Name Venue Year citations
Modeling PU learning using probabilistic logic programming. MLJ 2024 0
From statistical relational to neurosymbolic artificial intelligence: A survey. Artificial Intelligence 2024 0
Lifted Reasoning for Combinatorial Counting. JAIR 2023 1
Neural probabilistic logic programming in discrete-continuous domains. UAI 2023 0
Deep Explainable Relational Reinforcement Learning: A Neuro-Symbolic Approach. ECML/PKDD 2023 0
Safe Reinforcement Learning via Probabilistic Logic Shields. IJCAI 2023 0
Soft-Unification in Deep Probabilistic Logic. NIPS/NeurIPS 2023 0
First-Order Context-Specific Likelihood Weighting in Hybrid Probabilistic Logic Programs. JAIR 2023 0
A Markov Framework for Learning and Reasoning About Strategies in Professional Soccer. JAIR 2023 0
Learning MAX-SAT from contextual examples for combinatorial optimisation. Artificial Intelligence 2023 0
Inference and Learning with Model Uncertainty in Probabilistic Logic Programs. AAAI 2022 0
DeepStochLog: Neural Stochastic Logic Programming. AAAI 2022 0
Lifted model checking for relational MDPs. MLJ 2022 0
Mapping probability word problems to executable representations. EMNLP 2021 3
Learning CNF Theories Using MDL and Predicate Invention. IJCAI 2021 0
Approximate Inference for Neural Probabilistic Logic Programming. KR 2021 5
Democratizing Constraint Satisfaction Problems through Machine Learning. AAAI 2021 1
Neural probabilistic logic programming in DeepProbLog. Artificial Intelligence 2021 0
From Statistical Relational to Neuro-Symbolic Artificial Intelligence. IJCAI 2020 73
VisualSynth: Democratizing Data Science in Spreadsheets. ECML/PKDD 2020 0
ProbAnch: a Modular Probabilistic Anchoring Framework. IJCAI 2020 1
Ordering Variables for Weighted Model Integration. UAI 2020 2
Algebraic Circuits for Decision Theoretic Inference and Learning. ECAI 2020 4
Learning MAX-SAT from Contextual Examples for Combinatorial Optimisation. AAAI 2020 8
Predictive spreadsheet autocompletion with constraints. MLJ 2020 0
How to Exploit Structure while Solving Weighted Model Integration Problems. UAI 2019 12
The pywmi Framework and Toolbox for Probabilistic Inference using Weighted Model Integration. IJCAI 2019 14
Exact and Approximate Weighted Model Integration with Probability Density Functions Using Knowledge Compilation. AAAI 2019 33
Acquiring Integer Programs from Data. IJCAI 2019 7
Semantic and geometric reasoning for robotic grasping: a probabilistic logic approach. Autonomous Robots 2019 0
Learning SMT(LRA) Constraints using SMT Solvers. IJCAI 2018 36
DeepProbLog: Neural Probabilistic Logic Programming. NIPS/NeurIPS 2018 302
Relational affordances for multiple-object manipulation. Autonomous Robots 2018 19
Learning Constraints From Examples. AAAI 2018 61
Relational Affordance Learning for Task-Dependent Robot Grasping. ILP 2017 3
Flexible constrained sampling with guarantees for pattern mining. DMKD 2017 0
TaCLe: Learning Constraints in Tabular Data. CIKM 2017 6
MiningZinc: A declarative framework for constraint-based mining. Artificial Intelligence 2017 32
Planning in hybrid relational MDPs. MLJ 2017 8
Learning constraints in spreadsheets and tabular data. MLJ 2017 28
Stochastic Constraint Programming with And-Or Branch-and-Bound. IJCAI 2017 10
kProbLog: an algebraic Prolog for machine learning. MLJ 2017 6
Relational data factorization. MLJ 2017 0
Solving Probability Problems in Natural Language. IJCAI 2017 15
Learning the Structure of Dynamic Hybrid Relational Models. ECAI 2016 14
Exploiting local and repeated structure in Dynamic Bayesian Networks. Artificial Intelligence 2016 32
Probabilistic logic programming for hybrid relational domains. MLJ 2016 0
kProbLog: An Algebraic Prolog for Kernel Programming. ILP 2015 2
Languages for Learning and Mining. AAAI 2015 3
Probabilistic (logic) programming concepts. MLJ 2015 165
Rank Matrix Factorisation. PAKDD 2015 4
Inducing Probabilistic Relational Rules from Probabilistic Examples. IJCAI 2015 65
