Browsing KEDRI - the Knowledge Engineering and Discovery Research Institute by Title
Now showing items 27-46 of 56
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Incremental learning for online face recognition
(IEEE, 2005)In this paper, a new approach to face recognition is presented in which not only a classifier but also a feature space of input variables is learned incrementally to adapt to incoming training samples. A benefit of this ... -
Incremental learning in autonomous systems: evolving connectionist systems for on-line image and speech recognition
(IEEE, 2005)The paper presents an integrated approach to incremental learning in autonomous systems, that includes both pattern recognition and feature selection. The approach utilizes evolving connectionist systems (ECoS) and is ... -
Incremental Linear Discriminant analysis for classification of Data Streams
(IEEE, 2005)This paper presents a constructive method for deriving an updated discriminant eigenspace for classification when bursts of data that contains new classes is being added to an initial discriminant eigenspace in the form ... -
Inductive vs transductive inference, global vs local models: SVM, TSVM, and SVMT for gene expression classification problems
(IEEE, 2004)This paper compares inductive-, versus transductive modeling, and also global-, versus local models with the use of SVM for gene expression classification problems. SVM are used in their three variants - inductive SVM, ... -
Integrated feature and parameter optimization for an evolving spiking neural network
(Springer, 2009)This study extends the recently proposed Evolving Spiking Neural Network (ESNN) architecture by combining it with an optimization algorithm, namely the Versatile Quantum-inspired Evolutionary Algorithm (vQEA). Following ... -
Integrated Gene Expression analysis of Multiple Microarray data sets based on a Normalization Technique and on Adaptive Connectionist model
(IEEE, 2003)Research with microarray gene expression analysis has primarily been on expression profiling based on one set of microarray data. This paper presents a novel approach to integrated analysis and modeling of microarray data ... -
Longitudinal Study of Alzheimer’s Disease Degeneration through EEG Data Analysis with aNeuCube Spiking Neural Network Model
(IEEE, 2016)Motivated by the dramatic rise of neurological disorders, we propose a SNN technique to model electroencephalography (EEG) data collected from people affected by Alzheimer’s Disease (AD) and people diagnosed with mild ... -
Machine Learning Methods for the Study of Cybersickness: A Systematic Review
(Springer, 2022)This systematic review offers a world-first critical analysis of machine learning methods and systems, along with future directions for the study of cybersickness induced by virtual reality (VR). VR is becoming increasingly ... -
Mapping temporal variables into the NeuCube for improved pattern recognition, predictive modeling, and understanding of stream data
(IEEE, 2016)This paper proposes a new method for an optimized mapping of temporal variables, describing a temporal stream data, into the recently proposed NeuCube spiking neural network (SNN) architecture. This optimized mapping extends ... -
Method for training a spiking neuron to associate input-output spike trains
(AUT University, 2011)We propose a novel supervised learning rule allowing the training of a precise input-output behavior to a spiking neuron. A single neuron can be trained to associate (map) different output spike trains to different multiple ... -
Mobile robot navigation - some issues in controller design and implementation
(IEEE Instrumentation and Measurement, Malaysia (IM), 2009) -
Modelling peri-perceptual brain processes in a deep learning spiking neural network architecture
(Macmillan Publishers Limited, 2018)Familiarity of marketing stimuli may affect consumer behaviour at a peri-perceptual processing level. The current study introduces a method for deep learning of electroencephalogram (EEG) data using a spiking neural network ... -
Modelling the effect of genes on the dynamics of probabilistic spiking neural networks for computational neurogenetic modelling
(AUT University, 2011)Computational neuro-genetic models (CNGM) combine two dynamic models – a gene regulatory network (GRN) model at a lower level, and a spiking neural network (SNN) model at a higher level to model the dynamic interaction ... -
Network-based method for inferring cancer progression at the pathway level from cross-sectional mutation data
(IEEE, 2016)Large-scale cancer genomics projects are providing a wealth of somatic mutation data from a large number of cancer patients. However, it is difficult to obtain several samples with a temporal order from one patient in ... -
Neural Systems for solving the inverse problem of recovering the Primary Signal Waveform in potential transformers
(IEEE, 2003)The inverse problem of recovering the potential transformer primary signal waveform using secondary signal waveform and information about the secondary load is solved here via two inverse neural network models. The first ... -
Neuro-, genetic-, and quantum inspired evolving intelligent systems
(IEEE, 2006)This paper discusses opportunities and challenges for the creation of evolving artificial neural network (ANN) and more general - computational intelligence (CI) models inspired by principles at different levels of information ... -
New Algorithms for Encoding, Learning and Classification of fMRI Data in a Dpiking Neural Network Architecture: A Case on Modelling and Understanding of Dynamic Cognitive
(IEEE, 2016)The paper argues that, the third generation of neural networks – the spiking neural networks (SNN), can be used to model dynamic, spatio-temporal, cognitive brain processes measured as functional magnetic resonance imaging ... -
NFI: a neuro-fuzzy inference method for transductive reasoning
(IEEE, 2005)This paper introduces a novel neural fuzzy inference method - NFI for transductive reasoning systems. NFI develops further some ideas from DENFIS - dynamic neuro-fuzzy inference systems for both online and offline time ... -
On-line evolving fuzzy clustering
(IEEE, 2007)In this paper, a novel on-line evolving fuzzy clustering method that extends the evolving clustering method (ECM) of Kasabov and Song (2002) is presented, called EFCM. Since it is an on-line algorithm, the fuzzy membership ... -
Optimisation and modelling of spiking neural networks - Enhancing neural information processing systems through the power of evolution
(LAP LAMBERT Academic Publishing, 2010)Motivated by the desire to better understand the truly remarkable information processing capabilities of the brain, numerous biologically plausible computational models have been explored in the recent decades. Already ...