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Visualizing proportions and dissimilarities by Space-filling maps: A Large Neighborhood Search approach
Affiliation:1. Institute of Systems Analysis and Computer Science, National Research Council, Via dei Taurini 19, Rome, 00185 Italy;2. Department of Mathematics and Applications “R. Caccioppoli”, University of Napoli Federico II, Compl. MSA, Via Cintia, Napoli, 80126 Italy;3. Department of Computer, Control and Management Engineering, Sapienza University, Via Ariosto, 25, Rome, 00185 Italy;4. Department of Engineering, Uninettuno International University, Corso Vittorio Emanuele II, 39, Rome, 00186 Italy;1. Université Libre de Bruxelles, Belgium;2. IMUS, Universidad de Sevilla, Spain;1. Department of Economics and Statistics, University of Naples Federico II, Via Cinthia, 80126 Naples, Italy;2. Faculté des Sciences Sociales, Université de Liège, Place des Orateurs 3, 4000 Liège, Belgium;3. Department of Industrial Engineering, University of Naples Federico II, Piazzale Tecchio, 80125 Naples, Italy
Abstract:In this paper we address the problem of visualizing a set of individuals, which have attached a statistical value given as a proportion, and a dissimilarity measure. Each individual is represented as a region within the unit square, in such a way that the area of the regions represent the proportions and the distances between them represent the dissimilarities. To enhance the interpretability of the representation, the regions are required to satisfy two properties. First, they must form a partition of the unit square, namely, the portions in which it is divided must cover its area without overlapping. Second, the portions must be made of a connected union of rectangles which verify the so-called box-connectivity constraints, yielding a visualization map called Space-filling Box-connected Map (SBM). The construction of an SBM is formally stated as a mathematical optimization problem, which is solved heuristically by using the Large Neighborhood Search technique. The methodology proposed in this paper is applied to three real-world datasets: the first one concerning financial markets in Europe and Asia, the second one about the letters in the English alphabet, and finally the provinces of The Netherlands as a geographical application.
Keywords:Data Visualization  Box-connectivity  Proportions  Dissimilarities  Large Neighborhood Search
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