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Avoiding Chatter in an Online Co-Learning Algorithm Predicting Human Intention

机译:在预测人类意图的在线共同学习算法中避免喋喋不休

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Chatter can happen when an online learning algorithm is used by a robot to predict human intention while interacting with a human subject. When chatter happens, the learning algorithm continually changes its prediction, without reaching a constant prediction of human intention. Using the Rescorla-Wagner model for human learning, we analyze an expert based online learning algorithm and identify an invariant set in the state and parameter space where chatter will occur. Based on the chatter analysis, we also propose an improved expert based learning algorithm where the invariant set does not exist so that chatter can be avoided.
机译:当机器人使用在线学习算法时,可以发生喋喋不休,以预测与人类主题交互的同时预测人类意图。当发生颤动时,学习算法不断改变其预测,而不达到人类意图的持续预测。使用Rescorla-Wagner模型进行人类学习,我们分析了基于专家的在线学习算法,并确定了将发生喋喋不休的状态和参数空间中的不变集。基于颤振分析,我们还提出了一种改进的基于专家的学习算法,其中不变集不存在,从而可以避免喋喋不休。

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