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Task-Based Visual Interactive Modeling: Decision Trees and Rule-Based Classifiers

Dirk Streeb, Yannick Metz, Udo Schlegel, B. Schneider, Mennatallah El‐Assady, Hansjörg Neth, Min Chen, Daniel A. Keim

2021IEEE Transactions on Visualization and Computer Graphics38 citationsDOIOpen Access PDF

Abstract

Visual analytics enables the coupling of machine learning models and humans in a tightly integrated workflow, addressing various analysis tasks. Each task poses distinct demands to analysts and decision-makers. In this survey, we focus on one canonical technique for rule-based classification, namely decision tree classifiers. We provide an overview of available visualizations for decision trees with a focus on how visualizations differ with respect to 16 tasks. Further, we investigate the types of visual designs employed, and the quality measures presented. We find that (i) interactive visual analytics systems for classifier development offer a variety of visual designs, (ii) utilization tasks are sparsely covered, (iii) beyond classifier development, node-link diagrams are omnipresent, (iv) even systems designed for machine learning experts rarely feature visual representations of quality measures other than accuracy. In conclusion, we see a potential for integrating algorithmic techniques, mathematical quality measures, and tailored interactive visualizations to enable human experts to utilize their knowledge more effectively.

Topics & Concepts

Computer scienceVisual analyticsDecision treeMachine learningWorkflowVisualizationArtificial intelligenceDecision tree learningClassifier (UML)AnalyticsInteractive visual analysisHuman–computer interactionData visualizationData scienceDatabaseData Visualization and AnalyticsExplainable Artificial Intelligence (XAI)Data Analysis with R
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