This letter proposes to use multiorder neurons for clustering irregularly shaped data arrangements. Multiorder neurons are an evolutionary extension of the use of higher-order neurons in clustering. Higher-order neurons parametrically model complex neuron shapes by replacing the classic synaptic weight by higher-order tensors. The multiorder neuron goes one step further and eliminates two problems associated with higher-order neurons. First, it uses evolutionary algorithms to select the best neuron order for a given problem. Second, it obtains more information about the underlying data distribution by identifying the correct order for a given cluster of patterns. Empirically we observed that when the correlation of clusters found with groun...
Original article can be found at: http://ieeexplore.ieee.org/xpl/RecentCon.jsp?punumber=9314Evolutio...
This thesis focuses on the development of new batch/online learning algorithms for evolving spiking ...
The structure and performance of neural networks are intimately connected, and by use of evolutionar...
Self-organizing map has been applied to a variety of tasks including data visualization and clusteri...
Are single neocortical neurons as powerful as multi-layered networks? A recent compartmental modeli...
Are single neocortical neurons as powerful as multi-layered networks? A recent compartmental modelin...
The topic of this dissertation is the study of the emergence of higher-order correlations in recurre...
Cluster analysis can be broadly divided into multivariate data visualization, clustering algorithms,...
We present alternative algorithms that avoid the combinatorial explosion problem, and that emerge ro...
Spiking neural networks aspire to mimic the brain more closely than traditional artificial neural ne...
As more and more neuroanatomical data are made available through efforts such as NeuroMorpho.Org and...
Simultaneous recordings from multiple neural units allow us to investigate the activity of very lar...
We propose a hierarchical clustering algorithm (TreeGCS) based upon the Growing Cell Structure (GCS)...
The competitive learning is an adaptive process in which the neurons in a neural network gradually b...
Part 2: AlgorithmsInternational audienceThe paper deals with the high dimensional data clustering pr...
Original article can be found at: http://ieeexplore.ieee.org/xpl/RecentCon.jsp?punumber=9314Evolutio...
This thesis focuses on the development of new batch/online learning algorithms for evolving spiking ...
The structure and performance of neural networks are intimately connected, and by use of evolutionar...
Self-organizing map has been applied to a variety of tasks including data visualization and clusteri...
Are single neocortical neurons as powerful as multi-layered networks? A recent compartmental modeli...
Are single neocortical neurons as powerful as multi-layered networks? A recent compartmental modelin...
The topic of this dissertation is the study of the emergence of higher-order correlations in recurre...
Cluster analysis can be broadly divided into multivariate data visualization, clustering algorithms,...
We present alternative algorithms that avoid the combinatorial explosion problem, and that emerge ro...
Spiking neural networks aspire to mimic the brain more closely than traditional artificial neural ne...
As more and more neuroanatomical data are made available through efforts such as NeuroMorpho.Org and...
Simultaneous recordings from multiple neural units allow us to investigate the activity of very lar...
We propose a hierarchical clustering algorithm (TreeGCS) based upon the Growing Cell Structure (GCS)...
The competitive learning is an adaptive process in which the neurons in a neural network gradually b...
Part 2: AlgorithmsInternational audienceThe paper deals with the high dimensional data clustering pr...
Original article can be found at: http://ieeexplore.ieee.org/xpl/RecentCon.jsp?punumber=9314Evolutio...
This thesis focuses on the development of new batch/online learning algorithms for evolving spiking ...
The structure and performance of neural networks are intimately connected, and by use of evolutionar...