Qualitative System Identification from Imperfect Data
George M. Coghill, Ross D. King, Ashwin Srinivasan

TL;DR
This paper presents a machine learning approach using Inductive Logic Programming to identify qualitative models of complex systems from imperfect data, aiding understanding and model development especially in biological contexts.
Contribution
It introduces a framework that leverages background knowledge to constrain qualitative model identification, demonstrated on artificial and biological datasets.
Findings
Qualitative models can be effectively learned from noisy and sparse data.
Kernel subsets are crucial for accurate qualitative model learning.
The method scales to biological systems, exemplified by glycolysis pathway identification.
Abstract
Experience in the physical sciences suggests that the only realistic means of understanding complex systems is through the use of mathematical models. Typically, this has come to mean the identification of quantitative models expressed as differential equations. Quantitative modelling works best when the structure of the model (i.e., the form of the equations) is known; and the primary concern is one of estimating the values of the parameters in the model. For complex biological systems, the model-structure is rarely known and the modeler has to deal with both model-identification and parameter-estimation. In this paper we are concerned with providing automated assistance to the first of these problems. Specifically, we examine the identification by machine of the structural relationships between experimentally observed variables. These relationship will be expressed in the form of…
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