BEAMES: Interactive Multi-Model Steering, Selection, and Inspection for Regression Tasks.

IEEE computer graphics and applications(2019)

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摘要
Interactive model steering helps people incrementally build machine learning models that are tailored to their domain and task. Existing visual analytic tools allow people to steer a single model (e.g., assignment attribute weights used by a dimension reduction model). However, the choice of model is critical in such situations. What if the model chosen is sub-optimal for the task, dataset, or question being asked What if instead of parameterizing and steering this model, a different model provides a better fit This paper presents a technique to allow users to inspect and steer multiple machine learning models. The technique steers and samples models from a broader set of learning algorithms and model types. We incorporate this technique into a visual analytic prototype, BEAMES, that allows users to perform regression tasks via multi-model steering. This paper demonstrates the effectiveness of BEAMES via a use case, and discusses broader implications for multi-model steering.
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关键词
Data models,Computational modeling,Analytical models,Task analysis,Visual analytics,Inspection,Machine learning
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