Application of Probabilistic Graphical Models in Forecasting Crude Oil Price
Danish A. Alvi

TL;DR
This paper explores the use of Probabilistic Graphical Models to improve crude oil price forecasting by understanding causal relationships among macroeconomic factors, with experiments on model structure learning, data exploitation, and validation.
Contribution
It introduces a probabilistic framework for crude oil price prediction that captures causal relationships among market factors, enhancing forecasting accuracy.
Findings
Successfully learned causal structures affecting oil prices
Demonstrated improved forecast reliability using PGM-based models
Validated models with real market data
Abstract
The dissertation investigates the application of Probabilistic Graphical Models (PGMs) in forecasting the price of Crude Oil. This research is important because crude oil plays a very pivotal role in the global economy hence is a very critical macroeconomic indicator of the industrial growth. Given the vast amount of macroeconomic factors affecting the price of crude oil such as supply of oil from OPEC countries, demand of oil from OECD countries, geopolitical and geoeconomic changes among many other variables - probabilistic graphical models (PGMs) allow us to understand by learning the graphical structure. This dissertation proposes condensing data numerous Crude Oil factors into a graphical model in the attempt of creating a accurate forecast of the price of crude oil. The research project experiments with using different libraries in Python in order to construct models of the…
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Taxonomy
TopicsStatistical and Computational Modeling · Bayesian Modeling and Causal Inference · Reservoir Engineering and Simulation Methods
