Among the many possible approaches for the parallelization of self-organizing networks, and in particular of growing self-organizing networks, perhaps the most common one is producing an optimized, parallel implementation of the standard sequential algorithms reported in the literature. In this chapter we explore an alternative approach, based on a new algorithm variant specifically designed to match the features of the large-scale, fine-grained parallelism of GPUs, in which multiple input signals are processed at once. Comparative tests have been performed, using both parallel and sequential implementations of the new algorithm variant, in particular for a growing self-organizing network that reconstructs surfaces from point clouds. The ex...
The Graphics Processing Unit (GPU) parallel architecture is now being used not just for graphics but...
The identification of network motifs has important applications in numerous domains, such as pattern...
The article discusses possibilities of implementing a neural network in a parallel way. The issues o...
Self-organizing systems are characterized by an inherently local behavior, as their configuration is...
The capability for understanding data passes through the ability of producing an effective and fast ...
In this paper we introduce a MapReduce-based implementation of self-organizing maps that performs co...
In [1], we presented an asynchronous parallel algorithm for self-organizing maps based on a recently...
The research described in this thesis was motivated by the need of a robust model capable of represe...
Porrmann M, Witkowski U, Rückert U. A Massively Parallel Architecture for Self-Organizing Feature Ma...
A novel parallel algorithm is presented for generating random scale-free networks using the preferen...
Modern Graphics Processing Units (GPUs) provide high computation power at low costs and have been de...
This article presents parallel algorithms for component decomposition of graph structures on general...
Abstract—Graphs that model social networks, numerical sim-ulations, and the structure of the Interne...
Abstract: The amount of computation required to solve many early vision problems is prodigious, and ...
We are investigating novel architectures of self-organizing maps for pattern classification tasks. W...
The Graphics Processing Unit (GPU) parallel architecture is now being used not just for graphics but...
The identification of network motifs has important applications in numerous domains, such as pattern...
The article discusses possibilities of implementing a neural network in a parallel way. The issues o...
Self-organizing systems are characterized by an inherently local behavior, as their configuration is...
The capability for understanding data passes through the ability of producing an effective and fast ...
In this paper we introduce a MapReduce-based implementation of self-organizing maps that performs co...
In [1], we presented an asynchronous parallel algorithm for self-organizing maps based on a recently...
The research described in this thesis was motivated by the need of a robust model capable of represe...
Porrmann M, Witkowski U, Rückert U. A Massively Parallel Architecture for Self-Organizing Feature Ma...
A novel parallel algorithm is presented for generating random scale-free networks using the preferen...
Modern Graphics Processing Units (GPUs) provide high computation power at low costs and have been de...
This article presents parallel algorithms for component decomposition of graph structures on general...
Abstract—Graphs that model social networks, numerical sim-ulations, and the structure of the Interne...
Abstract: The amount of computation required to solve many early vision problems is prodigious, and ...
We are investigating novel architectures of self-organizing maps for pattern classification tasks. W...
The Graphics Processing Unit (GPU) parallel architecture is now being used not just for graphics but...
The identification of network motifs has important applications in numerous domains, such as pattern...
The article discusses possibilities of implementing a neural network in a parallel way. The issues o...