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[PRE REVIEW]: Surjectors: surjective normalizing flows for density estimation #5969

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editorialbot opened this issue Oct 22, 2023 · 26 comments
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Makefile pre-review Python TeX Track: 5 (DSAIS) Data Science, Artificial Intelligence, and Machine Learning

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editorialbot commented Oct 22, 2023

Submitting author: @dirmeier (Simon Dirmeier)
Repository: https://github.com/dirmeier/surjectors
Branch with paper.md (empty if default branch): joss
Version: v0.0.3
Editor: @arfon
Reviewers: @sandeshkatakam, @animikhaich
Managing EiC: Arfon Smith

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status

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HTML: <a href="https://joss.theoj.org/papers/ce3be4527ac40a2eec418aef0d876d73"><img src="https://joss.theoj.org/papers/ce3be4527ac40a2eec418aef0d876d73/status.svg"></a>
Markdown: [![status](https://joss.theoj.org/papers/ce3be4527ac40a2eec418aef0d876d73/status.svg)](https://joss.theoj.org/papers/ce3be4527ac40a2eec418aef0d876d73)

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Thanks for submitting your paper to JOSS @dirmeier. Currently, there isn't a JOSS editor assigned to your paper.

@dirmeier if you have any suggestions for potential reviewers then please mention them here in this thread (without tagging them with an @). You can search the list of people that have already agreed to review and may be suitable for this submission.

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@editorialbot editorialbot added pre-review Track: 5 (DSAIS) Data Science, Artificial Intelligence, and Machine Learning labels Oct 22, 2023
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Hello human, I'm @editorialbot, a robot that can help you with some common editorial tasks.

For a list of things I can do to help you, just type:

@editorialbot commands

For example, to regenerate the paper pdf after making changes in the paper's md or bib files, type:

@editorialbot generate pdf

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Software report:

github.com/AlDanial/cloc v 1.88  T=0.06 s (963.9 files/s, 113279.2 lines/s)
-------------------------------------------------------------------------------
Language                     files          blank        comment           code
-------------------------------------------------------------------------------
Python                          37            587            776           1875
Jupyter Notebook                 3              0           1969            651
YAML                             5             20              4            206
TeX                              1             23              0            120
reStructuredText                 6             92             94            113
Markdown                         2             34              0             95
TOML                             1             14              0             88
CSS                              1              4              4             20
make                             2              5              7             15
-------------------------------------------------------------------------------
SUM:                            58            779           2854           3183
-------------------------------------------------------------------------------


gitinspector failed to run statistical information for the repository

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Wordcount for paper.md is 363

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Reference check summary (note 'MISSING' DOIs are suggestions that need verification):

OK DOIs

- None

MISSING DOIs

- None

INVALID DOIs

- None

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👉📄 Download article proof 📄 View article proof on GitHub 📄 👈

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⚠️ Note to editors: If these papers look like they might be a good match, click through to the review issue for that paper and invite one or more of the authors before before considering asking the reviewers of these papers to review again for JOSS.

@arfon arfon added the waitlisted Submissions in the JOSS backlog due to reduced service mode. label Oct 22, 2023
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arfon commented Oct 22, 2023

@dirmeier – thanks for your submission to JOSS. We're currently managing a large backlog of submissions and the editor most appropriate for your area is already rather busy.

For now, we will need to waitlist this paper and process it as the queue reduces. Thanks for your patience!

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dirmeier commented Oct 22, 2023

Hey, thanks for the info. There are several potential reviewers:

  • VincentStimper,
  • thomaspinder,
  • animikhaich,
  • sandeshkatakam,
  • Uddiptaatwork

No conflict of interest exists with any of these.

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arfon commented Nov 24, 2023

@dirmeier – in order to help me find an editor for this submission, could you help me understand what sorts of academic fields these methods are typically applied in? Skimming your paper, it's not obvious.

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dirmeier commented Nov 24, 2023

Hello @arfon , I think either generative modelling or neural density estimation which I would subsume under probabilistic deep learning or more generally machine learning.

Normalizing flows are ubiquitous in ML, for instance, for Bayesian inference (i.e., variational inference), for generative modelling (e.g., for images or audio), for density estimation (and outlier detection), ...

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arfon commented Jan 7, 2024

@editorialbot assign me as editor

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Assigned! @arfon is now the editor

@arfon arfon removed the waitlisted Submissions in the JOSS backlog due to reduced service mode. label Jan 7, 2024
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arfon commented Jan 7, 2024

👋 @VincentStimper @thomaspinder @animikhaich @sandeshkatakam @Uddiptaatwork – would any of you be willing to review this submission for JOSS? The submission under consideration is Surjectors: surjective normalizing flows for density estimation

The review process at JOSS is unique: it takes place in a GitHub issue, is open, and author-reviewer-editor conversations are encouraged. You can learn more about the process in these guidelines: https://joss.readthedocs.io/en/latest/reviewer_guidelines.html

Based on your experience, we think you might be able to provide a great review of this submission. Please let me know if you think you can help us out!

Many thanks
Arfon

@sandeshkatakam
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Sure. I can review this submission. Let me know any further details

@animikhaich
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Sure. Would be happy to review it.

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arfon commented Jan 8, 2024

@editorialbot assign @sandeshkatakam 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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arfon commented Jan 8, 2024

@editorialbot add @sandeshkatakam as reviewer

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@sandeshkatakam added to the reviewers list!

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arfon commented Jan 8, 2024

@editorialbot add @animikhaich as reviewer

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arfon commented Jan 8, 2024

@editorialbot add @animikhaich as reviewer

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@animikhaich added to the reviewers list!

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@animikhaich is already included in the reviewers list

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arfon commented Jan 8, 2024

@editorialbot start review

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OK, I've started the review over in #6188.

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arfon commented Jan 8, 2024

@sandeshkatakam, @animikhaich, @dirmeier – see you all over in #6188 where the actual review will take place.

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