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Learning Recursive Functions Refutably

机译:可靠地学习递归函数

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Learning of recursive functions refutably means that for every recursive function, the learning machine has either to learn this function or to refute it, i.e., to signal that it is not able to learn it. Three modi of making precise the notion of refuting are considered. We show that the corresponding types of learning refutably are of strictly increasing power, where already the most stringent of them turns out to be of remarkable topological and algorithmical richness. All these types are closed under union, though in different strengths. Also, these types are shown to be different with respect to their intrinsic complexity; two of them do not contain function classes that are "most difficult" to learn, while the third one does. Moreover, we present characterizations for these types of learning refutably. Some of these characterizations make clear where the refuting ability of the corresponding learning machines comes from and how it can be realized, in general. For learning with anomalies refutably, we show that several results from standard learning without refutation stand refutably. Then we derive hierarchies for refutable learning. Finally, we show that stricter refutability constraints cannot be traded for more liberal learning criteria.
机译:可辩驳地学习递归函数意味着对于每个递归函数,学习机必须学习或拒绝该函数,即表示它不能学习。提出了三种精确驳斥概念的方法。我们证明,相应的学习类型具有严格的增强功能,其中最严格的已经证明是具有显着的拓扑和算法丰富性。所有这些类型在联合中都是封闭的,尽管有不同的优势。同样,这些类型的内在复杂性也有所不同。其中两个没有包含“最难”学习的函数类,而第三个没有。此外,我们对这些类型的学习进行了有力的描述。通常,这些特征中的一些特征清楚了相应学习机的反驳能力来自何处以及如何实现。对于具有反驳性的异常学习,我们证明了没有反驳性的标准学习的一些结果具有反驳性。然后,我们得出可重复学习的层次结构。最后,我们表明不能将更严格的可拒绝性约束换成更宽松的学习标准。

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