acl acl2010 acl2010-168 acl2010-168-reference knowledge-graph by maker-knowledge-mining

168 acl-2010-Learning to Follow Navigational Directions


Source: pdf

Author: Adam Vogel ; Dan Jurafsky

Abstract: We present a system that learns to follow navigational natural language directions. Where traditional models learn from linguistic annotation or word distributions, our approach is grounded in the world, learning by apprenticeship from routes through a map paired with English descriptions. Lacking an explicit alignment between the text and the reference path makes it difficult to determine what portions of the language describe which aspects of the route. We learn this correspondence with a reinforcement learning algorithm, using the deviation of the route we follow from the intended path as a reward signal. We demonstrate that our system successfully grounds the meaning of spatial terms like above and south into geometric properties of paths.


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