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Friday, May 10, 2019

Self Organizing Maps (SOM) Research Paper Example | Topics and Well Written Essays - 2750 words

Self Organizing Maps (SOM) - query Paper ExampleThe performance of ANNs is better than that of traditional methods of problem solving. This enhances a comprehensive understanding of the serviceman cognitive abilities. From the available learning algorithms and skittish entanglement architectures, the SOM forms the most popular SOM. They accustom entropy visualisation techniques by Teuvo Kohonen to reduce data dimension using self-organizing neural networks. The data visualization problems attempt to make do problems that are beyond human visualization for high dimensional data. SOMs act as a non-parametric network block uping combination of data spatialization and abstraction, hence uptaked in visual clustering. SOM is among the most popular methods of neural networks for use in cluster analysis. This occurs due to topology preserving and self organizing nature for SOM. The SOMs act as abstract position for topographic social occasion. Modeling and analysis of mapping en hance understanding of perception, encoding, course credit and processes received and beneficial to the machine-based recognition of the patterns SOM possess prominent visualization properties. Developed from the associative memory model, SOM uses unsupervised learning algorithm characterized by simple computational form and structure enhanced by the retina-cortex mapping. The self-organization nature act as a fundamental process of pattern recognition, and allows learning the intra- and inter-pattern relationships for the stimuli without potential bias. SOM may provide the topologically preserved mapping to all the output spaces from remark. Though the computational form proves to be simple, most aspects related to the algorithm moldiness be investigated (Zhang et al 2010, p. 6359). 2.0 Basic principles of SOM The Kohonen self-organizing map encompasses a neural network, and various characteristics similar to the working of the human brain. Basically, SOM avails some classificato ry resources that are organized based on patterns available for classification. The single layer of the neural network consists of neurons at heart n-dimensional grid. The grids allow the definition for the neighborhoods in the output space rather than the input space. The input and output spaces constitute the main SOM. This can also be performed through the use of tools that map vectors within the input space to output the space that preserves topological relations in the output space (Yang et al 2012, p.1371). SOM use unsupervised competitive learning and attempts to conform to the available input data. The SOM nodes act as inputs and contain some principle SOM features. Topological relationship between inputs is preserved after mapping into the SOM network. This pragmatically represents the complex data. SOMs use vector quantization in data compression processes. The SOMs offer an appropriate means of representing the multi-dimensional data in the lower dimensional space using one or two dimensions. This enhances visualization and understanding of data in low dimensions. Therefore, SOMs facilitates manipulation of complex data, especially in visualization of large quantities of data in an

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