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Visually Analyzing and Steering Zero Shot Learning

机译:视觉分析和转向零射击学习

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We propose a visual analytics system to help a user analyze and steer zero-shot learning models. Zero-shot learning has emerged as a viable scenario for categorizing data that consists of no labeled examples, and thus a promising approach to minimize data annotation from humans. However, it is challenging to understand where zero-shot learning fails, the cause of such failures, and how a user can modify the model to prevent such failures. Our visualization system is designed to help users diagnose and understand mispredictions in such models, so that they may gain insight on the behavior of a model when applied to data associated with categories not seen during training. Through usage scenarios, we highlight how our system can help a user improve performance in zero-shot learning.
机译:我们提出了一种视觉分析系统,以帮助用户分析和转向零射击学习模型。零拍学习已成为一个可行的方案,用于分类由没有标记的示例组成的数据,因此是最小化人类的数据注释的有希望的方法。然而,了解零射击学习失败的原因是一项挑战性,以及用户如何修改模型以防止这种失败。我们的可视化系统旨在帮助用户在此类模型中诊断和理解错误预测,以便在应用于与在训练期间未见的类别相关联的数据时,它们可能会深入了解模型的行为。通过使用场景,我们突出了我们的系统如何帮助用户提高零射击学习的性能。

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