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Home / Proceedings / AAAI Workshop Papers 2014 /

Statistical Relational AI

Papers

  • Automated Debugging with Tractable Probabilistic Programming
    PDF
  • ProPPR: Efficient First-Order Probabilistic Logic Programming for Structure Discovery, Parameter Learning, and Scalable Inference
    PDF
  • Efficient Probabilistic Inference for Dynamic Relational Models
    PDF
  • Solving Distributed Constraint Optimization Problems Using Ranks
    PDF
  • Evidence-Based Clustering for Scalable Inference in Markov Logic
    PDF
  • Scalable Learning for Structure in Markov Logic Networks
    PDF
  • Hierarchical Reasoning with Probabilistic Programming
    PDF
  • WOLFE: Strength Reduction and Approximate Programming for Probabilistic Programming
    PDF
  • A Proposal for Statistical Outlier Detection in Relational Structures
    PDF
  • Explanation-Based Approximate Weighted Model Counting for Probabilistic Logics
    PDF
  • A Deeper Empirical Analysis of CBP Algorithm: Grounding Is the Bottleneck
    PDF
  • A Sparse Parameter Learning Method for Probabilistic Logic Programs
    PDF
  • Tractable Probabilistic Knowledge Bases: Wikipedia and Beyond
    PDF
  • Learning Tractable Statistical Relational Models
    PDF
  • Organizers
    PDF
  • Towards Adversarial Reasoning in Statistical Relational Domains
    PDF
  • Applying Marginal MAP Search to Probabilistic Conformant Planning: Initial Results
    PDF
  • Classification from One Class of Examples for Relational Domains
    PDF
  • Relational Logistic Regression: The Directed Analog of Markov Logic Networks
    PDF
  • Understanding the Complexity of Lifted Inference and Asymmetric Weighted Model Counting
    PDF
  • Extending PSL with Fuzzy Quantifiers
    PDF
  • Representation, Reasoning, and Learning for a Relational Influence Diagram Applied to a Real-Time Geological Domain
    PDF
  • Parameter Estimation for Relational Kalman Filtering
    PDF
  • Reasoning in the Description Logic BEL Using Bayesian Networks
    PDF
  • Efficient Markov Logic Inference for Natural Language Semantics
    PDF
  • Lifting Relational MAP-LPs using Cluster Signatures
    PDF
  • Preface
    PDF

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