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Dynamical Integration of Language and Behavior in a Recurrent Neural Network for Human–Robot Interaction

机译:递归神经网络中人机交互的语言和行为动态集成

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To work cooperatively with humans by using language, robots must not only acquire a mapping between language and their behavior but also autonomously utilize the mapping in appropriate contexts of interactive tasks online. To this end, we propose a novel learning method linking language to robot behavior by means of a recurrent neural network. In this method, the network learns from correct examples of the imposed task that are given not as explicitly separated sets of language and behavior but as sequential data constructed from the actual temporal flow of the task. By doing this, the internal dynamics of the network models both language–behavior relationships and the temporal patterns of interaction. Here, “internal dynamics” refers to the time development of the system defined on the fixed-dimensional space of the internal states of the context layer. Thus, in the execution phase, by constantly representing where in the interaction context it is as its current state, the network autonomously switches between recognition and generation phases without any explicit signs and utilizes the acquired mapping in appropriate contexts. To evaluate our method, we conducted an experiment in which a robot generates appropriate behavior responding to a human’s linguistic instruction. After learning, the network actually formed the attractor structure representing both language–behavior relationships and the task’s temporal pattern in its internal dynamics. In the dynamics, language–behavior mapping was achieved by the branching structure. Repetition of human’s instruction and robot’s behavioral response was represented as the cyclic structure, and besides, waiting to a subsequent instruction was represented as the fixed-point attractor. Thanks to this structure, the robot was able to interact online with a human concerning the given task by autonomously switching phases.
机译:为了通过使用语言与人类合作,机器人不仅必须获得语言与其行为之间的映射,而且还必须在在线交互式任务的适当上下文中自主利用映射。为此,我们提出了一种通过递归神经网络将语言与机器人行为联系起来的新颖学习方法。在这种方法中,网络从强制任务的正确示例中学习,这些示例不是作为明确分离的语言和行为集而是作为根据任务的实际时间流构造的顺序数据给出的。通过这样做,网络的内部动力学可以建模语言-行为关系和交互的时间模式。在此,“内部动力学”是指在上下文层内部状态的固定维空间上定义的系统的时间发展。因此,在执行阶段,通过不断地将交互上下文表示为交互状态的当前状态,网络可以在识别和生成阶段之间自动切换,而无需任何明确的标志,并在适当的上下文中利用获取的映射。为了评估我们的方法,我们进行了一项实验,其中机器人会根据人类的语言指令生成适当的行为。学习后,网络实际上形成了吸引者结构,该结构既表示语言-行为关系,又表示任务内部动态中的时间模式。在动力学中,语言行为映射是通过分支结构实现的。重复人类的指令和机器人的行为反应被表示为循环结构,此外,将等待下一条指令的等待者表示为定点吸引子。由于这种结构,该机器人能够通过自动切换阶段与人进行与给定任务有关的在线交互。

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