LGMEApr 4, 2022

Causality, Causal Discovery, and Causal Inference in Structural Engineering

arXiv:2204.01543v39 citationsh-index: 3
Originality Synthesis-oriented
AI Analysis

It introduces causal methods to structural engineering, but is incremental as it reviews existing concepts and applies them to a specific domain.

This paper advocates for using causal discovery and inference methods in structural engineering to uncover true cause-effect relationships and build predictive models, contrasting them with traditional machine learning approaches.

Much of our experiments are designed to uncover the cause(s) and effect(s) behind a data generating mechanism (i.e., phenomenon) we happen to be interested in. Uncovering such relationships allows us to identify the true working of a phenomenon and, most importantly, articulate a model that may enable us to further explore the phenomenon on hand and/or allow us to predict it accurately. Fundamentally, such models are likely to be derived via a causal approach (as opposed to an observational or empirical mean). In this approach, causal discovery is required to create a causal model, which can then be applied to infer the influence of interventions, and answer any hypothetical questions (i.e., in the form of What ifs? Etc.) that we might have. This paper builds a case for causal discovery and causal inference and contrasts that against traditional machine learning approaches; all from a civil and structural engineering perspective. More specifically, this paper outlines the key principles of causality and the most commonly used algorithms and packages for causal discovery and causal inference. Finally, this paper also presents a series of examples and case studies of how causal concepts can be adopted for our domain.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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