Causality, Causal Discovery, and Causal Inference in Structural
Engineering
- URL: http://arxiv.org/abs/2204.01543v2
- Date: Thu, 7 Apr 2022 12:06:21 GMT
- Title: Causality, Causal Discovery, and Causal Inference in Structural
Engineering
- Authors: M.Z. Naser
- Abstract summary: This paper builds a case for causal discovery and causal inference 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.
- Score: 1.827510863075184
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: 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.
Related papers
- Neural Causal Abstractions [63.21695740637627]
We develop a new family of causal abstractions by clustering variables and their domains.
We show that such abstractions are learnable in practical settings through Neural Causal Models.
Our experiments support the theory and illustrate how to scale causal inferences to high-dimensional settings involving image data.
arXiv Detail & Related papers (2024-01-05T02:00:27Z) - Emergence and Causality in Complex Systems: A Survey on Causal Emergence
and Related Quantitative Studies [12.78006421209864]
Causal emergence theory employs measures of causality to quantify emergence.
Two key problems are addressed: quantifying causal emergence and identifying it in data.
We highlighted that the architectures used for identifying causal emergence are shared by causal representation learning, causal model abstraction, and world model-based reinforcement learning.
arXiv Detail & Related papers (2023-12-28T04:20:46Z) - Inducing Causal Structure for Abstractive Text Summarization [76.1000380429553]
We introduce a Structural Causal Model (SCM) to induce the underlying causal structure of the summarization data.
We propose a Causality Inspired Sequence-to-Sequence model (CI-Seq2Seq) to learn the causal representations that can mimic the causal factors.
Experimental results on two widely used text summarization datasets demonstrate the advantages of our approach.
arXiv Detail & Related papers (2023-08-24T16:06:36Z) - Causal Kripke Models [0.0]
This work extends Halpern and Pearl's causal models for actual causality to a possible world semantics environment.
Using this framework we introduce a logic of actual causality with modal operators, which allows for reasoning about causality in scenarios involving multiple possibilities, temporality, knowledge and uncertainty.
arXiv Detail & Related papers (2023-07-11T07:08:14Z) - A Survey on Causal Discovery: Theory and Practice [2.741266294612776]
Causal inference is designed to quantify the underlying relationships that connect a cause to its effect.
In this paper, we explore recent advancements in a unified manner, provide a consistent overview of existing algorithms, report useful tools and data, present real-world applications.
arXiv Detail & Related papers (2023-05-17T08:18:56Z) - Active Bayesian Causal Inference [72.70593653185078]
We propose Active Bayesian Causal Inference (ABCI), a fully-Bayesian active learning framework for integrated causal discovery and reasoning.
ABCI jointly infers a posterior over causal models and queries of interest.
We show that our approach is more data-efficient than several baselines that only focus on learning the full causal graph.
arXiv Detail & Related papers (2022-06-04T22:38:57Z) - Systematic Evaluation of Causal Discovery in Visual Model Based
Reinforcement Learning [76.00395335702572]
A central goal for AI and causality is the joint discovery of abstract representations and causal structure.
Existing environments for studying causal induction are poorly suited for this objective because they have complicated task-specific causal graphs.
In this work, our goal is to facilitate research in learning representations of high-level variables as well as causal structures among them.
arXiv Detail & Related papers (2021-07-02T05:44:56Z) - To do or not to do: finding causal relations in smart homes [2.064612766965483]
This paper introduces a new way to learn causal models from a mixture of experiments on the environment and observational data.
The core of our method is the use of selected interventions, especially our learning takes into account the variables where it is impossible to intervene.
We use our method on a smart home simulation, a use case where knowing causal relations pave the way towards explainable systems.
arXiv Detail & Related papers (2021-05-20T22:36:04Z) - Towards Causal Representation Learning [96.110881654479]
The two fields of machine learning and graphical causality arose and developed separately.
There is now cross-pollination and increasing interest in both fields to benefit from the advances of the other.
arXiv Detail & Related papers (2021-02-22T15:26:57Z) - A Critical View of the Structural Causal Model [89.43277111586258]
We show that one can identify the cause and the effect without considering their interaction at all.
We propose a new adversarial training method that mimics the disentangled structure of the causal model.
Our multidimensional method outperforms the literature methods on both synthetic and real world datasets.
arXiv Detail & Related papers (2020-02-23T22:52:28Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.