专题:Bayesian Modeling and Causal Inference

This cluster of papers focuses on the learning, inference, and applications of Bayesian networks and related probabilistic graphical models. It covers topics such as causal inference, graphical model structure learning, Markov logic networks, and the use of imprecise probabilities in modeling. The papers also discuss various algorithms for probabilistic learning and highlight the applications of Bayesian networks in diverse fields such as ecology, healthcare, and decision making under uncertainty.
最新文献
Report on the Workshop on Benchmarking Causal Models (CausalBench) 2026

article Full Text OpenAlex

State Locality Theory 2 — Part I: Structural Foundations

preprint Full Text OpenAlex

Conditional Syntax and Semantic Splittings of Strongly and Weakly Consistent Belief Bases

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Causal Priority Theory: A Unified Framework — Time as a Derived Quantity (Episodes 0–6)

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COS45 — Coherence Core (Final) A Minimal Closed Axiom Set for Observable Decision Boundaries

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An inference is admissible if and only if all three conditions hold

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COS45 — A Geometric Detectability Framework for Noise-Constrained Inference (v1.0 11)

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Improving finite sample performance of causal discovery by exploiting temporal structure

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SCGRN: Spatiotemporal causal graph reasoning network for regional economic development modeling

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Expectations in Expectation Propagation

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近5年高被引文献
On a Method to Measure Supervised Multiclass Model’s Interpretability: Application to Degradation Diagnosis (Short Paper)

preprint Full Text OpenAlex 13235 FWCI2017.9032

Formal Semantics for Kolmogorov-Arnold Network Representations of Operational Games

preprint Full Text OpenAlex 3500 FWCI0

Equivalence and Synthesis of Causal Models

book-chapter Full Text OpenAlex 1004 FWCI33.8884

Reverend Bayes on Inference Engines: A Distributed Hierarchical Approach

book-chapter Full Text OpenAlex 756 FWCI32.8561

Bayesian Inverse Reinforcement Learning

book-chapter Full Text OpenAlex 471 FWCI32.556

On the Tractability of SHAP Explanations

article Full Text OpenAlex 412 FWCI47.2039

Algorithms to estimate Shapley value feature attributions

article Full Text OpenAlex 397 FWCI66.6406

System Z : A Natural Ordering of Defaults with Tractable Applications to Nonmonotonic Reasoning

book-chapter Full Text OpenAlex 326 FWCI1.3648

A survey of Bayesian Network structure learning

article Full Text OpenAlex 294 FWCI49.0726

Anytime Weighted Model Counting with Approximation Guarantees for Probabilistic Inference

preprint Full Text OpenAlex 284 FWCI10.7189