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Learning without Coding

机译:无需编码即可学习

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Iterative learning is a model of language learning from positive data, due to Wiehagen. When compared to a learner in Gold's original model of language learning from positive data, an iterative learner can be thought of as memory-limited. However, an iterative learner can memorize some input elements by coding them into the syntax of its hypotheses. A main concern of this paper is: to what extent are such coding tricks necessary?One means of preventing some such coding tricks is to require that the hypothesis space used be free of redundancy, i.e., that it be 1-1. By extending a result of Lange & Zeugmann, we show that many interesting and non-trivial classes of languages can be iteratively identified in this manner. On the other hand, we show that there exists a class of languages that cannot be iteratively identified using any 1-1 effective numbering as the hypothesis space. We also consider an iterative-like learning model in which the computational component of the learner is modeled as an enumeration operator, as opposed to a partial computable function. In this new model, there are no hypotheses, and, thus, no syntax in which the learner can encode what elements it has or has not yet seen. We show that there exists a class of languages that can be identified under this new model, but that cannot be iteratively identified. On the other hand, we show that there exists a class of languages that cannot be identified under this new model, but that can be iteratively identified using a Friedberg numbering as the hypothesis space.
机译:由于维哈根,迭代学习是一种从积极数据中学习语言的模型。与Gold从原始数据进行语言学习的原始模型中的学习者相比,迭代学习者可以被认为是记忆受限的。但是,迭代学习者可以通过将一些输入元素编码为其假设的语法来记住这些输入元素。本文的主要关注点是:在何种程度上需要这种编码技巧?防止某些此类编码技巧的一种方法是要求所使用的假设空间没有冗余,即为1-1。通过扩展Lange&Zeugmann的结果,我们表明可以用这种方式迭代地识别许多有趣且不平凡的语言类。另一方面,我们表明存在一类无法使用任何1-1有效编号作为假设空间进行迭代识别的语言。我们还考虑了类似于迭代的学习模型,其中将学习者的计算组件建模为枚举运算符,而不是部分可计算的函数。在这个新模型中,没有假设,因此,没有语法可以让学习者对已拥有或尚未看到的元素进行编码。我们证明存在可以在此新模型下识别的一类语言,但不能迭代地识别。另一方面,我们表明存在一类无法在此新模型下识别的语言,但可以使用弗里德伯格编号作为假设空间来迭代识别。

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