FCA4AI 2016 - 5th Workshop What can FCA do for Artificial Intelligence?
Date2016-08-29 - 2016-09-02
Deadline2016-06-01
VenueThe Hague, Netherlands, The
Keywords
Websitehttps://fca4ai.hse.ru/2016
Topics/Call fo Papers
Previous editions of the FCA4AI Workshop showed that many researchers working in Artificial Intelligence are indeed interested by a powerful method for classification and mining such as Formal Concept Analysis (see the proceedings of the previous workshop editions).
We are organizing a new edition of the workshop in the Hague at the ECAI 2016 Conference.
Formal Concept Analysis (FCA) is a mathematically well-founded theory aimed at data analysis and classification. FCA allows one to build a concept lattice and a system of dependencies (implications) which can be used for many AI needs, e.g. knowledge processing involving learning, knowledge discovery, knowledge representation and reasoning, ontology engineering, and as well as information retrieval and text processing. Thus, there exist many "natural links" between FCA and AI.
Recent years have been witnessing increased scientific activity around FCA, in particular a strand of work emerged that is aimed at extending the possibilities of FCA w.r.t. knowledge processing, such as work on pattern structures and relational context analysis. These extensions are aimed at allowing FCA to deal with more complex than just binary data, both from the data analysis and knowledge discovery point of view and from the knowledge representation point of view, including, e.g., ontology engineering. All these works extend the capabilities of FCA and offer new possibilities for AI activities in the framework of FCA.
Accordingly, in this workshop, we will be interested in two main issues:
How can FCA support AI activities such as knowledge processing (knowledge discovery, knowledge representation and reasoning), learning (clustering, pattern and data mining), natural language processing, information retrieval.
How can FCA be extended in order to help AI researchers to solve new and complex problems in their domain.
The workshop is dedicated to discuss such issues.
Topics of interest include but are not limited to:
Concept lattices and related structures: description logics, pattern structures, relational structures.
Knowledge discovery and data mining with FCA: association rules, itemsets and data dependencies, attribute implications, data pre-processing, redundancy and dimensionality reduction, classification and clustering.
Knowledge engineering and ontology engineering: knowledge representation and reasoning.
Scalable algorithms for concept lattices and artificial intelligence "in the large" (distributed aspects, big data).
Applications of concept lattices: semantic web, information retrieval, visualization and navigation, pattern recognition.
The workshop will include time for audience discussion for having a better understanding of the issues, challenges, and ideas being presented.
We are organizing a new edition of the workshop in the Hague at the ECAI 2016 Conference.
Formal Concept Analysis (FCA) is a mathematically well-founded theory aimed at data analysis and classification. FCA allows one to build a concept lattice and a system of dependencies (implications) which can be used for many AI needs, e.g. knowledge processing involving learning, knowledge discovery, knowledge representation and reasoning, ontology engineering, and as well as information retrieval and text processing. Thus, there exist many "natural links" between FCA and AI.
Recent years have been witnessing increased scientific activity around FCA, in particular a strand of work emerged that is aimed at extending the possibilities of FCA w.r.t. knowledge processing, such as work on pattern structures and relational context analysis. These extensions are aimed at allowing FCA to deal with more complex than just binary data, both from the data analysis and knowledge discovery point of view and from the knowledge representation point of view, including, e.g., ontology engineering. All these works extend the capabilities of FCA and offer new possibilities for AI activities in the framework of FCA.
Accordingly, in this workshop, we will be interested in two main issues:
How can FCA support AI activities such as knowledge processing (knowledge discovery, knowledge representation and reasoning), learning (clustering, pattern and data mining), natural language processing, information retrieval.
How can FCA be extended in order to help AI researchers to solve new and complex problems in their domain.
The workshop is dedicated to discuss such issues.
Topics of interest include but are not limited to:
Concept lattices and related structures: description logics, pattern structures, relational structures.
Knowledge discovery and data mining with FCA: association rules, itemsets and data dependencies, attribute implications, data pre-processing, redundancy and dimensionality reduction, classification and clustering.
Knowledge engineering and ontology engineering: knowledge representation and reasoning.
Scalable algorithms for concept lattices and artificial intelligence "in the large" (distributed aspects, big data).
Applications of concept lattices: semantic web, information retrieval, visualization and navigation, pattern recognition.
The workshop will include time for audience discussion for having a better understanding of the issues, challenges, and ideas being presented.
Other CFPs
- 2nd Workshop on Artificial Intelligence and Internet of Things (AI-IoT)
- International Workshop on AI Empowers the Smart Grid
- International Workshop on Artificial Intelligence for Justice
- 1st International Workshop on Analytics on Evolving Networks
- 11th ACM Workshop on Performance Monitoring and Measurement of Heterogeneous Wireless and Wired Networks (PM?HW?N 2016)
Last modified: 2016-03-21 15:06:24