In order to model an efficient learning paradigm, iterative learning algorithms access data one by one, updating the current hypothesis without regress to past data. Past research on iterative learning analyzed for example many important additional requirements and their impact on iterative learners. In this paper, our results are twofold. First, we analyze the relative learning power of various settings of iterative learning, including learning from text and from informant, as well as various further restrictions, for example we show that strongly non-U-shaped learning is restrictive for iterative learning from informant. Second, we investigate the learnability of the concept class of half-spaces and provide a constructive iterative algorithm to learn the set of half-spaces from informant.
翻译:为了构建一个高效学习模式,迭代学习算法将一个接一个地访问数据,更新目前的假设,不倒退到过去的数据。以往的迭代学习研究分析了许多重要的额外要求及其对迭代学习者的影响。在本文件中,我们的结果是双重的。首先,我们分析了各种迭代学习环境的相对学习能力,包括从文字和线人那里学习,以及各种进一步的限制,例如,我们表明,强烈的非U形学习对线人进行迭代学习是限制性的。第二,我们调查半空概念类的可学习性,并提供建设性的迭代算法,以便从线人那里学习一套半空空间。