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Manning, Paul 2020-03-17 This file contains: the raw data, the R code used to produce the results + figures, and the documentation which explains the different variables used in the analysis.
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Zhao, Qiqi; Cornejo, Lara; Manning, Paul; Sherren, Kate 2023-08-11 In this work, we collected eBird and iNaturalist observations in the Upper Bay of Fundy area (around the Minas Basin) from 2016-2021 to explore the utility of citizen science datasets in spatially restricted landscapes like dykelands and tidal wetlands with scarce primary biodiversity data. This was done as a report to the NSERC Strategic Partnership Grants for Networks project called ResNet, as part of Landscape one of its six landscape case studies (https://www.nsercresnet.ca/landscape-1---bay-of-fundy.html). The short report (5 pages) briefly describes the results of the analysis, with relevant references, and the Technical Appendices (37 pages) include the analytical approaches, large versions of each map from the spatial analysis, as well as full species lists for each of the three two-year time slices taken.
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Manning, Paul 2021-05-14 This is the accompanying raw data and R code for: Using community science to explore the spatial distribution of the daylily gall midge (Cecidomyiidae) in Maritime Canada - Cattiaux et al (2021)
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Manning, Paul 2020-10-13 This dataverse contains the data for a paper on dung beetle functioning in response to ivermectin residues.

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