Review Comment:
This manuscript was submitted as 'Tools and Systems Report' and should be reviewed along the following dimensions:
(1) Quality, importance, and impact of the described tool or system (convincing evidence must be provided).
Although a more extensive user study can be completed, first results indicate an increase in explainability of the retrieved results over existing tools (LIME). However, some details are missing from the user study: the questions about the notion of interpretability for LIME are omitted, as well as more details about how the study was performed (did the users ever use LIME or other tools before, did they work with the tools for a while, did they just get the output of the LIME vs the output of the interpretKG, and in which order?).
I appreciate that the tool has been used in a course to understand better how such a tool can be used in practice, and the fact that it is developed with domain experts makes it also more likely to be picked up by the community.
(2) Clarity, illustration, and readability of the describing paper, which shall convey to the reader both the capabilities and the limitations of the tool. Please also assess the data file provided by the authors under “Long-term stable URL for resources”. In particular, assess
There are still some minor grammatical errors, but not many. Overall, the readability has significantly improved due to additions over the previous version (e.g., new schematics).
(A) whether the data file is well organized and in particular contains a README file which makes it easy for you to assess the data,
The github is well organized and contains a README.
(B) whether the provided resources appear to be complete for replication of experiments, and if not, why,
Yes, provided resources appear complete.
(C) whether the chosen repository, if it is not GitHub, Figshare or Zenodo, is appropriate for long-term repository discoverability, and (4) whether the provided data artifacts are complete. Please refer to the reviewer instructions and the FAQ for further information.
Yes, github and zenodo used.
General:
I like this idea of using semantic web technologies for easy integration between an input dataset and metadata produced in the machine learning pipeline for better interpretability, and the authors have made the impact of the tool clearer by including a first user study. Also, the questions I had in the first round have been adequately addressed. If more details for the user study are included, as requested, I would recommend the paper for publication.
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