This work studies networked agents cooperating to track a dynamical state of nature under partial information. The proposed algorithm is a distributed Bayesian filtering algorithm for finite-state hidden Markov models (HMMs). It can be used for sequential state estimation tasks, as well as for modeling opinion formation over social networks under dynamic environments. We show that the disagreement with the optimal centralized solution is asymptotically bounded for the class of geometrically ergodic state transition models, which includes rapidly changing models. We also derive recursions for calculating the probability of error and establish convergence under Gaussian observation models. Simulations are provided to illustrate the theory and to compare against alternative approaches.
翻译:这项工作的网络化代理人合作在部分信息下跟踪动态自然状态。提议的算法是一种分布式的贝叶斯筛选算法,用于限定状态隐藏的马尔科夫模型(HMMs),可用于连续的国家估算任务,以及用于在动态环境中在社交网络上建模意见形成模型。我们表明,对最佳集中解决方案的异议,对于几何异狄氏状态过渡模型(包括快速变化的模型)的类别来说,是无休止的。我们还提供了计算误差概率和在高斯观察模型下建立趋同的循环数据。我们提供了模拟数据,以说明理论,并与替代方法进行比较。