWA workflow addresses identifiability, parameter estimation, and prediction in a unified framework that is simple to implement and interpret. Previous implementations of the workflow have dealt with idealised identifiable problems only. In this study we illustrate how the PWA workflow can be applied to both structurally non-identifiable and practically non-identifiable models in the context of simple population growth models. Dealing with simple mathematical models allows us to present the PWA workflow in a didactic, self–contained document that can be studied together with relatively straightforward Julia code provided onGitHub. Working with simple mathematical models allows the PWA workflow prediction intervals to be compared withgold standardfull likelihood prediction intervals. Together, our examples illustrate how the PWA workflow provides us with a systematic way of dealing with non-identifiability, especially compared to other approaches, such as seeking ad hoc parameter combinations, or simply setting parameter values to some arbitrary default value. Importantly, we show that the PWA workflow provides insight into the commonly–encountered situation where some parameters are identifiable and others are not, allowing us to explore how uncertainty in some parameters, and combinations of some parameters, regardless of their identifiability status, influences model predictions in a way that is insightful and interpretable.
Title: Making predictions using poorly identified mathematical models
Description:
AbstractMany commonly used mathematical models in the field of mathematical biology involve challenges of parameter non-identifiability.
Practical non-identifiability, where the quality and quantity of data does not provide sufficiently precise parameter estimates is often encountered, even with relatively simple models.
In particular, the situation where some parameters are identifiable and others are not is often encountered.
In this work we apply a recent likelihood-based workflow, calledProfile-Wise Analysis(PWA), to non-identifiable models for the first time.
The PWA workflow addresses identifiability, parameter estimation, and prediction in a unified framework that is simple to implement and interpret.
Previous implementations of the workflow have dealt with idealised identifiable problems only.
In this study we illustrate how the PWA workflow can be applied to both structurally non-identifiable and practically non-identifiable models in the context of simple population growth models.
Dealing with simple mathematical models allows us to present the PWA workflow in a didactic, self–contained document that can be studied together with relatively straightforward Julia code provided onGitHub.
Working with simple mathematical models allows the PWA workflow prediction intervals to be compared withgold standardfull likelihood prediction intervals.
Together, our examples illustrate how the PWA workflow provides us with a systematic way of dealing with non-identifiability, especially compared to other approaches, such as seeking ad hoc parameter combinations, or simply setting parameter values to some arbitrary default value.
Importantly, we show that the PWA workflow provides insight into the commonly–encountered situation where some parameters are identifiable and others are not, allowing us to explore how uncertainty in some parameters, and combinations of some parameters, regardless of their identifiability status, influences model predictions in a way that is insightful and interpretable.
Related Results
INNOVATIVE TECHNOLOGIES IN MATHEMATICS EDUCATION
INNOVATIVE TECHNOLOGIES IN MATHEMATICS EDUCATION
The introduction of the competence model of Mathematics education involves the actualization of personal and activity factors of development of subjects of the educational process,...
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND
As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
Autonomy on Trial
Autonomy on Trial
Photo by CHUTTERSNAP on Unsplash
Abstract
This paper critically examines how US bioethics and health law conceptualize patient autonomy, contrasting the rights-based, individualist...
The Impact of Mathematical Reasoning and Critical Thinking Skills on Mathematical Literacy Skills
The Impact of Mathematical Reasoning and Critical Thinking Skills on Mathematical Literacy Skills
For learning mathematics, mathematical skills are needed, some of which are mathematical reasoning skills, mathematical critical thinking skill, and mathematical literacy skills. T...
Mathematical competence and mathematical abilities: structural relations and development methodology
Mathematical competence and mathematical abilities: structural relations and development methodology
Abstract
In the presented work, the concept of mathematical abilities is rational as both an essential internal characteristic of mathematical competence and an imma...
Realism in the philosophy of mathematics
Realism in the philosophy of mathematics
Mathematical realism is the view that the truths of mathematics are objective, which is to say that they are true independently of any human activities, beliefs or capacities. As t...
Analysis of Five Mathematical Models for Crop Yield Prediction
Analysis of Five Mathematical Models for Crop Yield Prediction
A review of mathematical models used for the prediction of crop yield has been presented. Though there are many other non-mathematical techniques also available for the purpose, bu...
Adaptive reliance on the most stable sensory predictions enhances perceptual feature extraction of moving stimuli
Adaptive reliance on the most stable sensory predictions enhances perceptual feature extraction of moving stimuli
The prediction of the sensory outcomes of action is thought to be useful for distinguishing self- vs. externally generated sensations, correcting movements when sensory feedback is...

