Comments (15)
Let's add Kruschke and try
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It says here:
- Relevant citations should be included in the description. These should be in author-year style, preferably followed by an identifier such as DOI, arXiv id, or ISBN for published materials.
- DOIs should be enclosed in angle brackets, and formatted as <doi:10.prefix/suffix>. Example: Sugihara (1994) <doi:10.1098/rsta.1994.0106>.
I am not sure if that applies to in text citations or references section. Any suggestions?
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According the size: you need to remove all logos from the man folder.
Have you checked the package with winbuilder before submission?
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For citation, maybe here?
https://cran.r-project.org/web/packages/bayesammi/index.html
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And remember to check the tarball here before submission:
https://win-builder.r-project.org
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Yep but we have no references in DESCRIPTION...
winbuilder says everything ok but:
* checking DESCRIPTION meta-information ... NOTE
Author field differs from that derived from Authors@R
Author: 'Dominique Makowski [aut, cre] (<https://orcid.org/0000-0001-5375-9967>), Daniel L�decke [aut] (<https://orcid.org/0000-0002-8895-3206>)'
Authors@R: 'Dominique Makowski [aut, cre] (0000-0001-5375-9967), Daniel L�decke [aut] (0000-0002-8895-3206)'
However it is pretty much the same as for insight mutatis mutandis 😕
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I just saw, in the tar-ball, the largest file is this vignette. After removing the logos, the package is ~1.5 MB, which is ok. We could only reduce the image size (figure width/height) in the vignettes if it's still too large.
According the description: I think they asked for citing / adding a refrence to the concepts:
Maximum A Posteriori (MAP), measures of dispersion (Highest Density Interval - HDI) and indices used for null-hypothesis testing (such as ROPE percentage and pd).
It would be great if all happen to be in just one publication, maybe Kruschke 2015?
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See in my pkg-example:
Performs Bayesian estimation of the additive main effects and multiplicative interaction (AMMI) model. The method is explained in Crossa, J., Perez-Elizalde, S., Jarquin, D., Cotes, J.M., Viele, K., Liu, G. and Cornelius, P.L. (2011) (doi:10.2135/cropsci2010.06.0343).
I think (but not sure) that they meant this.
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Let's try adding Kruschke. Maybe the author thing is a false positive
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You meant Kruschke, John K., and Wolf Vanpaemel. "Bayesian estimation in hierarchical models." The Oxford handbook of computational and mathematical psychology (2015): 279-299. ?
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Sorry, no, this one:
https://www.amazon.de/Doing-Bayesian-Data-Analysis-Tutorial/dp/0124058884
which is very comprehensive.
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McElreath (Statistical Rethinking) says something about MAP, but not ROPE. Kruschke says something to ROPE, but not MAP (at least not easily findable)... :-D
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"Thanks,
on its way to CRAN."
🎉
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Nice! Then maybe we should revert the paranthesis changes I made to the description, and just update the DOI and year.
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Na, I guess we can keep all the changes (maybe bump to 0.1.1). From now on, I must also force myself to update the changelog :)
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