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      Guided Visual Exploration of Relations in Data Sets

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          Abstract

          Efficient explorative data analysis systems must take into account both what a user knows and wants to know. This paper proposes a principled framework for interactive visual exploration of relations in data, through views most informative given the user's current knowledge and objectives. The user can input pre-existing knowledge of relations in the data and also formulate specific exploration interests, then taken into account in the exploration. The idea is to steer the exploration process towards the interests of the user, instead of showing uninteresting or already known relations. The user's knowledge is modelled by a distribution over data sets parametrised by subsets of rows and columns of data, called tile constraints. We provide a computationally efficient implementation of this concept based on constrained randomisation. Furthermore, we describe a novel dimensionality reduction method for finding the views most informative to the user, which at the limit of no background knowledge and with generic objectives reduces to PCA. We show that the method is suitable for interactive use and robust to noise, outperforms standard projection pursuit visualisation methods, and gives understandable and useful results in analysis of real-world data. We have released an open-source implementation of the framework.

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            Author and article information

            Journal
            07 May 2019
            Article
            1905.02515
            35d0d5e2-fd5d-4ff5-99aa-aa8dbef4930c

            http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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            Custom metadata
            30 pages, 13 figures. arXiv admin note: substantial text overlap with arXiv:1805.07725
            stat.ML cs.LG

            Machine learning,Artificial intelligence
            Machine learning, Artificial intelligence

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