Abstract

Recent years have seen an explosion in the availability of biodiversity data describing the distribution, function, and evolutionary history of life on earth. Integrating these heterogeneous data remains a challenge due to large variations in observational scales, collection purposes, and terminologies. Here, we conceptualize widely used biodiversity data types according to their domain (what aspect of biodiversity is described?) and informational resolution (how specific is the description?). Applying this framework to major data providers in biodiversity research reveals a strong focus on the disaggregated end of the data spectrum, whereas aggregated data types remain largely underutilized. We discuss the implications of this imbalance for the scope and representativeness of current macroecological research and highlight the synergies arising from a tighter integration of biodiversity data across domains and resolutions. We lay out effective strategies for data collection, mobilization, imputation, and sharing and summarize existing frameworks for scalable and integrative biodiversity research. Finally, we use two case studies to demonstrate how the explicit consideration of data domain and resolution helps to identify biases and gaps in global data sets and achieve unprecedented taxonomic and geographical data coverage in macroecological analyses.

Highlights

  • We present two case studies based on the Global Inventory of Floras and Traits (GIFT) database [28] to demonstrate the importance of data resolution and cross-domain data integration for addressing key questions in macroecology

  • The availability, quality, and interoperability of data is paramount to the progress of biogeography and ecology as increasingly data-driven disciplines [5,30,93]

  • Our results show that a coarse-grained but near-complete knowledge of global plant distributions and basic functional traits is within reach when exploiting the full potential of data mobilization and imputation

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Summary

Expert range maps

This opens up new opportunities and poses new challenges with respect to data collection, mobilization, and sharing, as well as the utilization of synergies across data types

Data collection and processing
Data mobilization
Very high
Data sharing
Data integration
Case studies
Conclusion and future directions
Findings
Supporting information
Full Text
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