Blog post: TBA
Added
- nested: NS-SMC sampler of Salomone et al (2018)
- datasets: Liver
- distributions: LogNormal
- distributions: Mixture, FlatNormal, mixMissing (to deal with missing data)
- distributions: VaryingCovNormal (issue 55 on github)
- smoothing: FFBS-MCMC, FFBS-hybrid
- collectors: Paris algorithm (hybrid version)
- smc_samplers: single-run variance estimates
- smc_samplers: Tempering (fixed exponents)
- smc_samplers: AdaptiveTempering has a new argument, max_iter, to put a cap on the number of iterations