Reviewer has chosen not to be Anonymous
Overall Impression: Average
Suggested Decision: Undecided
Technical Quality of the paper: Average
Presentation: Good
Reviewer`s confidence: High
Significance: Moderate significance
Background: Reasonable
Novelty: Limited novelty
Data availability: All used and produced data (if any) are FAIR and openly available in established data repositories
Length of the manuscript: The length of this manuscript is about right
Summary of paper in a few sentences (summary of changes and improvements for
second round reviews):
The authors present a data set for a Chilean retail company's multi-skilled personnel assignment problem, completed with artificial data from a Monte Carlo simulation. While the presentation and literature discussion in this second version is more advanced and give more details, it is still unclear to me why the author stated that there are no sufficient benchmark data sets:
A short investigation brings up that such multi-skilled, multi-ressource problems data sets are widely known in aircraft maintenance (https://www.sciencedirect.com/science/article/pii/S0377221717310585), multi-skilled resource-constrained project scheduling problem as MSRCPSP (https://www.sciencedirect.com/science/article/pii/S0377221722004519#bib0018) and benchmark sets for the latter are widely available: https://www.projectmanagement.ugent.be/research/project_scheduling/mmrcpsp
In my opinion, these relations to MSRCPSP should be discussed as they are quite similar regarding the multiple-skills and constraint resource assignment. I think, a comparison and alignment to the latter benchmark platform would give the reader a better insight of the unique features of this dataset.
Reasons to accept:
The literature discussion and comparison to other datasets were improved and more elaborated. The model is presented in a more detailed and comprehensive way. The presentation of the results shows the most important features of the dataset.
Reasons to reject:
The authors coined the term MPAP, but neglected to look for similar approaches and existing benchmarks, which are already there. And it is a pity because the work on its own is good, but if a short search brings up similar benchmark sets, the conclusion from my side is, that the literature research was not carried out sufficiently.
Nanopublication comments:
Further comments:
2 Comments
meta-review by editor
Submitted by Tobias Kuhn on
The authors need to expand the discussion of related work with respect to similar approaches and existing benchmarks, as indicated by one of the reviewers.
Tobias Kuhn (https://orcid.org/0000-0002-1267-0234)
Response to the editor and the reviewers
Submitted by César Augusto Henao on
Dear Tobias Kuhn, editors-in-chief and reviewers,
Thank you for your feedback on our manuscript entitled "A benchmark dataset for retail multiskilled personnel planning under uncertain demand" (#797-1777). Based on the instructions provided, we have uploaded three documents: (i) a revised version of the manuscript in Pdf and Word files, (ii) all image files needed to produce the final paper, and (iii) a document containing the responses to the reviewers.
We have addressed the reviewer's comment by expanding the discussion of related work in the new version of the manuscript. Most importantly, we have added Subsection 2.1, which identifies a set of research articles that addressed PSPs with applications in industries other than retail, sometimes considering multiskilled workers and sometimes not. The list of articles is particularly valuable as all the articles listed in Table 1 are characterized by having an associated data repository with public access, thus providing valuable datasets for researchers or practitioners to conduct experiments and/or benchmarking.
We believe that this new subsection strengthens and expands the contribution of our data article by providing readers with a compilation of datasets that have already been published by other authors and can be used for experimentation or benchmarking in case studies other than retail.
Please let us know if there are any additional requirements.
Best regards,
César A. Henao