Md Rakibul Islam
2017
Towards Problem Solving Agents that Communicate and Learn
Anjali Narayan-Chen
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Colin Graber
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Mayukh Das
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Md Rakibul Islam
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Soham Dan
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Sriraam Natarajan
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Janardhan Rao Doppa
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Julia Hockenmaier
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Martha Palmer
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Dan Roth
Proceedings of the First Workshop on Language Grounding for Robotics
Agents that communicate back and forth with humans to help them execute non-linguistic tasks are a long sought goal of AI. These agents need to translate between utterances and actionable meaning representations that can be interpreted by task-specific problem solvers in a context-dependent manner. They should also be able to learn such actionable interpretations for new predicates on the fly. We define an agent architecture for this scenario and present a series of experiments in the Blocks World domain that illustrate how our architecture supports language learning and problem solving in this domain.
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Co-authors
- Anjali Narayan-Chen 1
- Colin Graber 1
- Mayukh Das 1
- Soham Dan 1
- Sriraam Natarajan 1
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