Visualizing RNN States with Predictive Semantic Encodings

Lindsey Sawatzky, S. Bergner, F. Popowich
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引用次数: 5

Abstract

Recurrent Neural Networks are an effective and prevalent tool used to model sequential data such as natural language text. However, their deep nature and massive number of parameters pose a challenge for those intending to study precisely how they work. We present a visual technique that gives a high level intuition behind the semantics of the hidden states within Recurrent Neural Networks. This semantic encoding allows for hidden states to be compared throughout the model independent of their internal details. The proposed technique is displayed in a proof of concept visualization tool which is demonstrated to visualize the natural language processing task of language modelling.
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用预测语义编码可视化RNN状态
递归神经网络是一种有效且流行的工具,用于对序列数据(如自然语言文本)进行建模。然而,它们的深层性质和大量参数对那些打算精确研究它们如何工作的人构成了挑战。我们提出了一种视觉技术,它在递归神经网络中隐藏状态的语义背后提供了高层次的直觉。这种语义编码允许对整个模型中的隐藏状态进行独立于其内部细节的比较。提出的技术以概念证明可视化工具的形式展示,该工具演示了可视化语言建模的自然语言处理任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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