Large language models (LLMs) can be effectively integrated into causal discovery workflows to extract meaningful insights from unstructured data by proposing relevant high-level factors and iteratively refining them through feedback from the causal discovery algorithm.
LLM-DCD, a novel approach that integrates Large Language Models (LLMs) with Differentiable Causal Discovery (DCD), improves the accuracy and interpretability of causal discovery from observational data by leveraging LLMs for informed initialization of causal graph structure.
This paper proposes a novel framework for understanding and distinguishing between different types of context-specific changes in causal relationships within multi-context systems, addressing the challenge of identifying causal structures when observational support varies across contexts.
This research paper introduces a novel Bayesian algorithm designed to efficiently learn causal graphs from a limited number of interventional samples, addressing the real-world challenge of costly interventions in causal discovery.
This paper introduces a new sequential method for discovering the causal order of variables in Monotonic Structural Causal Models (SCMs) by iteratively identifying the root variable using the Jacobian of Triangular Monotonic Increasing (TMI) maps, eliminating the need for sparsity assumptions and outperforming existing methods based on Jacobian sparsity maximization.
MissNODAG is a novel framework that effectively learns cyclic causal relationships from incomplete data, addressing limitations of existing methods by handling both MNAR missingness and feedback loops in systems.
LoSAM is a novel algorithm that efficiently identifies causal relationships in data generated by complex systems, even when some influencing factors are hidden, by leveraging local causal structures and advanced statistical techniques.
This paper introduces DiffIntersort, a novel method that improves upon the existing Intersort algorithm for identifying causal relationships between variables using interventional data. DiffIntersort overcomes scalability limitations in Intersort, enabling its application to larger datasets and integration into gradient-based machine learning workflows.
This paper introduces a novel method, SkewScore, for identifying causal relationships in data with heteroscedastic noise by leveraging the skewness of the score function, offering a computationally efficient alternative to existing approaches.
This paper introduces CaPS, a novel ordering-based causal discovery algorithm that effectively handles datasets containing both linear and nonlinear causal relationships, outperforming existing methods restricted to a single type of relation.