Tancredi Andrea
Department of Methods and Models for Economics Territory and Finance, Sapienza University of Rome, Via del Castro Laurenziano 9, 00161, Rome, Italy.
Biometrics. 2019 Sep;75(3):966-977. doi: 10.1111/biom.13019. Epub 2019 Apr 3.
Inference for continuous time multi-state models presents considerable computational difficulties when the process is only observed at discrete time points with no additional information about the state transitions. In fact, for general multi-state Markov model, evaluation of the likelihood function is possible only via intensive numerical approximations. Moreover, in real applications, transitions between states may depend on the time since entry into the current state, and semi-Markov models, where the likelihood function is not available in closed form, should be fitted to the data. Approximate Bayesian Computation (ABC) methods, which make use only of comparisons between simulated and observed summary statistics, represent a solution to intractable likelihood problems and provide alternative algorithms when the likelihood calculation is computationally too costly. In this article we investigate the potentiality of ABC techniques for multi-state models both to obtain the posterior distributions of the model parameters and to compare Markov and semi-Markov models. In addition, we will also exploit ABC methods to estimate and compare hidden Markov and semi-Markov models when observed states are subject to classification errors. We illustrate the performance of the ABC methodology both with simulated data and with a real data example.
当过程仅在离散时间点被观测且没有关于状态转移的额外信息时,连续时间多状态模型的推断存在相当大的计算困难。事实上,对于一般的多状态马尔可夫模型,似然函数的评估只能通过密集的数值近似来进行。此外,在实际应用中,状态之间的转移可能取决于进入当前状态后的时间,并且应该将似然函数没有封闭形式的半马尔可夫模型拟合到数据中。近似贝叶斯计算(ABC)方法仅利用模拟和观测的汇总统计量之间的比较,代表了解决难以处理的似然问题的一种方法,并在似然计算的计算成本过高时提供替代算法。在本文中,我们研究了ABC技术在多状态模型中的潜力,以获得模型参数的后验分布并比较马尔可夫模型和半马尔可夫模型。此外,当观测状态存在分类错误时,我们还将利用ABC方法来估计和比较隐马尔可夫模型和半马尔可夫模型。我们用模拟数据和一个实际数据示例说明了ABC方法的性能。