Difference between revisions of "EKAW 2020"

From Openresearch
Jump to: navigation, search
Line 15: Line 15:
 
==Topics==
 
==Topics==
  
Ethical and Trustworthy Knowledge Engineering
+
'''Ethical and Trustworthy Knowledge Engineering'''
  
    Ethics and trust in automated reasoning
+
*Ethics and trust in automated reasoning
    Algorithmic transparency and explanations for knowledge-based systems
+
*Algorithmic transparency and explanations for knowledge-based systems
    Knowledge and ethics
+
*Knowledge and ethics
    Ontologies for trust and ethics
+
*Ontologies for trust and ethics
    Trust and privacy in knowledge representation
+
*Trust and privacy in knowledge representation <br>
  
Knowledge Engineering and Acquisition
+
'''Knowledge Engineering and Acquisition'''
  
    Tools and methodologies for ontology engineering
+
*Tools and methodologies for ontology engineering
    Ontology design patterns
+
*Ontology design patterns
    Ontology localisation
+
*Ontology localisation
    Multilinguality in ontologies
+
*Multilinguality in ontologies
    Ontology alignment
+
*Ontology alignment
    Knowledge authoring and semantic annotation
+
*Knowledge authoring and semantic annotation
    Knowledge acquisition from non-ontological resources (thesauri, folksonomies, etc.)
+
*Knowledge acquisition from non-ontological resources (thesauri, folksonomies, etc.)
    Semi-automatic knowledge acquisition, e.g., ontology learning
+
*Semi-automatic knowledge acquisition, e.g., ontology learning
    Collaborative knowledge acquisition and formalisation
+
*Collaborative knowledge acquisition and formalisation
    Mining the Semantic Web and the Web of Data
+
*Mining the Semantic Web and the Web of Data
    Ontology evaluation and metrics
+
*Ontology evaluation and metrics
    Uncertainty and vagueness in knowledge representation
+
*Uncertainty and vagueness in knowledge representation
    Dealing with dynamic, distributed and emerging knowledge
+
*Dealing with dynamic, distributed and emerging knowledge <br>
  
Knowledge Management
+
'''Knowledge Management'''
  
    Methodologies and tools for knowledge management
+
*Methodologies and tools for knowledge management
    Knowledge sharing and distribution, collaboration
+
*Knowledge sharing and distribution, collaboration
    Best practices and lessons learned from case studies
+
*Best practices and lessons learned from case studies
    Provenance and trust in knowledge management
+
*Provenance and trust in knowledge management
    FAIR data and knowledge
+
*FAIR data and knowledge
    Methods for accelerating take-up of knowledge management technologies
+
*Methods for accelerating take-up of knowledge management technologies
    Corporate memories for knowledge management
+
*Corporate memories for knowledge management
    Knowledge evolution, maintenance and preservation
+
*Knowledge evolution, maintenance and preservation
    Incentives for human knowledge acquisition and data quality improvement (e.g. games with a purpose)
+
*Incentives for human knowledge acquisition and data quality improvement (e.g. games with a purpose) <br>
  
Social and Cognitive Aspects of Knowledge Representation
+
'''Social and Cognitive Aspects of Knowledge Representation'''
  
    Similarity and analogy-based reasoning
+
*Similarity and analogy-based reasoning
    Knowledge representation inspired by cognitive science
+
*Knowledge representation inspired by cognitive science
    Synergies between humans and machines
+
*Synergies between humans and machines
    Knowledge emerging from user interaction and networks
+
*Knowledge emerging from user interaction and networks
    Knowledge ecosystems
+
*Knowledge ecosystems
    Expert finding, e.g., by social network analysis
+
*Expert finding, e.g., by social network analysis
    Collaborative and social approaches to knowledge management and acquisition
+
*Collaborative and social approaches to knowledge management and acquisition
    Crowdsourcing in knowledge management
+
*Crowdsourcing in knowledge management <br>
  
Knowledge discovery
+
'''Knowledge discovery'''
  
