Data analysis: models and alogrithms

Data analysis has many facets, ranging from statistics to engineering. In this paper basic models and algorithms for data analysis are discussed. Novel uses of cluster analysis, precedence analysis, and data mining methods are emphasized. The software for the cluster analysis algorithm and the triangularization is presented.

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