Abstract:
This talk will explore the integration of learning modes into a single neural
network structure in which layers of neurons and even individual neurons
adopt different modes. There are several reasons to explore modal learning in
neural networks. One motivation is to overcome the inherent limitations of
any given mode (for example some modes memorise specific features, others
average across features, and both approaches may be relevant according to the
circumstances); another is inspiration from neuroscience, cognitive science
and human learning, where it is impossible to build a serious model without
consideration of multiple modes; and a third reason is non-stationary input
data, or time-variant learning objectives, where the required mode is a
funtion of time. Several modal learning ideas will be presented: The
Snap-Drift Neural Network (SDNN) which toggles its learning between two
modes, either unsupervised or guided by performance feedback (reinforcement);
a general approach to swapping between several learning modes in real-time;
and an adaptive function neural network (ADFUNN), in which adaptation applies
simultaneously to both the weights and the individual neuron activation
functions. Examples will be drawn from a range of applications such as
natural language parsing, speech processing, geographical location systems,
optical character recognition and virtual learning environments.
Brief Biography of the Speaker:
Dominic Palmer-Brown is professor of neural computing and
Associate Head, School of Computing and Technology, at the
University of East London. He was formerly chair in
neurocomputing at Leeds Metropolitan University. His research
covers neural network learning methods for processing language,
modelling interaction and data mining. He was the neural network
specialist on a 5 year UN/NERC/DoE funded crops data analysis
project involving 15 countries, ending in 2000, and has
supervised 12 phds to completion.
He was selected as Editor of the journal Trends in Cognitive
Sciences by Elsevier Science London in 2001. He has published
about 75 papers overall, and received best paper commendations
at The International Conference on Education and Information
Systems: Technologies and Applications (EISTA 2004) and the Int.
Conf. on Hybrid Intelligent Systems 2003. He was keynote invited
speaker at the European Simulation Multiconference 2003, and at
The 10th Int. Conference on Engineering Applications of Neural
Networks, 2007 and has published in many journals including IEEE
Transactions in Neural Networks, Neurocomputing, and Connection
Science.