| Literature DB >> 34070711 |
Pierrick Bourrat1,2.
Abstract
Invariance is one of several dimensions of causal relationships within the interventionist account. The more invariant a relationship between two variables, the more the relationship should be considered paradigmatically causal. In this paper, I propose two formal measures to estimate invariance, illustrated by a simple example. I then discuss the notion of invariance for causal relationships between non-nominal (i.e., ordinal and quantitative) variables, for which Information theory, and hence the formalism proposed here, is not well suited. Finally, I propose how invariance could be qualified for such variables.Entities:
Keywords: causal specificity; causation; information theory; invariance
Year: 2021 PMID: 34070711 PMCID: PMC8228138 DOI: 10.3390/e23060690
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524
Figure 1Causal diagrams between C and E with different degrees of invariance. In each diagram, each value of C (e.g., , ) has the same probability. If there are four possible values of C, then each value has a probability of . Furthermore, when more than one arrow leaves from a particular value of C, each arrow has the same probability conditioned on the value of C it leaves from. For instance two arrows leaving a particular value of C implies a conditional probability of for each arrow. In a context where there are six possible values of C, the overall probability of an arrow leaving a value of C from which overall two arrows are leaving is thus .