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Combining Models of Approximation with Partial Learning

机译:近似模型与部分学习的组合

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In Gold's framework of inductive inference, the model of partial learning requires the learner to output exactly one correct index for the target object and only the target object infinitely often. Since infinitely many of the learner's hypotheses may be incorrect, it is not obvious whether a partial learner can be modified to "approximate" the target object. Fulk and Jain (Approximate inference and scientific method. Information and Computation 114(2):179-191, 1994) introduced a model of approximate learning of recursive functions. The present work extends their research and solves an open problem of Fulk and Jain by showing that there is a learner which approximates and partially identifies every recursive function by outputting a sequence of hypotheses which, in addition, are also almost all finite variants of the target function. The subsequent study is dedicated to the question how these findings generalise to the learning of r.e. languages from positive data. Here three variants of approximate learning will be introduced and investigated with respect to the question whether they can be combined with partial learning. Following the line of Fulk and Jain's research, further investigations provide conditions under which partial language learners can eventually output only finite variants of the target language.
机译:在Gold的归纳推理框架中,部分学习模型要求学习者为目标对象准确地输出一个正确的索引,并且经常无限次地仅输出目标对象。由于无限多的学习者假设可能是不正确的,因此是否可以修改部分学习者以“接近”目标对象这一点并不明显。 Fulk和Jain(近似推理和科学方法。Informationand Computation 114(2):179-191,1994)介绍了递归函数的近似学习模型。当前的工作扩展了他们的研究,并通过显示有一个学习者通过输出一系列假设来近似和部分识别每个递归函数,从而解决了Fulk和Jain的开放问题,此外,这些假设还几乎是目标的所有有限变体功能。随后的研究致力于研究这些发现如何推广到r.e.来自积极数据的语言。在此,将针对近似学习的三个变体进行介绍,并针对它们是否可以与部分学习结合的问题进行研究。遵循Fulk和Jain的研究思路,进一步的研究为部分语言学习者最终只能输出目标语言的有限变体提供了条件。

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