From Correlation to Causation: Integrating Causal Reasoning Frameworks into Deep Learning Models
DOI:
https://doi.org/10.63345/wjftcse.v2.i1.202Keywords:
Causal inference, deep learning, correlation vs causation, structural causal models, counterfactuals, explainable AI, robust learningAbstract
Deep learning models have achieved remarkable success across diverse application domains, including computer vision, natural language processing, healthcare, and autonomous systems. Despite these advances, most deep learning systems fundamentally rely on correlational patterns rather than true causal understanding. This limitation poses significant challenges in high-stakes domains where robustness, interpretability, fairness, and generalization under distributional shifts are essential. The inability of conventional deep learning models to distinguish between correlation and causation often leads to spurious associations, biased predictions, and poor performance in unseen environments.
This paper provides a comprehensive analysis of the transition from correlation to causation in artificial intelligence, with a particular focus on the integration of causal reasoning frameworks into deep learning architectures. We review foundational concepts of causal inference, including structural causal models, counterfactual reasoning, and intervention-based learning, and examine their relevance to modern deep learning systems. The paper further explores emerging hybrid approaches that combine neural networks with causal graphs, do-calculus, and invariant learning principles. Key challenges, methodological advances, and practical applications are discussed, along with open research questions and future directions. By bridging the gap between statistical learning and causal reasoning, this study aims to highlight pathways toward more reliable, explainable, and human-aligned artificial intelligence systems.
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