Bayesian Statistical Process Monitoring
The Highest Mass (HM) interval of Beta-Binomial distribution.
The Highest Mass (HM) interval of Beta-Negative Binomial distribution.
PCC for Binomial data with probability parameter unknown
PRC for Binomial data with probability parameter unknown
Derivation of the decision limit for the PRC for Binomial data with pr...
The Highest Density (HD) interval of Compound Gamma distribution.
PCC for Gamma data with rate parameter unknown
The Highest Density (HD) interval of Generalized Beta of the second ki...
PCC for Inverse-Gamma data with scale parameter unknown
The Highest Density (HD) interval of Lognormal distribution.
PCC for LogNormal data with scale parameter unknown
PCC for LogNormal data with shape parameter unknown
PCC for LogNormal data with both parameters unknown
The Highest Density (HD) interval of Logt distribution.
The Highest Mass (HM) interval of Beta-Negative Binomial distribution.
PCC for Negative Binomial data with probability parameter unknown
The Highest Density (HD) interval of Normal distribution.
PRC for Normal data with unknown parameters (mean)
Derivation of the decision limit for the PRC for Normal data with unkn...
PCC for Normal data with mean unknown
PCC for Normal data with variance unknown
PCC for Normal data with both parameters unknown
PCC for Poisson data with rate parameter unknown
PRC for Poisson data with rate parameter unknown
Derivation of the decision limit for the PRC for Poisson data with pro...
The Highest Density (HD) interval of Student's t distribution.
The R-package bayespm implements Bayesian Statistical Process Control and Monitoring (SPC/M) methodology. These methods utilize available prior information and/or historical data, providing efficient online quality monitoring of a process, in terms of identifying moderate/large transient shifts (i.e., outliers) or persistent shifts of medium/small size in the process. These self-starting, sequentially updated tools can also run under complete absence of any prior information. The Predictive Control Charts (PCC) are introduced for the quality monitoring of data from any discrete or continuous distribution that is a member of the regular exponential family. The Predictive Ratio CUSUMs (PRC) are introduced for the Binomial, Poisson and Normal data (a later version of the library will cover all the remaining distributions from the regular exponential family). The PCC targets transient process shifts of typically large size (a.k.a. outliers), while PRC is focused in detecting persistent (structural) shifts that might be of medium or even small size. Apart from monitoring, both PCC and PRC provide the sequentially updated posterior inference for the monitored parameter. Bourazas K., Kiagias D. and Tsiamyrtzis P. (2022) "Predictive Control Charts (PCC): A Bayesian approach in online monitoring of short runs" <doi:10.1080/00224065.2021.1916413>, Bourazas K., Sobas F. and Tsiamyrtzis, P. 2023. "Predictive ratio CUSUM (PRC): A Bayesian approach in online change point detection of short runs" <doi:10.1080/00224065.2022.2161434>, Bourazas K., Sobas F. and Tsiamyrtzis, P. 2023. "Design and properties of the predictive ratio cusum (PRC) control charts" <doi:10.1080/00224065.2022.2161435>.