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Efficiency and Accuracy Trade-Offs in Process Detection

机译:过程检测中的效率和精度之间的权衡

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Hidden Discrete Event Systems Models (HDESM) axe discrete event dynamical system models whose underlying internal state spaces are not directly observable. Observations on such systems are artifacts of the hidden, internal states and are not deterministically or uniquely associated with the hidden states. The distribution of an observation of a HDESM is typically given by a probability distribution conditioned on the hidden state of the system. Classical linear systems, Hidden Markov Models (HMM) and certain types of Petri Net models are examples of HDESM's. A major challenge in working with this type of model is the estimation of HDESM's hidden states based on a sequence of observations. In some cases, well-known algorithms can be used to solve this problem. In many cases of practical interest, however, the complexity of those algorithms is too high to be practical. New ideas and algorithms are therefore needed for effective solutions to the state estimation problem. In this paper we will investigate sub-classes of HDESM's whose structure would allow efficient state estimation algorithms to exist. Such structures could be related to the sparsity and/or equivalence class structure of transition dynamics within the underlying discrete event system. Efficient algorithms that compute approximate solutions will be investigated with the goal of understanding the trade-offs between computational efficiency and estimation accuracy. Ideas on how to implement such trade-offs also are proposed.
机译:隐藏的离散事件系统模型(HDESM)和离散的事件动态系统模型,其内部内部状态空间不可直接观察。对此类系统的观察是隐藏的内部状态的伪像,与确定的状态或唯一地与隐藏状态无关。 HDESM观测值的分布通常由以系统的隐藏状态为条件的概率分布给出。经典线性系统,隐马尔可夫模型(HMM)和某些类型的Petri Net模型是HDESM的示例。使用这种类型的模型的主要挑战是基于一系列观察来估计HDESM的隐藏状态。在某些情况下,可以使用众所周知的算法来解决此问题。然而,在许多实际感兴趣的情况下,这些算法的复杂性太高而无法实用。因此,需要新的思想和算法来有效解决状态估计问题。在本文中,我们将研究HDESM的子类,其结构将允许存在有效的状态估计算法。这样的结构可能与基础离散事件系统内过渡动力学的稀疏和/或等价类结构有关。将研究计算近似解的有效算法,其目的是理解计算效率和估计精度之间的权衡。还提出了有关如何实现这种折衷的想法。

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