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Normal Forms in Semantic Language Identification

机译:语义语言识别中的范式

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We consider language learning in the limit from text where all learning restrictions are semantic, that is, where any conjecture may be replaced by a semantically equivalent conjecture. For different such learning criteria, starting with the well-known $mathbf{Txt}mathbf{G}mathbf{Bc}$-learning, we consider three different normal forms: strongly locking learning, consistent learning and (partially) set-driven learning. These normal forms support and simplify proofs and give insight into what behaviors are necessary for successful learning (for example when consistency in conservative learning implies cautiousness and strong decisiveness). We show that strongly locking learning can be assumed for partially set-driven learners, even when learning restrictions apply. We give a very general proof relying only on a natural property of the learning restriction, namely, allowing for simulation on equivalent text. Furthermore, when no restrictions apply, also the converse is true: every strongly locking learner can be made partially set-driven. For several semantic learning criteria we show that learning can be done consistently. Finally, we deduce for which learning restrictions partial set-drivenness and set-drivenness coincide, including a general statement about classes of infinite languages. The latter again relies on a simulation argument.
机译:在所有学习限制都是语义的情况下,即在任何猜想都可以被语义等效的猜想代替的情况下,我们认为语言学习是在文本的限制下进行的。对于不同的学习标准,从众所周知的$ mathbf {Txt} mathbf {G} mathbf {Bc} $-学习开始,我们考虑三种不同的正常形式:强锁定学习,一致学习和(部分)设置驱动的学习。这些范式支持并简化了证明,并深入了解了成功学习所必需的行为(例如,保守学习中的一致性意味着谨慎和强烈的决定性)。我们表明,即使适用学习限制,也可以为部分驱动的学习者假设强烈锁定学习。我们提供了一个非常一般的证明,仅依赖于学习限制的自然属性,即允许对等效文本进行模拟。此外,在没有限制的情况下,反之亦然:每个强锁定的学习者都可以被部分驱动。对于几种语义学习标准,我们表明学习可以一致地完成。最后,我们推论部分集合驱动性和集合驱动性对哪些学习限制是重合的,包括有关无限语言类的一般性说明。后者再次依赖于模拟参数。

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