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Censored time series analysis with autoregressive moving average models
Authors:Jung Wook Park  Marc G Genton  Sujit K Ghosh
Institution:1. Clinical Pharmacology Statistics and Programming GlaxoSmithKline Research Triangle Park, NC 27709–3398, USA;2. Department of Statistics, Texas A&M University College Station, TX 77843–3143, USA;3. Department of Statistics, North Carolina State University Raleigh, NC 27695–8203, USA
Abstract:The authors consider time series observations with data irregularities such as censoring due to a detection limit. Practitioners commonly disregard censored data cases which often result in biased estimates. The authors present an attractive remedy for handling autocorrelated censored data based on a class of autoregressive and moving average (ARMA) models. In particular, they introduce an imputation method well suited for fitting ARMA models in the presence of censored data. They demonstrate the effectiveness of their technique in terms of bias, efficiency, and information loss. They also describe its adaptation to a specific context of meteorological time series data on cloud ceiling height, which are measured subject to the detection limit of the recording device.
Keywords:Censored time series  Fisher information  Gibbs sampler  Imputation  truncated multivariate normal distribution
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