    Mining patterns and association rules
+
*Mining patterns and association rules
    Mining complex data: numbers, sequences, trees, graphs
+
*Mining complex data: numbers, sequences, trees, graphs
    Formal Concept Analysis and extensions
+
*Formal Concept Analysis and extensions
    Numerical data mining methods and knowledge processing
+
*Numerical data mining methods and knowledge processing
    Mining the web of data for knowledge construction
+
*Mining the web of data for knowledge construction
    Text mining and ontology engineering
+
*Text mining and ontology engineering
    Classification and clustering for knowledge management
+
*Classification and clustering for knowledge management
    Symbolic and sub-symbolic learning machine learning  
+
*Symbolic and sub-symbolic learning machine learning <br>
  
Applications in specific domains such as
+
'''Applications in specific domains such as'''
 +
 
 +
*eGovernment and public administration
 +
*Life sciences, health and medicine
 +
*Humanities and Social Sciences
 +
*Automotive and manufacturing industry
 +
*Cultural heritage
 +
*Digital libraries
 +
*Geosciences
 +
*ICT4D (Knowledge in the developing world)<br>
  
    eGovernment and public administration
 
    Life sciences, health and medicine
 
    Humanities and Social Sciences
 
    Automotive and manufacturing industry
 
    Cultural heritage
 
    Digital libraries
 
    Geosciences
 
    ICT4D (Knowledge in the developing world)
 
  
 
==Submissions==
 
==Submissions==

Revision as of 12:02, 17 February 2020

EKAW 2020
22nd International Conference on Knowledge Engineering and Knowledge Management
Event in series EKAW
Dates 2020/09/16 (iCal) - 2020/09/20
Homepage: https://ekaw2020.inf.unibz.it/
Location
Location: Bozen-Bolzano, Italy
Loading map...

Table of Contents


22nd International Conference on Knowledge Engineering and Knowledge Management

Topics

Ethical and Trustworthy Knowledge Engineering

  • Ethics and trust in automated reasoning
  • Algorithmic transparency and explanations for knowledge-based systems
  • Knowledge and ethics
  • Ontologies for trust and ethics
  • Trust and privacy in knowledge representation

Knowledge Engineering and Acquisition

  • Tools and methodologies for ontology engineering
  • Ontology design patterns
  • Ontology localisation
  • Multilinguality in ontologies
  • Ontology alignment
  • Knowledge authoring and semantic annotation
  • Knowledge acquisition from non-ontological resources (thesauri, folksonomies, etc.)
  • Semi-automatic knowledge acquisition, e.g., ontology learning
  • Collaborative knowledge acquisition and formalisation
  • Mining the Semantic Web and the Web of Data
  • Ontology evaluation and metrics
  • Uncertainty and vagueness in knowledge representation
  • Dealing with dynamic, distributed and emerging knowledge

Knowledge Management

  • Methodologies and tools for knowledge management
  • Knowledge sharing and distribution, collaboration
  • Best practices and lessons learned from case studies
  • Provenance and trust in knowledge management
  • FAIR data and knowledge
  • Methods for accelerating take-up of knowledge management technologies
  • Corporate memories for knowledge management
  • Knowledge evolution, maintenance and preservation
  • Incentives for human knowledge acquisition and data quality improvement (e.g. games with a purpose)

Social and Cognitive Aspects of Knowledge Representation

  • Similarity and analogy-based reasoning
  • Knowledge representation inspired by cognitive science
  • Synergies between humans and machines
  • Knowledge emerging from user interaction and networks
  • Knowledge ecosystems
  • Expert finding, e.g., by social network analysis
  • Collaborative and social approaches to knowledge management and acquisition
  • Crowdsourcing in knowledge management

Knowledge discovery

  • Mining patterns and association rules
  • Mining complex data: numbers, sequences, trees, graphs
  • Formal Concept Analysis and extensions
  • Numerical data mining methods and knowledge processing
  • Mining the web of data for knowledge construction
  • Text mining and ontology engineering
  • Classification and clustering for knowledge management
  • Symbolic and sub-symbolic learning machine learningÂ

Applications in specific domains such as

  • eGovernment and public administration
  • Life sciences, health and medicine
  • Humanities and Social Sciences
  • Automotive and manufacturing industry
  • Cultural heritage
  • Digital libraries
  • Geosciences
  • ICT4D (Knowledge in the developing world)


Submissions

Important Dates

Committees

  • Co-Organizers
  • General Co-Chairs
  • Local Organizing Co-Chairs
  • Program Committee Members