Abstract

The increasing amount of publicly available research data provides the opportunity to link and integrate data in order to create and prove novel hypotheses, to repeat experiments or to compare recent data to data collected at a different time or place. However, recent studies have shown that retrieving relevant data for data reuse is a time-consuming task in daily research practice. In this study, we explore what hampers dataset retrieval in biodiversity research, a field that produces a large amount of heterogeneous data. In particular, we focus on scholarly search interests and metadata, the primary source of data in a dataset retrieval system. We show that existing metadata currently poorly reflect information needs and therefore are the biggest obstacle in retrieving relevant data. Our findings indicate that for data seekers in the biodiversity domain environments, materials and chemicals, species, biological and chemical processes, locations, data parameters and data types are important information categories. These interests are well covered in metadata elements of domain-specific standards. However, instead of utilizing these standards, large data repositories tend to use metadata standards with domain-independent metadata fields that cover search interests only to some extent. A second problem are arbitrary keywords utilized in descriptive fields such as title, description or subject. Keywords support scholars in a full text search only if the provided terms syntactically match or their semantic relationship to terms used in a user query is known.

Highlights

  • Scientific progress in biodiversity research, a field dealing with the diversity of life on earth— the variety of species, genetic diversity, diversity of functions, interactions and ecosystems [1], is increasingly achieved by the integration and analysis of heterogeneous datasets [2, 3]

  • We propose a top-down approach starting from scholars’ search interests, looking at metadata standards and inspecting the metadata provided in selected data repositories: (A) We first identified main entity types that are important in biodiversity research

  • We analyzed the user responses to determine whether the identified information categories are comprehensive and representative for biodiversity research

Read more

Summary

Introduction

Scientific progress in biodiversity research, a field dealing with the diversity of life on earth— the variety of species, genetic diversity, diversity of functions, interactions and ecosystems [1] -, is increasingly achieved by the integration and analysis of heterogeneous datasets [2, 3]. Locating and finding proper data for synthesis is a key challenge in daily research practice. Datasets can differ in format and size.

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call