Cross-situational and supervised learning in the emergence of communication

J. Fontanari, A. Cangelosi
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引用次数: 10

Abstract

Scenarios for the emergence or bootstrap of a lexicon involve the repeated interaction between at least two agents who must reach a consensus on how to name N objects using H words. Here we consider minimal models of two types of learning algorithms: cross-situational learning, in which the individuals determine the meaning of a word by looking for something in common across all observed uses of that word, and supervised operant conditioning learning, in which there is strong feedback between individuals about the intended meaning of the words. Despite the stark differences between these learning schemes, we show that they yield the same communication accuracy in the realistic limits of large N and H, which coincides with the result of the classical occupancy problem of randomly assigning N objects to H words.
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交际出现中的跨情境和监督学习
词汇出现或引导的场景涉及至少两个代理之间的重复交互,这些代理必须就如何使用H个单词命名N个对象达成共识。在这里,我们考虑了两种学习算法的最小模型:跨情境学习,在这种学习中,个体通过在所有观察到的单词的使用中寻找共同点来确定单词的含义;监督操作条件反射学习,在这种学习中,个体之间对单词的预期含义有强烈的反馈。尽管这些学习方案之间存在明显差异,但我们表明,它们在大N和H的实际限制下产生相同的通信精度,这与随机分配N个对象给H个单词的经典占用问题的结果一致。
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