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Solving inverse problem of Markov chain with partial observations

机译:用部分观测解决马尔可夫链的逆问题

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The Markov chain is a convenient tool to represent the dynamics of complex systems such as traffic and social systems, where probabilistic transition takes place between internal states. A Markov chain is characterized by initial-state probabilities and a state-transition probability matrix. In the traditional setting, a major goal is to study properties of a Markov chain when those probabilities are known. This paper tackles an inverse version of the problem: we find those probabilities from partial observations at a limited number of states. The observations include the frequency of visiting a state and the rate of reaching a state from another. Practical examples of this task include traffic monitoring systems in cities, where we need to infer the traffic volume on single link on a road network from a limited number of observation points. We formulate this task as a regularized optimization problem, which is efficiently solved using the notion of natural gradient. Using synthetic and real-world data sets including city traffic monitoring data, we demonstrate the effectiveness of our method.
机译:马尔可夫链是一种方便的工具,代表复杂系统的动态,例如交通和社会系统,其中概率转变在内部状态之间进行。 Markov链的特征在于初始状态概率和状态转换概率矩阵。在传统的环境中,主要目标是在那些概率是已知的时,研究马尔可夫链的性质。本文解决了问题的逆版本:我们发现这些概率在有限数量的状态下的部分观察。观察结果包括访问状态的频率和从另一个状态到达状态的速率。此任务的实际示例包括城市的交通监控系统,我们需要从有限数量的观察点从道路网络上的单链路上推断交通量。我们将此任务制订为正则化优化问题,这是有效地解决了自然梯度的概念。使用包括城市交通监控数据在内的合成和现实世界数据集,我们展示了我们方法的有效性。

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