The estimation of absorption time distributions of Markov jump processes is an important task in various branches of statistics and applied probability. While the time-homogeneous case is classic, the time-inhomogeneous case has recently received increased attention due to its added flexibility and advances in computational power. However, commuting sub-intensity matrices are assumed, which in various cases limits the parsimonious properties of the resulting representation. This paper develops the theory required to solve the general case through maximum likelihood estimation, and in particular, using the expectation-maximization algorithm. A reduction to a piecewise constant intensity matrix function is proposed in order to provide succinct representations, where a parametric linear model binds the intensities together. Practical aspects are discussed and illustrated through the estimation of notoriously demanding theoretical distributions and real data, from the perspective of matrix analytic methods.
翻译:估计Markov跳跃过程的吸收时间分布是统计各分支的重要任务,也是应用概率的重要任务。时间多的情况是典型的,但时间多的情况最近因其增加的灵活性和计算力的进步而日益受到重视。然而,假定了次强度矩阵的通勤,这在各种情况下限制了由此得出的代表体的偏差特性。本文件发展了通过最大可能性估计,特别是利用预期-最大化算法解决一般情况所需的理论。提议将一个有孔常数的强度矩阵功能减为一个有孔常数,以便提供简明的表述,使参数线性模型将强度结合在一起。从矩阵分析方法的角度,通过估计臭名昭著的理论分布和实际数据来讨论和说明实际问题。