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Ocean-related options for climate change mitigation and adaptation: A machine learning-based evidence map protocol. / Veytia, Devi; Airoldi, Laura; Paris, PSL et al.
Yn: Protocol Exchange, 01.02.2024.

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HarvardHarvard

Veytia, D, Airoldi, L, Paris, PSL, Cooley, S, Magnan, A, Marti, V, Neill, S, Sumaila, R, Thebaud, O, Voolstra, C, Williamson, P, Bonin, M, Langridge, J, Comte, A, Viard, F, Shin, Y, Bopp, L & Gattuso, J-P 2024, 'Ocean-related options for climate change mitigation and adaptation: A machine learning-based evidence map protocol', Protocol Exchange. https://doi.org/10.21203/rs.3.pex-2324/v1

APA

Veytia, D., Airoldi, L., Paris, PSL., Cooley, S., Magnan, A., Marti, V., Neill, S., Sumaila, R., Thebaud, O., Voolstra, C., Williamson, P., Bonin, M., Langridge, J., Comte, A., Viard, F., Shin, Y., Bopp, L., & Gattuso, J.-P. (2024). Ocean-related options for climate change mitigation and adaptation: A machine learning-based evidence map protocol. Protocol Exchange. https://doi.org/10.21203/rs.3.pex-2324/v1

CBE

Veytia D, Airoldi L, Paris PSL, Cooley S, Magnan A, Marti V, Neill S, Sumaila R, Thebaud O, Voolstra C, et al. 2024. Ocean-related options for climate change mitigation and adaptation: A machine learning-based evidence map protocol. Protocol Exchange. https://doi.org/10.21203/rs.3.pex-2324/v1

MLA

VancouverVancouver

Veytia D, Airoldi L, Paris PSL, Cooley S, Magnan A, Marti V et al. Ocean-related options for climate change mitigation and adaptation: A machine learning-based evidence map protocol. Protocol Exchange. 2024 Chw 1. doi: 10.21203/rs.3.pex-2324/v1

Author

Veytia, Devi ; Airoldi, Laura ; Paris, PSL et al. / Ocean-related options for climate change mitigation and adaptation: A machine learning-based evidence map protocol. Yn: Protocol Exchange. 2024.

RIS

TY - JOUR

T1 - Ocean-related options for climate change mitigation and adaptation: A machine learning-based evidence map protocol

AU - Veytia, Devi

AU - Airoldi, Laura

AU - Paris, PSL

AU - Cooley, Sarah

AU - Magnan, Alexandre

AU - Marti, Vicky

AU - Neill, Simon

AU - Sumaila, Rashid

AU - Thebaud, Olivier

AU - Voolstra, Christian

AU - Williamson, Phillip

AU - Bonin, Marie

AU - Langridge, Joseph

AU - Comte, Adrien

AU - Viard, Frederique

AU - Shin, Yunne

AU - Bopp, Laurent

AU - Gattuso, Jean-Pierre

PY - 2024/2/1

Y1 - 2024/2/1

N2 - BackgroundOcean-related options (OROs) to mitigate and adapt to climate change are receiving increasing attention from practitioners, decision-makers, and researchers. In order to guide future ORO development and implementation, a catalogue of scientific evidence addressing outcomes related to different ORO types is critical. However, until now, such a synthesis has been hindered by the large size of the evidence base. Here, we detail a protocol using a machine learning-based approach to systematically map the extent and distribution of academic evidence relevant to the development, implementation, and outcomes of OROs.MethodTo produce this systematic map, literature searches will be conducted in English across two bibliographic databases using a string of search terms relating to the ocean, climate change, and OROs. A sample of articles from the resulting de-duplicated corpus will be manually screened at the title and abstract level for inclusion or exclusion against a set of predefined eligibility criteria in order to select all relevant literature on marine and coastal socio-ecological systems, the type of ORO and its outcomes. Descriptive metadata on the type and location of intervention, study methodology, and outcomes will be coded from the included articles in the sample. This sample of screening and coding decisions will be used to train a machine learning model that will be used to estimate these labels for all the remaining unseen publications. The results will be reported in a narrative synthesis summarising key trends, knowledge gaps, and knowledge clusters.

AB - BackgroundOcean-related options (OROs) to mitigate and adapt to climate change are receiving increasing attention from practitioners, decision-makers, and researchers. In order to guide future ORO development and implementation, a catalogue of scientific evidence addressing outcomes related to different ORO types is critical. However, until now, such a synthesis has been hindered by the large size of the evidence base. Here, we detail a protocol using a machine learning-based approach to systematically map the extent and distribution of academic evidence relevant to the development, implementation, and outcomes of OROs.MethodTo produce this systematic map, literature searches will be conducted in English across two bibliographic databases using a string of search terms relating to the ocean, climate change, and OROs. A sample of articles from the resulting de-duplicated corpus will be manually screened at the title and abstract level for inclusion or exclusion against a set of predefined eligibility criteria in order to select all relevant literature on marine and coastal socio-ecological systems, the type of ORO and its outcomes. Descriptive metadata on the type and location of intervention, study methodology, and outcomes will be coded from the included articles in the sample. This sample of screening and coding decisions will be used to train a machine learning model that will be used to estimate these labels for all the remaining unseen publications. The results will be reported in a narrative synthesis summarising key trends, knowledge gaps, and knowledge clusters.

U2 - 10.21203/rs.3.pex-2324/v1

DO - 10.21203/rs.3.pex-2324/v1

M3 - Article

JO - Protocol Exchange

JF - Protocol Exchange

ER -