BriefGPT.xyz
Mar, 2018
透明度设计:在视觉推理中弥合性能与可解释性之间的差距
Transparency by Design: Closing the Gap Between Performance and Interpretability in Visual Reasoning
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David Mascharka, Philip Tran, Ryan Soklaski, Arjun Majumdar
TL;DR
本文提出一种可视化推理基元的方法,将其组合成一种能够通过显式可解释的方式执行复杂推理任务的模型,并在CLEVR数据集上取得了99.1%的准确度,同时有效地学习了泛化表示。
Abstract
visual question answering
requires high-order reasoning about an image, which is a fundamental capability needed by machine systems to follow complex directives. Recently,
modular networks
have been shown to be a
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