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Efficient Computation of Updated Lower Expectations for Imprecise Continuous-Time Hidden Markov Chains

机译:有效计算更新的更新期望对不精确的连续时间隐马尔可夫链条

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We consider the problem of performing inference with imprecise continuous-time hidden Markov chains, that is, imprecise continuous-time Markov chains that are augmented with random output variables whose distribution depends on the hidden state of the chain. The prefix ‘imprecise’ refers to the fact that we do not consider a classical continuous-time Markov chain, but replace it with a robust extension that allows us to represent various types of model uncertainty, using the theory of imprecise probabilities. The inference problem amounts to computing lower expectations of functions on the state-space of the chain, given observations of the output variables. We develop and investigate this problem with very few assumptions on the output variables in particular, they can be chosen to be either discrete or continuous random variables. Our main result is a polynomial runtime algorithm to compute the lower expectation of functions on the state-space at any given time-point, given a collection of observations of the output variables.
机译:我们考虑使用不精确的连续时间隐马尔可夫链执行推断的问题,即不精确的连续时间马尔可夫链,这些链可以增强随机输出变量,其分发取决于链的隐藏状态。前缀“不精确”是指我们不考虑经典连续时间马尔可夫链的事实,但使用强大的扩展,允许我们使用不精确概率理论来代表各种类型的模型不确定性的强大的扩展。考虑到输出变量的观察,推理问题量达到计算链的状态空间上的功能的较低期望。我们在输出变量上的非常少数的假设中开发和调查这个问题,特别是它们可以选择是离散或连续的随机变量。考虑到输出变量的观察集合,我们主要结果是多项式运行时算法计算在任何给定时间点的状态空间上的功能的较低期望。

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