一种有效的基于语言模型的可视化和解释算法

Jacob Arkin, Siddharth Patki, J. Rosser, T. Howard
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引用次数: 0

摘要

当代的基础语言交际方法接受话语和当前世界表征作为输入,并产生代表意义的符号作为输出。由于人机交互的现代语言理解方法使用植根于机器学习的技术,因此相对于输入的微小变化,解决方案的质量或灵敏度通常是不透明的。虽然可以对大量输入的解决方案进行采样和可视化,但naïve当前技术的应用对于实时反馈来说往往过于昂贵。在本文中,我们通过重新制定分布式对应图的推理过程来解决这个问题,以便在采样环境模型的空间上仅重新计算空间相关组成特征的子集。我们在涉及桌面机器人操作场景的物理实验中定量评估推理速度。我们展示了可视化环境配置的能力,其中符号接地实时产生一致的解决方案,并说明如何使用这些技术来识别和修复训练数据中的差距或不准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Algorithm for Visualization and Interpretation of Grounded Language Models
Contemporary approaches to grounded language communication accept an utterance and current world representation as input and produce symbols representing the meaning as output. Since modern approaches to language understanding for human-robot interaction use techniques rooted in machine learning, the quality or sensitivity of the solution is often opaque relative to small changes in input. Although it is possible to sample and visualize solutions over a large space of inputs, naïve application of current techniques is often prohibitively expensive for real-time feedback. In this paper we address this problem by reformulating the inference process of Distributed Correspondence Graphs to only recompute subsets of spatially dependent constituent features over a space of sampled environment models. We quantitatively evaluate the speed of inference in physical experiments involving a tabletop robot manipulation scenario. We demonstrate the ability to visualize configurations of the environment where symbol grounding produces consistent solutions in real-time and illustrate how these techniques can be used to identify and repair gaps or inaccuracies in training data.
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