Alessandra Russo


Ontology type: schema:Person     


Person Info

NAME

Alessandra

SURNAME

Russo

Publications in SciGraph latest 50 shown

  • 2022-04-07 Detect, Understand, Act: A Neuro-symbolic Hierarchical Reinforcement Learning Framework in MACHINE LEARNING
  • 2021-02-11 ASIA: Automated Social Identity Assessment using linguistic style in BEHAVIOR RESEARCH METHODS
  • 2020-09-12 Polisma - A Framework for Learning Attribute-Based Access Control Policies in COMPUTER SECURITY – ESORICS 2020
  • 2019-11-06 Editorial in FORMAL ASPECTS OF COMPUTING
  • 2019-10-11 Model-based software quality assurance tools and techniques presented at FASE 2018 in INTERNATIONAL JOURNAL ON SOFTWARE TOOLS FOR TECHNOLOGY TRANSFER
  • 2019-09-13 Logic-Based Learning of Answer Set Programs in REASONING WEB. EXPLAINABLE ARTIFICIAL INTELLIGENCE
  • 2019-08-26 RADON: rational decomposition and orchestration for serverless computing in SICS SOFTWARE-INTENSIVE CYBER-PHYSICAL SYSTEMS
  • 2019-04-25 AGENP: An ASGrammar-based GENerative Policy Framework in POLICY-BASED AUTONOMIC DATA GOVERNANCE
  • 2018-06-06 Preface to the special issue on inductive logic programming in MACHINE LEARNING
  • 2017-01-05 Correction: Corrigendum: Defining functional interactions during biogenesis of epithelial junctions in NATURE COMMUNICATIONS
  • 2016-12-06 Defining functional interactions during biogenesis of epithelial junctions in NATURE COMMUNICATIONS
  • 2015-12-27 Inductive Learning Using Constraint-Driven Bias in INDUCTIVE LOGIC PROGRAMMING
  • 2015-12-09 Integrating Privacy and Safety Criteria into Planning Tasks in SECURITY AND TRUST MANAGEMENT
  • 2015-09-15 Automated Inference of Rules with Exception from Past Legal Cases Using ASP in LOGIC PROGRAMMING AND NONMONOTONIC REASONING
  • 2014-09-24 Learning Through Hypothesis Refinement Using Answer Set Programming in INDUCTIVE LOGIC PROGRAMMING
  • 2014 Inductive Learning of Answer Set Programs in LOGICS IN ARTIFICIAL INTELLIGENCE
  • 2013 Handling Change in Normative Specifications in DECLARATIVE AGENT LANGUAGES AND TECHNOLOGIES X
  • 2013 On Minimality and Integrity Constraints in Probabilistic Abduction in LOGIC FOR PROGRAMMING, ARTIFICIAL INTELLIGENCE, AND REASONING
  • 2012-10-25 Supporting incremental behaviour model elaboration in SICS SOFTWARE-INTENSIVE CYBER-PHYSICAL SYSTEMS
  • 2012 Learning from Vacuously Satisfiable Scenario-Based Specifications in FUNDAMENTAL APPROACHES TO SOFTWARE ENGINEERING
  • 2012 Declarative Distributed Computing in CORRECT REASONING
  • 2012 Inductive Logic Programming in Answer Set Programming in INDUCTIVE LOGIC PROGRAMMING
  • 2012 Integrating Model Checking and Inductive Logic Programming in INDUCTIVE LOGIC PROGRAMMING
  • 2011 Refinement of History-Based Policies in LOGIC PROGRAMMING, KNOWLEDGE REPRESENTATION, AND NONMONOTONIC REASONING
  • 2011 Probabilistic Rule Learning in Nonmonotonic Domains in COMPUTATIONAL LOGIC IN MULTI-AGENT SYSTEMS
  • 2011 Distributed Abductive Reasoning with Constraints in DECLARATIVE AGENT LANGUAGES AND TECHNOLOGIES VIII
  • 2011 Norm Refinement and Design through Inductive Learning in COORDINATION, ORGANIZATIONS, INSTITUTIONS, AND NORMS IN AGENT SYSTEMS VI
  • 2011 Revising Process Models through Inductive Learning in BUSINESS PROCESS MANAGEMENT WORKSHOPS
  • 2010-11-23 Belief Revision in HANDBOOK OF PHILOSOPHICAL LOGIC
  • 2010 Speculative Abductive Reasoning for Hierarchical Agent Systems in COMPUTATIONAL LOGIC IN MULTI-AGENT SYSTEMS
  • 2010 Revision, Acceptability and Context, Theoretical and Algorithmic Aspects in NONE
  • 2010 On the Implementation of Speculative Constraint Processing in COMPUTATIONAL LOGIC IN MULTI-AGENT SYSTEMS
  • 2009-10-06 Deriving non-Zeno behaviour models from goal models using ILP in FORMAL ASPECTS OF COMPUTING
  • 2009 Induction on Failure: Learning Connected Horn Theories in LOGIC PROGRAMMING AND NONMONOTONIC REASONING
  • 2009 Learning Rules from User Behaviour in ARTIFICIAL INTELLIGENCE APPLICATIONS AND INNOVATIONS III
  • 2009 SAGE: A Logical Agent-Based Environment Monitoring and Control System in AMBIENT INTELLIGENCE
  • 2008-03-05 DARE: a system for distributed abductive reasoning in AUTONOMOUS AGENTS AND MULTI-AGENT SYSTEMS
  • 2008 Deriving Non-zeno Behavior Models from Goal Models Using ILP in FUNDAMENTAL APPROACHES TO SOFTWARE ENGINEERING
  • 2007-01-01 Extracting Requirements from Scenarios with ILP in INDUCTIVE LOGIC PROGRAMMING
  • 2006 Using Argumentation Logic for Firewall Policy Specification and Analysis in LARGE SCALE MANAGEMENT OF DISTRIBUTED SYSTEMS
  • 2004 Reasoning About Requirements Evolution Using Clustered Belief Revision in ADVANCES IN ARTIFICIAL INTELLIGENCE – SBIA 2004
  • 2004 Generalised Kernel Sets for Inverse Entailment in LOGIC PROGRAMMING
  • 2003 Hybrid Abductive Inductive Learning: A Generalisation of Progol in INDUCTIVE LOGIC PROGRAMMING
  • 2002-09-18 An Abductive Approach for Analysing Event-Based Requirements Specifications in LOGIC PROGRAMMING
  • 2000 Revision by Translation in INFORMATION, UNCERTAINTY AND FUSION
  • 1999 Transformation Methods in LDS in LOGIC, LANGUAGE AND REASONING
  • 1997-07 Grafting Modalities onto Substructural Implication Systems in STUDIA LOGICA
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