Causal Modeling for Finance and Business
Foundations, Frameworks, and Applications
Frank J Fabozzi author Sergio Focardi author
Format:Paperback
Publisher:MIT Press Ltd
Publishing:4th Aug '26
£55.00
This title is due to be published on 4th August, and will be despatched as soon as possible.

A comprehensive look at causality’s theoretical and practical aspects in economics and finance.
In Causal Modeling for Finance and Business, Frank Fabozzi and Sergio Focardi offer a foundation for understanding causal relationships and their importance in complex systems. Topics include the theory of graphs, probabilistic frameworks, structural causal models, algorithms for learning causal structures, and the empirical testing of these models.
The book emphasizes applying and deploying causal models in real-world business and investment scenarios. However, it also offers a novel theoretical perspective on causal modeling. Fabozzi and Focardi argue that causation is not a law of nature, but a characteristic of causal systems. If we accept the modern idea of causation as manipulability, causal systems are characterized by causal relationships as well as purely descriptive functional relationships.
With these arguments in mind, the book addresses a critical gap in understanding and applying causal reasoning in complex systems. While correlations have often been relied upon in data analysis, decision-making in business and economics demands a deeper understanding of causation and functional relationships to drive actionable outcomes.
The book’s objective is to provide a comprehensive resource that bridges foundational theories and practical applications of causal models. By integrating recent advancements in artificial intelligence, probabilistic logic, and graph theory, the authors offer a robust framework for researchers, practitioners, and decision-makers to harness the power of causality in solving intricate problems.
ENDORSEMENTS
“In Causal Modeling for Finance and Business, Frank J. Fabozzi and Sergio Focardi offer a much-needed exploration of one of the most important intellectual shifts in modern analytics: the move beyond correlation toward structured, intervention-based causal reasoning. They have clearly and rigorously integrated philosophy, probability, graph theory, structural causal models, and real-world financial applications into a single unified framework. In the process, they have provided researchers, investment professionals and policymakers alike with an indispensable, foundational understanding of decision-making under uncertainty.”
—Andrew B. Weisman, Founding Partner, Market Revealed Preference
ISBN: 9780262054270
Dimensions: unknown
Weight: unknown
320 pages