We extend the Kearns-Vazirani learning algorithm to be able to handle systems that change over time. We present a new learning algorithm that can reuse and update previously learned behavior, implement it in the LearnLib library, and evaluate it on large examples, to which we make small adjustments between two runs of the algorithm. In these experiments our algorithm significantly outperforms both the classic Kearns-Vazirani learning algorithm and the current state-of-the-art adaptive algorithm.
翻译:我们将Kearns-Vazirani学习算法推广到能够处理随着时间推移而变化的系统。我们提出了一个新的学习算法,可以重新使用和更新先前学到的行为,在Lib 图书馆中实施,并用大的例子来评估,我们在两个算法运行之间做了小的调整。 在这些实验中,我们的算法大大优于经典的Kearns-Vazirani学习算法和当前最先进的适应算法。