Enabling Accessibility and Reusability
If your answer to the above question is affirmative, there are several steps you can take to ensure your research data is better accessible and reusable:
1* Publishing Datasets on Dedicated Platforms: Make use of dedicated platforms such as Zenodo to publish your datasets, ensuring clear metadata and improved discoverability. By providing comprehensive information about your datasets, you enhance their visibility and accessibility to the wider research community.
2* Support Initiative for Open Abstracts through your institution. It promotes the availability of freely accessible abstracts and articles beyond the confines of specific publishers' portals.
3* Sharing Research Code: Share your research code on platforms like GitHub, enabling transparency, reproducibility, and reusability. By making your code accessible, you empower other researchers to validate and build upon your work, fostering a culture of collaboration and advancement.
Steps like these represent valuable research outputs that go beyond the original intentions and scope of the research.
Licensing Considerations
The ChatGPT example highlights the importance of carefully selecting the licensing approach when publishing research data. By choosing the appropriate license, you can define the terms of use and safeguard the integrity of your data, ensuring it is used in line with your original research intentions. In this way you allow others to use your work in an ethical way. For example, code published without any license can not be used by other by default.
Open Data at Global Campus
At GlobalCampus, we recognize the value of open datasets and actively use them and try to contribute to them. For example, to facilitate comparisons of research proposals to previous, we leverage CORDIS. To enhance our search algorithms, we utilize the Synergy dataset, comprising of fully labeled systematic review datasets. OpenAlex serves as a source of bibliometric information of research output. We try to give back by contributing to the codebase of ASReview, the organisation behind the Synergy dataset, and by reporting bugs and suggesting improvements to OpenAlex.
The manner in which research data is shared and utilized can have a profound impact on the research community and beyond. It is crucial to carefully consider how data is stored, shared, and licensed. By embracing openness, accessibility, and reproducibility, researchers can amplify the impact of their work.