Skip to content

Commit

Permalink
typos
Browse files Browse the repository at this point in the history
  • Loading branch information
eeholmes committed Aug 19, 2020
1 parent 48c6168 commit c1a9909
Show file tree
Hide file tree
Showing 2 changed files with 3 additions and 3 deletions.
4 changes: 2 additions & 2 deletions .gitattributes
Original file line number Diff line number Diff line change
Expand Up @@ -19,5 +19,5 @@ vignettes/tex export-ignore
vignettes/figures export-ignore
vignettes/manual_files export-ignore
vignettes/debugger_template.Rnw export-ignore
inst/WORDLIST
man/MARSS_out.Rd
inst/WORDLIST export-ignore
man/MARSS_out.Rd export-ignore
2 changes: 1 addition & 1 deletion NEWS.md
Original file line number Diff line number Diff line change
Expand Up @@ -9,7 +9,7 @@ New work on MARSS before posting to CRAN is at the GitHub repo. See issues post

MARSS 3.11.1 (released 2020-08-18 on GitHub)
------------------------------------
Version 3.11.1 is focused on addition of the `predict`, `forecast`, `fitted` and `residuals` functions along with plotting functions for the output. Documentation for these functions along with background literature and the derivation of the Residuals algorithms have been updated. Residuals in state-space models are complex as there are two processes (observation and state), three types of conditioning (data to t-1, t or T), and four types of standardization used in the literature (none, marginal, Cholesky on the full variance matrix, and Cholesky on only model or state residual variance). The MARSS package computes all the variants of residuals. Many of the `predict` changes are listed below for 3.10.13 release on GitHub. New chapters illustrating structural equation models using MARSS versus `StructTS` and the KFAS package were added. The KFAS chapter compares the residuals to the MARSS. The two packages use different algorithms to compute the same residuals.
Version 3.11.1 is focused on addition of the `predict`, `forecast`, `fitted` and `residuals` functions along with plotting functions for the output. Documentation for these functions along with background literature and the derivation of the residuals algorithms have been updated. Residuals in state-space models are complex as there are two processes (observation and state), three types of conditioning (data to t-1, t or T), and four types of standardization used in the literature (none, marginal, Cholesky on the full variance matrix, and Cholesky on only model or state residual variance). The MARSS package computes all the variants of residuals. Many of the `predict` changes are listed below for 3.10.13 release on GitHub. New chapters illustrating structural equation models using MARSS versus `StructTS` and the KFAS package were added. The KFAS chapter compares the KFAS residuals functions to the MARSS residuals functions. The two packages use different algorithms and different semantics to compute the same residuals.


ENHANCEMENTS
Expand Down

0 comments on commit c1a9909

Please sign in to comment.