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From Language to Motor Gavagai: Unified Imitation Learning of Multiple Linguistic and Nonlinguistic Sensorimotor Skills

机译:从语言到马达加瓦加语:多种语言和非语言感觉运动技能的统一模仿学习

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摘要

We identify a strong structural similarity between the Gavagai problem in language acquisition and the problem of imitation learning of multiple context-dependent sensorimotor skills from human teachers. In both cases, a learner has to resolve concurrently multiple types of ambiguities while learning how to act in response to particular contexts through the observation of a teacher’s demonstrations. We argue that computational models of language acquisition and models of motor skill learning by demonstration have so far only considered distinct subsets of these types of ambiguities, leading to the use of distinct families of techniques across two loosely connected research domains. We present a computational model, mixing concepts and techniques from these two domains, involving a simulated robot learner interacting with a human teacher. Proof-of-concept experiments show that: 1) it is possible to consider simultaneously a larger set of ambiguities than considered so far in either domain; and 2) this allows us to model important aspects of language acquisition and motor learning within a single process that does not initially separate what is “linguistic” from what is “nonlinguistic.” Rather, the model shows that a general form of imitation learning can allow a learner to discover channels of communication used by an ambiguous teacher, thus addressing a form of abstract Gavagai problem (ambiguity about which observed behavior is “linguistic”, and in that case which modality is communicative).
机译:我们发现在语言习得中的加瓦加语问题与人类教师的多种情境相关的感觉运动技能的模仿学习问题之间存在强烈的结构相似性。在这两种情况下,学习者必须同时解决多种类型的歧义,同时通过观察老师的示范学习如何应对特定的情境。我们认为,语言习得的计算模型和通过演示的运动技能学习模型到目前为止仅考虑了这些歧义类型的不同子集,从而导致在两个松散连接的研究领域中使用了不同的技术族。我们提出了一个计算模型,将来自这两个领域的概念和技术进行了混合,其中包括模拟的机器人学习者与人类老师的互动。概念验证实验表明:1)可以同时考虑比迄今为止在任何一个域中都考虑的更大的歧义集;和2)这使我们能够在单个过程中对语言习得和运动学习的重要方面进行建模,而该过程最初不会将“语言”和“非语言”区分开。而是,该模型表明,模仿学习的一般形式可以使学习者发现模棱两可的老师所使用的交流渠道,从而解决了一种抽象的Gavagai问题(关于观察到的行为是“语言”的歧义,在这种情况下哪种方式可以交流)。

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