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We find that: 1) contrary to expectation, maximum dry season temperatures are projected to become as or more limiting for cocoa as dry season water availability; 2) to reduce the vulnerability of cocoa to excessive dry season temperatures, the systematic use of adaptation strategies like shade trees in cocoa farms will be necessary, in reversal of the current trend of shade reduction; 3) there is a strong differentiation of climate vulnerability within the cocoa belt, with the most vulnerable areas near the forest-savanna transition in Nigeria and eastern Côte d'Ivoire, and the least vulnerable areas in the southern parts of Cameroon, Ghana, Côte d'Ivoire and Liberia; 4) this spatial differentiation of climate vulnerability may lead to future shifts in cocoa production within the region, with the opportunity of partially compensating losses and gains, but also the risk of local production expansion leading to new deforestation.","citation:dsDescriptionDate":"2016-03-11"},"publication":{"publicationCitation":"Schroth, G., Läderach, P., Martinez-Valle, A., Bunn, C. and Jassogne, L. 2016. “Vulnerability to climate change of cocoa in West Africa: Patterns, opportunities and limits to adaptation” Science of The Total Environment (ScienceDirect).","publicationIDType":"doi","publicationIDNumber":"10.1016/j.scitotenv.2016.03.024","publicationURL":"http://dx.doi.org/10.1016/j.scitotenv.2016.03.024"},"citation:producer":{"citation:producerName":"International Center for Tropical Agriculture","citation:producerAbbreviation":"CIAT","citation:producerURL":"http://ciat.cgiar.org/","citation:producerLogoURL":"http://ciat-library.ciat.cgiar.org/dm_images/CIAT-Logo-255x128.png"},"citation:dateOfCollection":{"citation:dateOfCollectionStart":"2012","citation:dateOfCollectionEnd":"2015"},"geospatial:geographicCoverage":{"geospatial:otherGeographicCoverage":"West Africa"},"citation:datasetContact":{"citation:datasetContactName":"CIAT Data and Research Methods","citation:datasetContactAffiliation":"International Center for Tropical Agriculture - CIAT","citation:datasetContactEmail":"CIAT-DM@CGIAR.ORG"},"subject":["Earth and Environmental Sciences","Agricultural Sciences"],"language":"English","title":"Replication Data for: Vulnerability to climate change of cocoa in West Africa: Patterns, opportunities and limits to adaptation","dateOfDeposit":"2016-03-17","citation:depositor":"Martinez Valle, Armando","kindOfData":["Geospatial Data","Climate Data","GIS Data","Tiff files"],"@id":"https://doi.org/10.7910/DVN/5W7LGW","@type":["ore:Aggregation","schema:Dataset"],"schema:version":"1.6","schema:name":"Replication Data for: Vulnerability to climate change of cocoa in West Africa: Patterns, opportunities and limits to adaptation","schema:dateModified":"Mon Jul 08 16:06:45 UTC 2019","schema:datePublished":"2016-03-23","schema:creativeWorkStatus":"RELEASED","dvcore:termsOfUse":"<a rel=\"license\" href=\"http://creativecommons.org/licenses/by/4.0/\" target=\"_blank\"><img alt=\"Creative Commons License\" style=\"border-width:0\" src=\"https://i.creativecommons.org/l/by/4.0/88x31.png\" /></a><br />\r\nThese data and documents are licensed under a <a href=\"http://creativecommons.org/licenses/by/4.0/\" target=\"_blank\"> Creative Commons Attribution 4.0 International license.</a> You may copy, distribute and transmit the data as long as you acknowledge the source through proper <a href=\"http://best-practices.dataverse.org/data-citation/\" target=\"_blank\">data citation</a>.","dvcore:disclaimer":"Whilst utmost care has been taken CIAT and data authors while collecting and compiling the data, the data is however offered \"as is\" with no express or implied warranty. In no event shall the data authors, CIAT, or relevant funding agencies be liable for any actual, incidental or consequential damages arising from use of the data.\r\n<BR/><BR/>\r\nBy using the CIAT Dataverse, the user expressly acknowledges that the Data may contain some nonconformities, defects, or errors. No warranty is given that the data will meet the user's needs or expectations or that all nonconformities, defects, or errors can or will be corrected. \r\n<BR/><BR/>\r\nThe user should always verify actual data; therefore the user bears all responsibility in determining whether the data is fit for the user’s intended use.  The user of the data should use the related publications as a baseline for their analysis whenever possible. Doing so will be an added safeguard against misinterpretation of the data. Related publications are listed in the metadata section of the Dataverse study.","dvcore:fileTermsOfAccess":{"dvcore:fileRequestAccess":false},"schema:includedInDataCatalog":"Harvard Dataverse","schema:isPartOf":{"schema:name":"CIAT - International Center for Tropical Agriculture Dataverse","@id":"https://dataverse.harvard.edu/dataverse/CIAT","schema:description":"<a href=\"http://ciat.cgiar.org\" target=\"_blank\">The International Center for Tropical Agriculture</a> (CIAT), a member of the <a href=\"http://www.cgiar.org/\" target=\"_blank\">CGIAR</a> Consortium, believes that open access contributes to its mission of reducing hunger and poverty, and improving human nutrition in the tropics through research aimed at increasing the eco-efficiency of agriculture.  Research data produced by CIAT and its Partners is distributed freely whenever possible. Kindly note that these datasets require proper citation and citation information is included with the metadata for each dataset. Please use email button above to contact the CIAT Data, Information, Knowledge Group for questions about CIAT Data.\r\n<br/>","schema:isPartOf":{"schema:name":"Harvard Dataverse","@id":"https://dataverse.harvard.edu/dataverse/harvard","schema:description":"<span><span><span><h3>Share, archive, and get credit for your data. Find and cite data across all research fields.</h3></span></span></span>"}},"ore:aggregates":[{"schema:description":"Current climatic suitability for cocoa in West Africa.","schema:name":"01. 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