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Robotic machine learning of anaphora

机译:回指的机器人机器学习

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Our contribution tackles the problem of learning to understand anaphoric references in the context of robotic machine learning; e.g. Get the large screw. Put it in the left hole. Our solution assumes the probabilistic theory of learning spelt out in earlier publications. Associations are formed probabilistically between constituents of the verbal command and constituents of a presupposed internal representation. The theory is extended, as a first step, to anaphora by learning how to distinguish between incorrect surface depth and the correct tree-structure depth of the anaphoric references.
机译:我们的贡献解决了机器人机器学习中学习理解照应性引用的问题。例如获取大螺丝。将其放在左孔中。我们的解决方案假定了早期出版物中阐明的概率学习理论。联想是在口头命令的组成部分与预设的内部表示的组成部分之间概率性地形成的。作为第一步,该理论通过学习如何区分不正确的表面深度和正确的照应参考树结构深度来扩展到照应。

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