Relational Kernel-Based Grasping with Numerical Features. ILP 2015 5
ProbLog2: Probabilistic Logic Programming. ECML/PKDD 2015 44
Anytime Inference in Probabilistic Logic Programs with Tp-Compilation. IJCAI 2015 40
An Exercise in Declarative Modeling for Relational Query Mining. ILP 2015 8
Planning in Discrete and Continuous Markov Decision Processes by Probabilistic Programming. ECML/PKDD 2015 26
Graph Invariant Kernels. IJCAI 2015 88
kLog: A Language for Logical and Relational Learning with Kernels (Extended Abstract). IJCAI 2015 0
Distributional Clauses Particle Filter. ECML/PKDD 2014 2
Relational object tracking and learning. ICRA 2014 26
Occluded object search by relational affordances. ICRA 2014 26
Condition Monitoring with Incomplete Observations. ECAI 2014 1
Relational Regularization and Feature Ranking. SDM 2014 2
Ranked Tiling. ECML/PKDD 2014 21
Explanation-Based Approximate Weighted Model Counting for Probabilistic Logics. AAAI 2014 15
Learning relational affordance models for two-arm robots. IROS 2014 13
PageRank, ProPPR, and Stochastic Logic Programs. ILP 2014 2
kLog: A language for logical and relational learning with kernels. Artificial Intelligence 2014 0
A particle filter for hybrid relational domains. IROS 2013 49
Allocentric Pose Estimation. ICCV 2013 9
MiningZinc: A Modeling Language for Constraint-Based Mining. IJCAI 2013 36
Learning relational affordance models for robots in multi-object manipulation tasks. ICRA 2012 125
Declarative Modeling for Machine Learning and Data Mining. ECML/PKDD 2012 19
ILP turns 20 - Biography and future challenges. MLJ 2012 75
Itemset mining: A constraint programming perspective. Artificial Intelligence 2011 182
Evaluating Pattern Set Mining Strategies in a Constraint Programming Framework. PAKDD 2011 11
An Algebraic Prolog for Reasoning about Possible Worlds. AAAI 2011 53
Kernel-Based Logical and Relational Learning with kLog for Hedge Cue Detection. ILP 2011 16
Lifted Probabilistic Inference by First-Order Knowledge Compilation. IJCAI 2011 183
Inference in Probabilistic Logic Programs using Weighted CNF's. UAI 2011 95
Learning the Parameters of Probabilistic Logic Programs from Interpretations. ECML/PKDD 2011 76
Relational Learning for Spatial Relation Extraction from Natural Language. ILP 2011 31
Effective feature construction by maximum common subgraph sampling. MLJ 2011 0
Stochastic relational processes: Efficient inference and applications. MLJ 2011 0
Guest editorial to the special issue on inductive logic programming, mining and learning in graphs and statistical relational learning. MLJ 2011 0
Probabilistic Rule Learning. ILP 2010 44
Not Far Away from Home: A Relational Distance-Based Approach to Understanding Images of Houses. ILP 2010 2
Fast learning of relational kernels. MLJ 2010 40
Constraint Programming for Data Mining and Machine Learning. AAAI 2010 71
Extending ProbLog with Continuous Distributions. ILP 2010 55
DTProbLog: A Decision-Theoretic Probabilistic Prolog. AAAI 2010 60
ProbLog Technology for Inference in a Probabilistic First Order Logic. ECAI 2010 18
Grammar Mining. SDM 2009 0
Towards Clausal Discovery for Stream Mining. ILP 2009 8
Probabilistic Logic Learning - A Tutorial Abstract. ICLP 2009 0
Correlated itemset mining in ROC space: a constraint programming approach. KDD 2009 82
A query language for analyzing networks. CIKM 2009 53
Local Query Mining in a Probabilistic Prolog. IJCAI 2009 11
Cluster-grouping: from subgroup discovery to clustering. MLJ 2009 0
Parameter Learning in Probabilistic Databases: A Least Squares Approach. ECML/PKDD 2008 66
A Simple Model for Sequences of Relational State Descriptions. ECML/PKDD 2008 26
On the Efficient Execution of ProbLog Programs. ICLP 2008 65
An experimental evaluation of simplicity in rule learning. Artificial Intelligence 2008 20
Compressing probabilistic Prolog programs. MLJ 2008 41
Constraint programming for itemset mining. KDD 2008 173
