hrvatski jezikClear Cookie - decide language by browser settings

Bridging the Data Discovery Gap: User-Centric Recommendations for Research Data Repositories

Wu, Mingfang; Löffler, Felicitas; Mathiak, Brigitte; Psomopoulos, Fotis; Schindler, Uwe; Aryani, Amir; Sempere, Jordi Bodera; Čulina, Antica; Czerniak, Andreas; Erdmann, Chris; Gregory, Kathleen; Juty, Nick; Lister, Allyson; Liu, Ying-Hsang; Pearman-Kanza, Samantha (2026) Bridging the Data Discovery Gap: User-Centric Recommendations for Research Data Repositories. Data Science Journal, 25 . ISSN 1683-1470

[img] PDF - Published Version - article
Available under License Creative Commons Attribution.

Download (3MB)

Abstract

Despite substantial investment in research data infrastructure, data discovery remains a fundamental challenge in the era of open science. The proliferation of repositories and the rapid growth of deposited data have not resulted in a corresponding improvement in data findability. Researchers continue to struggle to find data that are relevant to their work, revealing a persistent gap between data availability and data discoverability. Without rich, high-quality metadata, robust and user-centred data discovery systems, and a deeper understanding of how different researchers seek and evaluate data, much of the potential value of open data remains unrealised. This paper presents a set of practical, evidence-based recommendations for data repositories and discovery service providers aimed at improving data discoverability for both human and machine users. These recommendations emphasise the importance of 1) understanding the search needs and contexts of data users, 2) addressing the roles that data repositories play in enhancing metadata quality to meet users’ data search needs, and 3) designing discovery interfaces that support effective and diverse search behaviours. By bridging the gap between data curation practices, discovery system design, and user-centred approaches, this paper argues for a more integrated and strategic approach to data discovery.

Item Type: Article
Uncontrolled Keywords: Data Discovery; FAIR data; FAIR implementation
Subjects: TECHNICAL SCIENCES > Computing > Information Systems
SOCIAL SCIENCES > Information and Communication Sciences
Divisions: Division for Marine and Enviromental Research
Projects:
Project titleProject leaderProject codeProject type
Unapređenje istraživanja u ekologiji pomoću otvorene znanosti i meta-znanosti (rezultat rada na projektu)Antica ČulinaIP-2022-10-2872HRZZ
Depositing User: Ema Buhin Šaler
Date Deposited: 25 Feb 2026 08:41
URI: http://fulir.irb.hr/id/eprint/11250
DOI: 10.5334/dsj-2026-006

Actions (login required)

View Item View Item

Downloads

Downloads per month over past year

Contrast
Increase Font
Decrease Font
Dyslexic Font
Accessibility