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Learning Dynamics with Synchronous, Asynchronous and General Semantics

机译:通过同步,异步和通用语义学习动力学

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Learning from interpretation transition (LFIT) automatically constructs a model of the dynamics of a system from the observation of its state transitions. So far, the systems that LFIT handles are restricted to synchronous deterministic dynamics, i.e., all variables update their values at the same time and, for each state of the system, there is only one possible next state. However, other dynamics exist in the field of logical modeling, in particular the asynchronous semantics which is widely used to model biological systems. In this paper, we focus on a method that learns the dynamics of the system independently of its semantics. For this purpose, we propose a modeling of multi-valued systems as logic programs in which a rule represents what can occur rather than what will occur. This modeling allows us to represent non-determinism and to propose an extension of LFIT in the form of a semantics free algorithm to learn from discrete multi-valued transitions, regardless of their update schemes. We show through theoretical results that synchronous, asynchronous and general semantics are all captured by this method. Practical evaluation is performed on randomly generated systems and benchmarks from biological literature to study the scalability of this new algorithm regarding the three aforementioned semantics.
机译:从解释转换学习(LFIT)通过观察系统的状态转换自动构建系统动力学模型。到目前为止,LFIT处理的系统仅限于同步确定性动态,即所有变量同时更新其值,并且对于系统的每种状态,只有一个可能的下一状态。然而,在逻辑建模领域中还存在其他动力,尤其是广泛用于对生物系统建模的异步语义。在本文中,我们集中于一种独立于系统语义学系统动态的方法。为此,我们提出了一种将多值系统建模为逻辑程序的方法,其中规则表示发生了什么而不是发生了什么。这种建模使我们能够表示不确定性,并以无语义算法的形式提出LFIT的扩展,以从离散的多值转换中学习,而不论其更新方案如何。我们通过理论结果表明,该方法捕获了同步,异步和通用语义。对生物学文献中随机生成的系统和基准进行了实际评估,以研究该新算法关于上述三种语义的可伸缩性。

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