IEEE-SSCI 2018

2018 SYMPOSIUM SERIES ON COMPUTATIONAL INTELLIGENCE



18 - 21 NOVEMBER, 2018, BENGALURU, INDIA


IEEE Symposium on

Deep Learning

Deep Learning (DL) is growing in popularity because it solves complex problems in machine learning by exploiting multi scale, multi-layer architectures making better use of the data patterns. Multi-scale machine perception tasks such as object and speech recognitions using DL have recently outperformed systems that have been under development for many years. The principles of DL, and its ability to capture multi scale representations, are very general and the technology can be applied to many other problem domains, which makes it quite attractive. Many open problems and challenges still exists, e.g. interpretability, computational and time costs, repeatability of the results, convergence, ability to learn from a very small amount of data, to evolve dynamically/continue to learn, etc. The Symposium will provide a forum for discussing new DL advances, challenges, brainstorming new solutions and directions between top scientists, researchers, professionals, practitioners and students with an interest in DL and related areas including applications to autonomous transportation, communications, medical, financial services, etc.

The manuscripts should be submitted in PDF format. Click Here to know further guidelines for submission.

Topics


Topics of IEEE DL’18 include but are not limited to:
  •    Unsupervised, semi-, and supervised learning
  •    Deep reinforcement learning (deep value function estimation, policy learning and stochastic control)
  •    Memory Networks and differentiable programming
  •    Implementation issues (software and hardware)
  •    Dimensionality expansion and sparse modeling
  •    Learning representations from large-scale data
  •    Multi-task learning
  •    Learning from multiple modalities
  •    Weakly supervised learning
  •    Metric learning and kernel learning
  •    Hierarchical models
  •    Interpretable DL
  •    Fuzzy rule-based DL
  •    Non-Iterative DL
  •    Recursive DL
  •    Repeatability of results in DL
  •    Convergence in DL
  •    Incremental DL
  •    Evolving DL
  •    Fast DL
  •    Applications in:
  •                Image/video
  •                Audio/speech
  •                Natural language processing
  •                Robotics, navigation, control
  •                Games
  •                Cognitive architectures
  •                AI

Symposium Co-Chairs


Alessandro Sperdutii

Università di Padova, Italy
Email: sperduti@math.unipd.it


Jose Principe
University of Florida, USA
Email: principe@cnel.ufl.edu


Plamen Angelov
University of Lancaster, UK
Email: p.angelov@lancaster.ac.uk

Program Committee

Plamen AngelovLancaster University, UK
Chrisina JayneRobert Gordon University, UK
Xiaowei GuLancaster University, UK
Dmitry KanginExeter University, UK
William HowellNatural Resources Canada
Jose C. PrincipeUniversity of Florida, US
Manuel RoveriPolytecnico di Milano, Italy
Olga SenyukovaLomonosov Moscow State Univ., Russia
Alessandro SperdutiUniversity of Padova, Italy
Akihito SudoTokyo University, Japan
Teck-Hou TengSingapore Management Univ., Singapore
Feng YuhongShenzhen University, China

Symposia