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Bayesian Model Selection for Markov, Hidden Markov, and Multinomial Models

机译:马尔可夫,隐马尔可夫和多项式模型的贝叶斯模型选择

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Model selection based on observed data sequences is used to decide between different model structures within the class of multinomial, Markov, and hidden Markov models. In a unified Bayesian treatment, we derive posterior probabilities for different model structures without assuming prior knowledge of transition probabilities. We emphasize the following tests: 1) Given a particular data sequence of n outcomes, is each state equally likely? 2) Do the data support an independent model, or is a Markov model a more plausible description? 3) Are two data sequences generated from a) the same Markov model? b) the same hidden Markov model? For Markov models and independent multinomial models, all results are exact. For hidden Markov models, the exact solution is computationally prohibitive, and instead, an approximate solution is proposed
机译:基于观察到的数据序列的模型选择用于决定多项式,马尔可夫模型和隐马尔可夫模型类别内的不同模型结构。在统一的贝叶斯处理中,我们无需假定先验的转移概率即可得出不同模型结构的后验概率。我们强调以下测试:1)给定n个结果的特定数据序列,每个状态是否均等可能? 2)数据是否支持独立模型,或者说马尔可夫模型是否更合理? 3)是否从a)相同的马尔可夫模型生成两个数据序列? b)相同的隐马尔可夫模型?对于马尔可夫模型和独立多项式模型,所有结果都是准确的。对于隐藏的马尔可夫模型,精确解在计算上是禁止的,而是提出了一个近似解

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