CausalKG: Causal Knowledge Graph Explainability using interventional and counterfactual reasoning
Utkarshani Jaimini, Amit Sheth

TL;DR
CausalKG introduces a hyper-relational knowledge graph framework that enhances AI explainability by supporting interventional and counterfactual reasoning, inspired by human causal thinking.
Contribution
It proposes a novel causal knowledge graph model that captures complex causal relations and enables domain-adaptable explainability through interventional and counterfactual reasoning.
Findings
Enables AI systems to perform causal interventions.
Supports counterfactual reasoning for better explanations.
Improves understanding of AI decisions through richer causal representations.
Abstract
Humans use causality and hypothetical retrospection in their daily decision-making, planning, and understanding of life events. The human mind, while retrospecting a given situation, think about questions such as "What was the cause of the given situation?", "What would be the effect of my action?", or "Which action led to this effect?". It develops a causal model of the world, which learns with fewer data points, makes inferences, and contemplates counterfactual scenarios. The unseen, unknown, scenarios are known as counterfactuals. AI algorithms use a representation based on knowledge graphs (KG) to represent the concepts of time, space, and facts. A KG is a graphical data model which captures the semantic relationships between entities such as events, objects, or concepts. The existing KGs represent causal relationships extracted from texts based on linguistic patterns of noun…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Explainable Artificial Intelligence (XAI) · Topic Modeling
MethodsCounterfactuals Explanations
