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Deep Reinforcement Learning for Control of Probabilistic Boolean Networks

机译:控制概率布尔网络的深度增强学习

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Probabilistic Boolean Networks (PBNs) were introduced as a computational model for the study of complex dynamical systems, such as Gene Regulatory Networks (GRNs). Controllability in this context is the process of making strategic interventions to the state of a network in order to drive it towards some other state that exhibits favourable biological properties. In this paper we study the ability of a Double Deep Q-Network with Prioritized Experience Replay in learning control strategies within a finite number of time steps that drive a PBN towards a target state, typically an attractor. The control method is model-free and does not require knowledge of the network's underlying dynamics, making it suitable for applications where inference of such dynamics is intractable. We present extensive experiment results on two synthetic PBNs and the PBN model constructed directly from gene-expression data of a study on metastatic-melanoma.
机译:将概率布尔网络(PBNS)作为研究复杂动态系统的计算模型,例如基因调节网络(GRNS)。 在这种情况下的可控性是对网络状态进行战略干预的过程,以便将其推向展示具有有利生物学特性的其他状态。 在本文中,我们研究了一个双层Q-Network的能力在有限的时间步骤内与学习控制策略中的优先经验重放,该时间步骤在驱动PBN朝向目标状态,通常是吸引子。 控制方法是无模型的,不需要了解网络的底层动态,这使得适用于这种动态的推理是棘手的应用。 我们在两个合成的PBN和直接从转移 - 黑色瘤的研究的基因表达数据中直接构建的PBN模型来呈现广泛的实验结果。

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