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Learning Multiple Languages in Groups

机译:在组中学习多种语言

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摘要

We consider a variant of Gold's learning paradigm where a learner receives as input n different languages (in form of one text where all input languages are interleaved). Our goal is to explore the situation when a more "coarse" classification of input languages is possible, whereas more refined classification is not. More specifically, we answer the following question: under which conditions, a learner, being fed n different languages, can produce m grammars covering all input languages, but cannot produce k grammars covering input languages for any k > m. We also consider a variant of this task, where each of the output grammars may not cover more than r input languages. Our main results indicate that the major factor affecting classification capabilities is the difference n — m between the number n of input languages and the number m of output grammars. We also explore relationship between classification capabilities for smaller and larger groups of input languages. For the variant of our model with the upper bound on the number of languages allowed to be represented by one output grammar, for classes consisting of disjoint languages, we found complete picture of relationship between classification capabilities for different parameters n (the number of input languages), m (number of output grammars), and r (bound on the number of languages represented by each output grammar). This picture includes a combinatorial characterization of classification capabilities for the parameters n, m, r of certain types.
机译:我们考虑了金的一个变体的学习范式,其中学习者接收为输入n不同的语言(以所有输入语言交错的文本的形式)。我们的目标是探讨进一步的输入语言的“粗糙”分类时的情况,而更精细的分类不是。更具体地说,我们回答以下问题:在哪个条件下,学习者是一种不同语言,可以产生覆盖所有输入语言的M语法,但不能为任何k> m产生涵盖输入语言的语法。我们还考虑此任务的变体,其中每个输出语法可能无法涵盖超过R输入语言。我们的主要结果表明,影响分类能力的主要因素是输入语言数量N和输出语法的数量M之间的差异n - m。我们还探讨了较小和更大组输入语言的分类功能之间的关系。对于我们的模型的变体与允许的语言数量的上限由一个输出语法表示,对于由不相交的语言组成的类,我们发现了对不同参数n的分类功能之间的关系的完整图片(输入语言的数量),m(输出语法的数量),和r(绑定每个输出语法表示的语言数量)。该图片包括用于某些类型的参数n,m,r的分类能力的组合特征。

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