Special Session on ``Knowledge Discovery with Formal Concept Analysis and 
related formalisms (FCA4KD++)'' 

A Special Session co-located with the 23rd Int. Symposium on Methodologies for 
Intelligent Systems (ISMIS 2017) 
Warsaw, Poland, June 26-29, 2017 


OBJECTIVES 

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 (rules, implications) which can be used for many 
purposes, e.g. knowledge discovery, learning, biclustering, knowledge 
representation, reasoning, ontology engineering, information retrieval, 
recommendation, and text processing. Accordingly, there are many links between 
FCA and Knowledge Discovery, e.g. pattern mining, but also between FCA and 
other formalisms such as databases (e.g. functional dependencies), rough sets, 
fuzzy sets... 

Recent years have shown an increased activity in FCA, in particular in 
extending the possibilities of FCA w.r.t. knowledge processing in all 
dimensions, such as work on pattern structures and relational concept analysis. 
These extensions allow FCA to deal with more complex than just binary data 
(e.g. RDF data), for data analysis, knowledge discovery and knowledge 
engineering. All these works extend the capabilities of FCA and offer new 
possibilities for discovery and representation activities. 

Accordingly, this special session will be interested in issues such as: 

- How can FCA support Knowledge Discovery and Knowledge Engineering, e.g. text 
mining, RDF data classification, knowledge representation, reasoning, 
information retrieval, recommendation... 
- How can FCA be extended in order to help researchers to solve new and complex 
problems. 
- How relations with other formalisms such as databases, rough sets, fuzzy 
sets, can be exploited for improving each formalism capabilities? 


TOPICS OF INTEREST include but are not limited to: 

- Concept lattices and related structures: description logics, pattern 
structures, relational structures, rough sets, fuzzy sets... 
- 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. 
- FCA and Knowledge Engineering: ontology engineering, knowledge representation 
and reasoning. 
- Scalable algorithms for concept lattices ``in the large'': distributed 
aspects. 
- Applications of concept lattices: text mining, classification and mining in 
web of data, information retrieval, recommendation, visualization and 
navigation. 


SPECIAL SESSION ORGANIZERS: 

Davide Ciucci University Milano-Bicocca, Italy 
Sergei O. Kuznetsov Higher Schools of Economics, Moscow, Russia 
Amedeo Napoli LORIA (CNRS-Inria-Université de Lorraine), Nancy, France 

IMPORTANT DATES: 

Paper submission due: January 22, 2017 
Notification of review results: March 14, 2017 
Camera ready papers due: April 3, 2017 

PROCEEDINGS 
The accepted papers will be published within the ISMIS main conference 
proceedings (Springer LNAI Series). 

Paper submission 
Authors are invited to submit their manuscripts using the Springer LNCS/LNAI 
style, with a maximum of 10 pages. Detailed instructions are provided on the 
conference homepage. 
Papers should be submitted in PDF format via the ISMIS 2017 Online Submission 
System (please see http://ismis2017.ii.pw.edu.pl/paper_submission.php). 

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