IEEE SSCI 2020 will run as a virtual conference.
The 2020 IEEE Symposium on Foundations of Computational Intelligence (FOCI' 2020) will take
place as part of the IEEE Symposium Series on Computational Intelligence (SSCI 2020).
Computational intelligence techniques are widely used to tackle real-world problems due to
their numerous successful applications. However, the reasons behind these successes are
often not well understood. A solid theoretical foundation of computational intelligence
techniques explains the reasons behind the success of these methods. Furthermore,
theoretical analyses lead to the understanding of which problems are solved efficiently by a
given technique and which are not. Amongst the benefits to practitioners a solid theoretical
understanding (a) provides guidance on the choice of the best technique for the problem at
hand, (b) helps to identify optimal parameter settings and ultimately (c) aids the design of
more effective techniques.
IEEE FOCI'20 will focus on fundamental theoretical foundations of (but not limited to) the
three main branches of computational intelligence, Neural Networks and other machine
learning methods, Fuzzy Logic and Evolutionary Computation. Although the symposium's main
interest is in theoretical foundations, computational studies of a foundational nature are
also welcome. As in the previous SSCI editions, accepted papers will be included in the
Conference Proceedings Citation Index.
IEEE FOCI'20, provides an ideal forum for those who are interested in the foundational issues
of computational intelligence to exchange their ideas and present their latest findings.
Participants of FOCI'20 will also benefit from the interaction at one location with the
participants of the several other symposia running concurrently at IEEE SSCI 2020, each
highlighting various aspects of computational intelligence. As a whole, this international
event will attract top researchers, practitioners, and students from around the world to
discuss the latest advances in the field of computational intelligence.
Topics:
Fuzzy Logic
- Non-standard fuzzy sets
- Granular computing
- Computing with words
- Aggregation/fusion
- Fuzzy sets and statistics
- Uncertainty
- Decision-making
- General theoretical issues
- Generalisation in neural, fuzzy and evolutionary learning
- Fuzzy logic and fuzzy set theory
- Lattice theory and multi-valued logic
- Approximate reasoning
- Type-2 fuzzy logic
- Rough sets and random sets
- Fuzzy mathematics
- Fuzzy measure and integral
- Possibility theory and imprecise probability
Neural Networks and other machine learning techniques
- Neural computation
- Self-organizing maps
- Recurrent networks
- Multilayer perceptrons
- Deep Learning, convolutional neural networks, GANs.
- Autoencoders
- Evolutionary neural networks
- Neural networks for pattern recognition
- Neural netwoks for prediction and optimization
- Neural networks for principal component analysis
- General regression neural networks
- Neural networks as/and fuzzy systems
- Radial basis functions
- Learning theory
- Reinforcement learning
- Generalization in neural networks
Evolutionary Computation
- Theoretical foundations of bio-inspired heuristics
- Exact and approximation runtime analysis
- Fixed budget computations
- Black box complexity
- Self-adaptation
- Population dynamics
- Fitness landscape and problem difficulty analysis
- No Free Lunch Theorems
- Statistical approaches for understanding the behaviour of bio-inspired heuristics
- Computational studies of a foundational nature
All bio-inspired search heuristics will be considered for all problem domains including
- Combinatorial and continuous optimization
- Single-objective and multi-objective optimization
- Constraint handling
- Dynamic and stochastic optimization
- Co-evolution and evolutionary learning
Symposium Chairs
PC Members:
Fuzzy Logic:
TBA
Neural Networks and other machine learning techniques:
TBA
Evolutionary Coputation (not final):
- Christine Zarges, Aberystwyth University, Wales
- Carola Doerr, Sorbonne University, France
- Chao Bian, Nanjing University, China
- Jon Rowe, University of Birmingham, UK
- George Hall, Univeristy of Sheffield, UK
- Benjamin Doerr, Ecole Polytechnique, France
- Frank Neumann , University of Adelaide, Australia
- Carsten Witt, Technical University of Denmark, Denmark
- Francisco Chicano , University of Malaga, Spain
- Timo Kötzing , Hasso Plattner Institute, Germany