r-grams: Relational Grams. IJCAI 2007 9
ProbLog: A Probabilistic Prolog and Its Application in Link Discovery. IJCAI 2007 429
Integrating Naïve Bayes and FOIL. JMLR 2007 70
Constraint-Based Pattern Set Mining. SDM 2007 121
On Mining Closed Sets in Multi-Relational Data. IJCAI 2007 28
Probabilistic Explanation Based Learning. ECML/PKDD 2007 28
Predicting Spike Activity in Neuronal Cultures. IJCNN 2007 1
Learning Relational Navigation Policies. IROS 2006 40
Kernels on Prolog Proof Trees: Statistical Learning in the ILP Setting. JMLR 2006 39
kFOIL: Learning Simple Relational Kernels. AAAI 2006 115
Don't Be Afraid of Simpler Patterns. ECML/PKDD 2006 63
Revising Probabilistic Prolog Programs. ILP 2006 0
Frequent Hypergraph Mining. ILP 2006 0
Logical Hidden Markov Models. JAIR 2006 0
Towards Learning Stochastic Logic Programs from Proof-Banks. AAAI 2005 15
nFOIL: Integrating Naïve Bayes and FOIL. AAAI 2005 101
Statistical Relational Learning: An Inductive Logic Programming Perspective. ECML/PKDD 2005 5
Logical Markov Decision Programs and the Convergence of Logical TD(lambda). ILP 2004 36
Towards Optimizing Conjunctive Inductive Queries. PAKDD 2004 9
Cluster-Grouping: From Subgroup Discovery to Clustering. ECML/PKDD 2004 41
Bellman goes relational. ICML 2004 121
Condensed Representations for Inductive Logic Programming. KR 2004 49
An Algebra for Inductive Query Evaluation. ICDM 2003 29
A Theory of Inductive Query Answering. ICDM 2002 99
Phase Transitions and Stochastic Local Search in k-Term DNF Learning. ECML/PKDD 2002 40
The Levelwise Version Space Algorithm and its Application to Molecular Fragment Finding. IJCAI 2001 163
Feature Construction with Version Spaces for Biochemical Applications. ICML 2001 110
Molecular feature mining in HIV data. KDD 2001 260
Adaptive Bayesian Logic Programs. ILP 2001 119
Towards Combining Inductive Logic Programming with Bayesian Networks. ILP 2001 158
Relational Reinforcement Learning. MLJ 2001 0
A Logical Database Mining Query Language. ILP 2000 26
Instance Based Function Learning. ILP 1999 9
Scaling Up Inductive Logic Programming by Learning from Interpretations. DMKD 1999 107
Relational Learning and Inductive Logic Programming Made Easy Abstract of Tutorial. ECML/PKDD 1999 8
Generalizing Refinement Operators to Learn Prenex Conjunctive Normal Forms. ILP 1999 15
Top-Down Induction of Clustering Trees. ICML 1998 493
Using ILP-Systems for Verification and Validation of Multi-agent Systems. ILP 1998 8
Relational Reinforcement Learning. ICML 1998 27
Attribute-Value Learning Versus Inductive Logic Programming: The Missing Links (Extended Abstract). ILP 1998 144
Relational Reinforcement Learning. ILP 1998 0
Top-Down Induction of First-Order Logical Decision Trees. Artificial Intelligence 1998 0
Using Logical Decision Trees for Clustering. ILP 1997 64
Clausal Discovery. MLJ 1997 223
Lookahead and Discretization in ILP. ILP 1997 75
Theta-Subsumption for Structural Matching. ECML/PKDD 1997 7
Mining Association Rules in Multiple Relations. ILP 1997 243
Logical Settings for Concept-Learning. Artificial Intelligence 1997 178
Forgetting and Compacting data in Concept Learning. IJCAI 1995 3
Declarative Bias for Specific-to-General ILP Systems. MLJ 1995 11
Iterative Versionspaces. Artificial Intelligence 1994 18
First-Order jk-Clausal Theories are PAC-Learnable. Artificial Intelligence 1994 188
Multiple Predicate Learning. IJCAI 1993 102
A Theory of Clausal Discovery. IJCAI 1993 163
Inverse Resolution in an Integrated Inductive-Deductive Learning System. ECAI 1992 1
Belief Updating from Integrity Constraints and Queries. Artificial Intelligence 1992 42
Interactive Concept-Learning and Constructive Induction by Analogy. MLJ 1992 32
On Negation and Three-Valued Logic in Interactive Concept-Learning. ECAI 1990 29
Explanation Based Program Transformation. IJCAI 1989 19
Towards Friendly Concept-Learners. IJCAI 1989 37
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