基于诱导模型稀疏性的基础语言学习中的组合泛化

Sam Spilsbury, A. Ilin
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引用次数: 4

摘要

我们提供了一个关于诱导模型稀疏性如何帮助在基础语言学习问题中实现组合泛化和更好的样本效率的研究。我们考虑简单的语言条件下的导航问题,在网格世界环境与解纠缠的观察。我们表明标准的神经结构并不总是产生组合泛化。为了解决这个问题,我们设计了一个包含目标识别模块的代理,该模块鼓励指令中的单词和对象属性之间的稀疏关联,将它们组合在一起以找到目标。目标识别模块的输出是值迭代网络规划器的输入。即使从少量演示中学习,我们的智能体在包含新属性组合的目标上也能保持高水平的性能。我们检查代理的内部表示,并找到其字典中的单词与环境中的属性之间的正确对应关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compositional Generalization in Grounded Language Learning via Induced Model Sparsity
We provide a study of how induced model sparsity can help achieve compositional generalization and better sample efficiency in grounded language learning problems. We consider simple language-conditioned navigation problems in a grid world environment with disentangled observations. We show that standard neural architectures do not always yield compositional generalization. To address this, we design an agent that contains a goal identification module that encourages sparse correlations between words in the instruction and attributes of objects, composing them together to find the goal. The output of the goal identification module is the input to a value iteration network planner. Our agent maintains a high level of performance on goals containing novel combinations of properties even when learning from a handful of demonstrations. We examine the internal representations of our agent and find the correct correspondences between words in its dictionary and attributes in the environment.
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