Comments (52)
👉📄 Download article proof 📄 View article proof on GitHub 📄 👈
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Good morning @mhahsler , I am still working on this. I will be reaching out to potential reviewers outside of Github. Please stay tuned and thank you for being very patient!
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Hello human, I'm @whedon, a robot that can help you with some common editorial tasks.
Due to the challenges of the COVID-19 pandemic, JOSS is currently operating in a "reduced service mode".
For a list of things I can do to help you, just type:
@whedon commands
For example, to regenerate the paper pdf after making changes in the paper's md or bib files, type:
@whedon generate pdf
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Reference check summary (note 'MISSING' DOIs are suggestions that need verification):
OK DOIs
- 10.21105/joss.01686 is OK
- 10.18637/jss.v091.i01 is OK
- 10.18637/jss.v025.i03 is OK
- 10.32614/RJ-2017-047 is OK
- 10.18637/jss.v028.i05 is OK
MISSING DOIs
- 10.1002/0471687545.ch1 may be a valid DOI for title: Introduction to Data Mining
INVALID DOIs
- None
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Wordcount for paper.md
is 532
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Software report (experimental):
github.com/AlDanial/cloc v 1.88 T=1.20 s (56.9 files/s, 22896.0 lines/s)
-------------------------------------------------------------------------------
Language files blank comment code
-------------------------------------------------------------------------------
HTML 19 695 45 11519
JavaScript 17 852 1220 6172
Rmd 9 1116 2249 1284
CSS 10 96 81 856
TeX 3 81 0 665
SVG 1 0 0 288
Markdown 3 29 0 97
YAML 3 1 0 19
R 2 1 3 5
JSON 1 0 0 1
-------------------------------------------------------------------------------
SUM: 68 2871 3598 20906
-------------------------------------------------------------------------------
Statistical information for the repository '4279c59c22f532017b9213c9' was
gathered on 2023/06/06.
The following historical commit information, by author, was found:
Author Commits Insertions Deletions % of changes
Michael Hahsler 7 10163 1919 100.00
Below are the number of rows from each author that have survived and are still
intact in the current revision:
Author Rows Stability Age % in comments
Michael Hahsler 8244 81.1 1.7 50.01
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👉📄 Download article proof 📄 View article proof on GitHub 📄 👈
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Here are two reviewer suggestions from the list:
- Kelly Bodwin
- Abhinav Maurya
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@editorialbot generate pdf
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@editorialbot generate pdf
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@editorialbot generate pdf
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@xuanxu the pdf generation script seems to die when adding an image (not finding the journal logo?)
Error running filter /usr/local/share/openjournals/data/filters/add-images.lua:
File not found in resource path
stack traceback:
/usr/local/share/openjournals/data/filters/add-images.lua:4: in upvalue 'insert'
/usr/local/share/openjournals/data/filters/add-images.lua:9: in function 'Meta'
I am not sure how to fix this.
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Yes, is something we are looking into, we've updated the PDF compilation step and this is probably some misconfiguration in our part.
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@editorialbot generate pdf
let's try again
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@whedon commands
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My name is now @editorialbot
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@editorialbot commands
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Hello @mhahsler, here are the things you can ask me to do:
# List all available commands
@editorialbot commands
# Get a list of all editors's GitHub handles
@editorialbot list editors
# Check the references of the paper for missing DOIs
@editorialbot check references
# Perform checks on the repository
@editorialbot check repository
# Adds a checklist for the reviewer using this command
@editorialbot generate my checklist
# Set a value for branch
@editorialbot set jose-paper as branch
# Generates the pdf paper
@editorialbot generate pdf
# Generates a LaTeX preprint file
@editorialbot generate preprint
# Get a link to the complete list of reviewers
@editorialbot list reviewers
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@editorialbot list editors
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List of JOSE editors
@IanHawke
@JasonJWilliamsNY
@ShanEllis
@acocac
@allisonhorst
@arm61
@ashleefv
@bryanwweber
@csev
@diazrenata
@emckiernan
@jgorzalski
@juanklopper
@kls2177
@kyleniemeyer
@labarba
@lorenanicole
@magsol
@moorepants
@nicoguaro
@quirksahern
@stats-tgeorge
@steflangehennig
@ttimbers
@willingc
@yabellini
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@labarba Hi. There was a technical issue with creating the pdf. The issue was resolved. What are the next steps for the review process? Best regards, Michael
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@mhahsler I apologize for the delay. Since it has been many month, can you confirm you would still like this reviewed?
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@stats-tgeorge Thank you for your reply. It has been a while, but we are still teaching the course and I am still interested having the companion reviewed.
