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OoDAnalyzer: Interactive Analysis of Out-of-Distribution Samples

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arxiv 2002.03103 v1 pith:IKKB5JBR submitted 2020-02-08 cs.HC cs.LG

OoDAnalyzer: Interactive Analysis of Out-of-Distribution Samples

classification cs.HC cs.LG
keywords samplesalgorithmlayoutoodanalyzeranalysisapproachcomplexitycontext
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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One major cause of performance degradation in predictive models is that the test samples are not well covered by the training data. Such not well-represented samples are called OoD samples. In this paper, we propose OoDAnalyzer, a visual analysis approach for interactively identifying OoD samples and explaining them in context. Our approach integrates an ensemble OoD detection method and a grid-based visualization. The detection method is improved from deep ensembles by combining more features with algorithms in the same family. To better analyze and understand the OoD samples in context, we have developed a novel kNN-based grid layout algorithm motivated by Hall's theorem. The algorithm approximates the optimal layout and has $O(kN^2)$ time complexity, faster than the grid layout algorithm with overall best performance but $O(N^3)$ time complexity. Quantitative evaluation and case studies were performed on several datasets to demonstrate the effectiveness and usefulness of OoDAnalyzer.

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