Discovering patterns of correlation and similarities in software project data with the Circos visualization tool

Computer Science – Software Engineering

Scientific paper

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4th Workshop on Intelligent Techniques in Software Engineering, 5 September 2011 at the European Conference on Machine Learnin

Scientific paper

Software cost estimation based on multivariate data from completed projects requires the building of efficient models. These models essentially describe relations in the data, either on the basis of correlations between variables or of similarities between the projects. The continuous growth of the amount of data gathered and the need to perform preliminary analysis in order to discover patterns able to drive the building of reasonable models, leads the researchers towards intelligent and time-saving tools which can effectively describe data and their relationships. The goal of this paper is to suggest an innovative visualization tool, widely used in bioinformatics, which represents relations in data in an aesthetic and intelligent way. In order to illustrate the capabilities of the tool, we use a well known dataset from software engineering projects.

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