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@editorialbot assign @stats-tgeorge as editor
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Assigned! @stats-tgeorge is now the editor
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@mhahsler great! To start, looking at your JOSE paper there are some missing pieces. See mhahsler/Introduction_to_Data_Mining_R_Examples#5 (comment)
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@editorialbot commands
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Hello @stats-tgeorge, here are the things you can ask me to do:
# List all available commands
@editorialbot commands
# Add to this issue's reviewers list
@editorialbot add @username as reviewer
# Remove from this issue's reviewers list
@editorialbot remove @username from reviewers
# Get a list of all editors's GitHub handles
@editorialbot list editors
# Assign a user as the editor of this submission
@editorialbot assign @username as editor
# Remove the editor assigned to this submission
@editorialbot remove editor
# Remind an author, a reviewer or the editor to return to a review after a
# certain period of time (supported units days and weeks)
@editorialbot remind @reviewer in 2 weeks
# Check the references of the paper for missing DOIs
@editorialbot check references
# Perform checks on the repository
@editorialbot check repository
# Adds a checklist for the reviewer using this command
@editorialbot generate my checklist
# Set a value for version
@editorialbot set v1.0.0 as version
# Set a value for branch
@editorialbot set jose-paper as branch
# Set a value for repository
@editorialbot set https://github.com/organization/repo as repository
# Set a value for the archive DOI
@editorialbot set set 10.5281/zenodo.6861996 as archive
# Mention the EiCs for the correct track
@editorialbot ping track-eic
# Generates the pdf paper
@editorialbot generate pdf
# Recommends the submission for acceptance
@editorialbot recommend-accept
# Generates a LaTeX preprint file
@editorialbot generate preprint
# Flag submission with questionable scope
@editorialbot query scope
# Get a link to the complete list of reviewers
@editorialbot list reviewers
# Creates a post-review checklist with editor and authors tasks
@editorialbot create post-review checklist
# Open the review issue
@editorialbot start review
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@editorialbot list reviewers
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Here's the current list of reviewers: https://bit.ly/jose-reviewers
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Hello @kbodwin, Michael Hahsler has submitted a data mining companion book to JOSE for other instructors to use. Would you be willing to review the submission? Your time and efforts will be greatly appreciated!
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Hello @ahmaurya, Michael Hahsler has submitted a data mining companion book to JOSE for other instructors to use. Would you be willing to review the submission? Your time and efforts will be greatly appreciated!
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Hello @hughshanahan, Michael Hahsler has submitted a data mining companion book to JOSE for other instructors to use. Would you be willing to review the submission? Your time and efforts will be greatly appreciated!
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Hello @rudeboybert, Michael Hahsler has submitted a data mining companion book to JOSE for other instructors to use. Would you be willing to review the submission? Your time and efforts will be greatly appreciated!
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Good morning @mhahsler I have identified two reviewers! They asked for a long deadline but at least we are making progress. I will be making some updates here to create the review version.
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@editorialbot assign @hughshanahan as reviewer
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I'm sorry human, I don't understand that. You can see what commands I support by typing:
@editorialbot commands
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@editorialbot assign @hughshanahan as reviewer
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I'm sorry human, I don't understand that. You can see what commands I support by typing:
@editorialbot commands
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@editorialbot commands
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Hello @stats-tgeorge, here are the things you can ask me to do:
# List all available commands
@editorialbot commands
# Add to this issue's reviewers list
@editorialbot add @username as reviewer
# Remove from this issue's reviewers list
@editorialbot remove @username from reviewers
# Get a list of all editors's GitHub handles
@editorialbot list editors
# Assign a user as the editor of this submission
@editorialbot assign @username as editor
# Remove the editor assigned to this submission
@editorialbot remove editor
# Remind an author, a reviewer or the editor to return to a review after a
# certain period of time (supported units days and weeks)
@editorialbot remind @reviewer in 2 weeks
# Check the references of the paper for missing DOIs
@editorialbot check references
# Perform checks on the repository
@editorialbot check repository
# Adds a checklist for the reviewer using this command
@editorialbot generate my checklist
# Set a value for version
@editorialbot set v1.0.0 as version
# Set a value for branch
@editorialbot set jose-paper as branch
# Set a value for repository
@editorialbot set https://github.com/organization/repo as repository
# Set a value for the archive DOI
@editorialbot set set 10.5281/zenodo.6861996 as archive
# Mention the EiCs for the correct track
@editorialbot ping track-eic
# Generates the pdf paper
@editorialbot generate pdf
# Recommends the submission for acceptance
@editorialbot recommend-accept
# Generates a LaTeX preprint file
@editorialbot generate preprint
# Flag submission with questionable scope
@editorialbot query scope
# Get a link to the complete list of reviewers
@editorialbot list reviewers
# Creates a post-review checklist with editor and authors tasks
@editorialbot create post-review checklist
# Open the review issue
@editorialbot start review
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@editorialbot add @hughshanahan as reviewer
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@hughshanahan added to the reviewers list!
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@editorialbot add @rudeboybert as reviewer
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@rudeboybert added to the reviewers list!
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@editorialbot start review
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OK, I've started the review over in #223.
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Hello @gvdr, you are on our list of potential reviewers for JOSE. Michael Hahsler has submitted a data mining companion book to JOSE for other instructors to use. Would you be willing to review the submission? Your time and efforts will be greatly appreciated!
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Hello @trallard, you are on our list of potential reviewers for JOSE. Michael Hahsler has submitted a data mining companion book to JOSE for other instructors to use. Would you be willing to review the submission? Your time and efforts will be greatly appreciated!
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