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
Adaptive Knowledge Assessment via Symmetric Hierarchical Bayesian Neural Networks with Graph Symmetry-Aware Concept Dependencies

article Full Text OpenAlex

CausalPrism: A visual analytics approach for subgroup-based causal heterogeneity exploration

article Full Text OpenAlex

Weight based additive consistency and consensus models for general hesitant linguistic preference relations

article Full Text OpenAlex

Correcting Performance Metrics Bias During Generalization from Biased Samples to Populations

article Full Text OpenAlex

Temporally adaptive hierarchical Choquet integrals: A measure-theoretic framework for dynamic non-additive integration in approximate reasoning

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Pseudo-intervention based local-to-global causal structure learning

article Full Text OpenAlex

Extended Research on Categorical Data Encoding Techniques for Recursive Multistep Prediction of Vessel Trajectory

book-chapter Full Text OpenAlex

The Hybrid Causal Logic Methodology for Risk Assessment: Quantification Algorithm

article Full Text OpenAlex

A Novel Multi-Source Weighted Naive Bayes Classifier

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A Bayesian Network Framework for AI-Driven Risk Mitigation

book-chapter Full Text OpenAlex

近5年高被引文献
Equivalence and Synthesis of Causal Models

book-chapter Full Text OpenAlex 1048 FWCI31.438

Reverend Bayes on Inference Engines: A Distributed Hierarchical Approach

book-chapter Full Text OpenAlex 761 FWCI25.867

Toward Causal Representation Learning

article Full Text OpenAlex 710 FWCI65.369

Explaining individual predictions when features are dependent: More accurate approximations to Shapley values

article Full Text OpenAlex 522 FWCI44.948

Explanation of machine learning models using shapley additive explanation and application for real data in hospital

article Full Text OpenAlex 462 FWCI29.521

Bayesian Inverse Reinforcement Learning

book-chapter Full Text OpenAlex 458 FWCI25.045

Metrics for Offline Evaluation of Prognostic Performance

article Full Text OpenAlex 414 FWCI19.642

Manipulating and Measuring Model Interpretability

article Full Text OpenAlex 381 FWCI32.439

A Survey on Causal Inference

article Full Text OpenAlex 342 FWCI44.567

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

book-chapter Full Text OpenAlex 341 FWCI1.194