Learning Probabilistic Systems from Tree Samples

Anvesh Komuravelli, C. Pasareanu, E. Clarke
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引用次数: 20

Abstract

We consider the problem of learning a non-deterministic probabilistic system consistent with a given finite set of positive and negative tree samples. Consistency is defined with respect to strong simulation conformance. We propose learning algorithms that use traditional and a new stochastic state-space partitioning, the latter resulting in the minimum number of states. We then use them to solve the problem of active learning, that uses a knowledgeable teacher to generate samples as counterexamples to simulation equivalence queries. We show that the problem is undecidable in general, but that it becomes decidable under a suitable condition on the teacher which comes naturally from the way samples are generated from failed simulation checks. The latter problem is shown to be undecidable if we impose an additional condition on the learner to always conjecture a minimum state hypothesis. We therefore propose a semi-algorithm using stochastic partitions. Finally, we apply the proposed (semi-) algorithms to infer intermediate assumptions in an automated assume-guarantee verification framework for probabilistic systems.
从树样本中学习概率系统
我们考虑了一个非确定性概率系统的学习问题,该系统具有给定的有限的正负树样本集。一致性是根据强仿真一致性定义的。我们提出了使用传统和一种新的随机状态空间划分的学习算法,后者产生最小状态数。然后,我们用它们来解决主动学习的问题,即使用知识渊博的老师来生成样本作为模拟等效查询的反例。我们表明,一般情况下,问题是不可确定的,但在教师的适当条件下,它变得可确定,这自然来自于从失败的模拟检查中生成样本的方式。如果我们对学习者施加一个附加条件,使其总是猜测最小状态假设,则后一个问题是不可判定的。因此,我们提出了一种使用随机分区的半算法。最后,我们将提出的(半)算法应用于概率系统的自动假设-保证验证框架中推断中间假设。
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