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SDBM: Supervised Decision Boundary Maps for Machine Learning Classifiers

Artur André Almeida de Macedo Oliveira, Mateus Espadoto, Roberto Hirata, Alexandru Telea

2022Proceedings of the 17th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications14 citationsDOIOpen Access PDF

Abstract

Understanding the decision boundaries of a machine learning classifier is key to gain insight on how classifiers work. Recently, a technique called Decision Boundary Map (DBM) was developed to enable the visualization of such boundaries by leveraging direct and inverse projections. However, DBM have scalability issues for creating fine-grained maps, and can generate results that are hard to interpret when the classification problem has many classes. In this paper we propose a new technique called Supervised Decision Boundary Maps (SDBM), which uses a supervised, GPU-accelerated projection technique that solves the original DBM shortcomings. We show through several experiments that SDBM generates results that are much easier to interpret when compared to DBM, is faster and easier to use, while still being generic enough to be used with any type of single-output classifier

Topics & Concepts

Computer scienceArtificial intelligenceMachine learningDecision boundarySupervised learningBoundary (topology)Pattern recognition (psychology)Support vector machineMathematicsArtificial neural networkMathematical analysisAnomaly Detection Techniques and ApplicationsMachine Learning and Data ClassificationNeural Networks and Applications
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