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arxiv: 1811.04548 · v1 · pith:XM2JAO3B · submitted 2018-11-12 · cs.LG · stat.ML

Recent Research Advances on Interactive Machine Learning

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classification cs.LG stat.ML
keywords recentlearningmachinefieldinteractiveresearchadvancesalthough
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Interactive Machine Learning (IML) is an iterative learning process that tightly couples a human with a machine learner, which is widely used by researchers and practitioners to effectively solve a wide variety of real-world application problems. Although recent years have witnessed the proliferation of IML in the field of visual analytics, most recent surveys either focus on a specific area of IML or aim to summarize a visualization field that is too generic for IML. In this paper, we systematically review the recent literature on IML and classify them into a task-oriented taxonomy built by us. We conclude the survey with a discussion of open challenges and research opportunities that we believe are inspiring for future work in IML.

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