| A Differential Privacy Mechanism that Accounts for Network Effects for Crowdsourcing Systems |
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3 |
| A General Approach to Multimodal Document Quality Assessment |
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4 |
| A Global Constraint for the Exact Cover Problem: Application to Conceptual Clustering |
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5 |
| A Set of Recommendations for Assessing Human–Machine Parity in Language Translation |
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3 |
| AMP Chain Graphs: Minimal Separators and Structure Learning Algorithms |
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4 |
| ASNets: Deep Learning for Generalised Planning |
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6 |
| Adapting Behavior via Intrinsic Reward: A Survey and Empirical Study |
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4 |
| Adaptive Stress Testing: Finding Likely Failure Events with Reinforcement Learning |
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5 |
| Adversarial Attacks on Crowdsourcing Quality Control |
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3 |
| Agreement on Target-Bidirectional Recurrent Neural Networks for Sequence-to-Sequence Learning |
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6 |
| An Evaluation of Communication Protocol Languages for Engineering Multiagent Systems |
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0 |
| Annotator Rationales for Labeling Tasks in Crowdsourcing |
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4 |
| Automated Conjecturing II: Chomp and Reasoned Game Play |
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2 |
| Belief change and 3-valued logics: Characterization of 19,683 belief change operators |
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0 |
| Best-First Enumeration Based on Bounding Conflicts, and its Application to Large-scale Hybrid Estimation |
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4 |
| Blind Spot Detection for Safe Sim-to-Real Transfer |
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3 |
| Bounds on the Size of PC and URC Formulas |
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2 |
| Bridging the Gap Between Probabilistic Model Checking and Probabilistic Planning: Survey, Compilations, and Empirical Comparison |
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5 |
| Catching Cheats: Detecting Strategic Manipulation in Distributed Optimisation of Electric Vehicle Aggregators |
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3 |
| Compositionality Decomposed: How do Neural Networks Generalise? |
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4 |
| Computing Bayes-Nash Equilibria in Combinatorial Auctions with Verification |
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4 |
| Conservative Extensions in Horn Description Logics with Inverse Roles |
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0 |
| Constraint and Satisfiability Reasoning for Graph Coloring |
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6 |
| Contiguous Cake Cutting: Hardness Results and Approximation Algorithms |
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1 |
| Contrasting the Spread of Misinformation in Online Social Networks |
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6 |
| Credibility-limited Base Revision: New Classes and Their Characterizations |
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0 |
| Deep Reinforcement Learning: A State-of-the-Art Walkthrough |
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1 |
| Diagnosis of Deep Discrete-Event Systems |
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1 |
| Epistemic Argumentation Framework: Theory and Computation |
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1 |
| Fair Allocation with Diminishing Differences |
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3 |
| Gradient-based Learning Methods Extended to Smooth Manifolds Applied to Automated Clustering |
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6 |
| Graph Width Measures for CNF-Encodings with Auxiliary Variables |
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0 |
| HTN Planning as Heuristic Progression Search |
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5 |
| Hedonic Games with Ordinal Preferences and Thresholds |
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1 |
| How to Do Things with Words: A Bayesian Approach |
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0 |
| Image Captioning using Facial Expression and Attention |
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3 |
| Improved High Dimensional Discrete Bayesian Network Inference using Triplet Region Construction |
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6 |
| Improving Nash Social Welfare Approximations |
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1 |
| Incompatibilities Between Iterated and Relevance-Sensitive Belief Revision |
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0 |
| Incomplete Preferences in Single-Peaked Electorates |
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4 |
| Jointly Improving Parsing and Perception for Natural Language Commands through Human-Robot Dialog |
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3 |
| Learning the Language of Software Errors |
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4 |
| Lifted Bayesian Filtering in Multiset Rewriting Systems |
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3 |
| Mapping the landscape of Artificial Intelligence applications against COVID-19 |
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1 |
| Maximin Share Allocations on Cycles |
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1 |
| Modular Structures and Atomic Decomposition in Ontologies |
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5 |
| Neural Machine Translation: A Review |
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3 |
| On Sparse Discretization for Graphical Games |
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0 |
| On the Complexity of Learning a Class Ratio from Unlabeled Data |
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0 |
| Ontology Reasoning with Deep Neural Networks |
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5 |
| Planning High-Level Paths in Hostile, Dynamic, and Uncertain Environments |
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5 |
| Planning for Hybrid Systems via Satisfiability Modulo Theories |
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5 |
| Point at the Triple: Generation of Text Summaries from Knowledge Base Triples |
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5 |
| Predicting Strategic Behavior from Free Text |
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4 |
| Preferences Single-Peaked on a Circle |
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1 |
| Properties of Switch-List Representations of Boolean Functions |
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0 |
| Qualitative Numeric Planning: Reductions and Complexity |
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3 |
| Regret Bounds for Reinforcement Learning via Markov Chain Concentration |
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1 |
| Representing Fitness Landscapes by Valued Constraints to Understand the Complexity of Local Search |
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0 |
| Reviewing Autoencoders for Missing Data Imputation: Technical Trends, Applications and Outcomes |
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1 |
| Robust Multi-Agent Path Finding and Executing |
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4 |
| Saturated Cost Partitioning for Optimal Classical Planning |
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4 |
| Scalable Planning with Deep Neural Network Learned Transition Models |
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4 |
| Simulating Offender Mobility: Modeling Activity Nodes from Large-Scale Human Activity Data |
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4 |
| Sliding-Window Thompson Sampling for Non-Stationary Settings |
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2 |
| Solving Delete Free Planning with Relaxed Decision Diagram Based Heuristics |
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5 |
| Structure from Randomness in Halfspace Learning with the Zero-One Loss |
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3 |
| Subgoaling Techniques for Satisficing and Optimal Numeric Planning |
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6 |
| TensorLog: A Probabilistic Database Implemented Using Deep-Learning Infrastructure |
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❌ |
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5 |
| The 2^k Neighborhoods for Grid Path Planning |
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4 |
| The Bottleneck Simulator: A Model-Based Deep Reinforcement Learning Approach |
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4 |
| The Complexity Landscape of Outcome Determination in Judgment Aggregation |
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0 |
| The Effects of Experience on Deception in Human-Agent Negotiation |
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0 |
| The Force Awakens: Artificial Intelligence for Consumer Law |
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0 |
| The Impact of Treewidth on Grounding and Solving of Answer Set Programs |
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5 |
| The PETLON Algorithm to Plan Efficiently for Task-Level-Optimal Navigation |
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3 |
| The Parameterized Complexity of Motion Planning for Snake-Like Robots |
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1 |
| To Regulate or Not: A Social Dynamics Analysis of an Idealised AI Race |
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1 |
| Towards Knowledgeable Supervised Lifelong Learning Systems |
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5 |
| Towards Partial Order Reductions for Strategic Ability |
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2 |
| Using Machine Learning for Decreasing State Uncertainty in Planning |
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4 |
| Using Task Descriptions in Lifelong Machine Learning for Improved Performance and Zero-Shot Transfer |
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❌ |
✅ |
❌ |
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3 |
| Variational Bayes In Private Settings (VIPS) |
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✅ |
✅ |
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❌ |
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5 |
| Vocabulary Alignment in Openly Specified Interactions |
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❌ |
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1 |