Human-guided data exploration using randomisation
Kai Puolam\"aki, Emilia Oikarinen, Buse Atli, Andreas Henelius

TL;DR
This paper introduces a human-guided data exploration framework that models user knowledge with tiles and employs a novel linear projection pursuit method, enhancing interpretability and efficiency in interactive data analysis.
Contribution
It presents a new approach combining background knowledge modeling with constrained randomisation and a linear projection pursuit method, improving interactive data exploration.
Findings
Method is robust under noise.
Faster than standard projection pursuit methods.
Produces understandable results on real-world data.
Abstract
An explorative data analysis system should be aware of what the user already knows and what the user wants to know of the data: otherwise the system cannot provide the user with the most informative and useful views of the data. We propose a principled way to do exploratory data analysis, where the user's background knowledge is modeled by a distribution parametrised by subsets of rows and columns in the data, called tiles. The user can also use tiles to describe his or her interests concerning relations in the data. We provide a computationally efficient implementation of this concept based on constrained randomisation. The implementation is used to model both the background knowledge and the user's information request and is a necessary prerequisite for any interactive system. Furthermore, we describe a novel linear projection pursuit method to find and show the views most informative…
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Taxonomy
TopicsData Visualization and Analytics · Video Analysis and Summarization · Anomaly Detection Techniques and Applications
