4.5 Article

Improving pattern discovery and visualisation with self-adaptive neural networks through data transformations

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Publisher

SPRINGER HEIDELBERG
DOI: 10.1007/s13042-011-0050-z

Keywords

Self-adaptive neural networks; Pattern discovery and visualisation; Similarity measure; Chi-squares statistics

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The ability to reveal the relevant patterns in an intuitively attractive way through incremental learning makes self-adaptive neural networks (SANNs) a power tool to support pattern discovery and visualisation. Based on the combination of the information related to both the shape and magnitude of the data, this paper introduces a SANN, which implements new similarity matching criteria and error accumulation strategies for network growth. It was tested on two datasets including a real biological gene expression dataset. The results obtained have demonstrated several significant features exhibited by the proposed SANN model for improving pattern discovery and visualisation.

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