The 2020 IEEE World Congress
on Computational Intelligence
2020 International Joint
Conference on Neural Networks (IJCNN'2020)
19-24 July 2020, Glasgow,
Scotland, UK
Special Session on Extreme Learning Machines (ELM)
Over the past few decades, conventional computational
intelligence techniques faced bottlenecks in learning (e.g., intensive human
intervention and time consuming). With the ever increasing demand of
computational power particularly in areas of big data computing, brain science,
cognition and reasoning, emergent computational intelligence techniques such as
extreme learning machines (ELM) offer significant benefits including fast
learning speed, ease of implementation and minimal human intervention.
Extreme Learning Machines (ELM) aim to break the
barriers between the conventional artificial learning techniques and biological
learning mechanism. ELM represents a suite of machine learning techniques for hierarchical
neural networks (including but not limited to single and multi- hidden layer
feedforward neural networks) in which hidden neurons need not be tuned: inherited
from their ancestors or randomly generated. From ELM theories point of view,
the entire networks are structured and ordered, but they may be seemingly
messy and unstructured in a particular layer or neuron slice. Hard
wiring can be randomly built locally with full connection or partial connections.
Coexistence of globally structured architectures and locally random hidden
neurons happen to have fundamental learning capabilities of compression, sparse
coding, feature learning, clustering, regression and classification. ELM
theories also give theoretical support to local receptive fields in visual
systems.
ELM learning theories show that hidden neurons (including
biological neurons whose math modelling may be unknown) (with almost any
nonlinear piecewise activation functions) can be randomly generated independent
of training data and application environments, which has recently been
confirmed with concrete biological evidences. ELM theories and algorithms argue
that random hidden neurons capture the essence of some brain learning mechanism
as well as the intuitive sense that the efficiency of brain learning need not
rely on computing power of neurons. This may somehow hint at possible reasons
why the brain is more intelligent and effective than computers. ELM offers
significant advantages such as fast learning speed, ease of implementation, and
minimal human intervention. ELM has good potential as a viable alternative
technique for large-scale computing and artificial intelligence.
The need for efficient and fast computational techniques
poses many research challenges. This special session seeks to promote novel
research investigations in ELM and related areas.
Topics of interest:
All the original papers
related to ELM technique are welcome.
Topics of interest include but are not limited to:
Theories
Universal approximation, classification and
convergence, robustness and stability analysis
Biological
learning mechanism and neuroscience
Machine
learning science and data science
Algorithms
Real-time
learning, reasoning and cognition
Sequential/incremental learning and kernel
learning
Clustering and
feature extraction/selection/learning
Random
projection, dimensionality reduction, and matrix factorization
Closed form and
non-closed form solutions
Hierarchical
solutions, and combination of deep learning and ELM
No-Prop, Random
Kitchen Sink, FastFood, QuickNet,
RVFL, Echo State Networks
Parallel and
distributed computing / cloud computing
Applications
Time series
prediction, smart grid and financial data analysis
Social media
and video applications
Biometrics and
bioinformatics, security and compression
Human computer
interface and brain computer interface
Cognitive
science/computation
Sentic computing, natural language processing and speech
processing
Big data
analytics
Hardware
Lower power,
low latency hardware / chips
Artificial
biological alike neurons / synapses
Paper submission:
Potential authors may submit their manuscripts for presentation
consideration through WCCI2020 submission system. All the submissions will go
through peer review. Details on manuscript submission can be found from https://ieee-cis.org/conferences/ijcnn2020/upload.php
Important dates:
Paper submission deadline: January 15, 2020
Notification of acceptance: March 15, 2020
Final paper submission and early registration deadline: April 15, 2020
Organizers:
Guang-Bin Huang, Nanyang
Technological University, Singapore, egbhuang@ntu.edu.sg
Amaury Lendasse, University of
Houston, USA, alendass@Central.uh.edu
Bao-Liang Lu, Shanghai Jiaotong University, China, bllu@sjtu.edu.cn
Jonathan Wu, University of Windsor,
Canada, jwu@uwindsor.ca
Donald C. Wunsch II, Missouri
University of Science & Technology, USA, dwunsch@mst.edu