2016
DOI: 10.1590/0103-9016-2015-0163
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Determinants of farmers’ adaptation to climate change: A micro level analysis in Ghana

Abstract: This study analyzed socio-economic factors that influence farmers' adaptation to climate change in agriculture. Perceptions regarding long-term changes in climate variables and the rate of occurrence of weather extremes were also investigated. Additionally, farmers' perceived barriers to the use of adaptation practices were identified and ranked. A total of 100 farm-households were randomly selected from four communities in the Lawra district of Ghana and data were collected through semi-structured questionnai… Show more

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Cited by 134 publications
(103 citation statements)
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“…Firstly, the binary propensity score model was run to investigate rice farmers' preference of CSA participation and climate change adaptation response and to estimate the propensity score as the predicted probability of treatment (see equation (1)). Several previous studies also used the binary logistic model to determine key factors affecting farmers' decisions on adaptation response to climate change [6,28,29] as well as to identify influencing factors on farmers' participation decisions [11,[30][31][32]. The propensity score model is generally described as follows:…”
Section: Methodological Frameworkmentioning
confidence: 99%
See 1 more Smart Citation
“…Firstly, the binary propensity score model was run to investigate rice farmers' preference of CSA participation and climate change adaptation response and to estimate the propensity score as the predicted probability of treatment (see equation (1)). Several previous studies also used the binary logistic model to determine key factors affecting farmers' decisions on adaptation response to climate change [6,28,29] as well as to identify influencing factors on farmers' participation decisions [11,[30][31][32]. The propensity score model is generally described as follows:…”
Section: Methodological Frameworkmentioning
confidence: 99%
“…These variables included education level, farming experience, agricultural extension services, belief in climate change, trust in public adaptation, social norm, and geographical settings (e.g., province and access to water source). More educated farmers were reported to affect the choice of climate change adaptation [29,39]. They also suggested that the preference of adaptation choice was positively influenced by access to information (e.g., agricultural extension services).…”
Section: Data Descriptionmentioning
confidence: 99%
“…(1) where: F = frequency; W = weight of each scale; i = weight; WI = weighted index (Adesoji and Famuyiwa, 2010;Devkota et al, 2014;Uddin et al, 2014;Ndamani and Watanabe, 2016). Component (iii) was rated based on the frequency of the farmers who responded to the multiple-response questions on the different adaptation strategies they used.…”
Section: Kwara State Is Composed Of 16mentioning
confidence: 99%
“…Although we have gained some general ideas about local adaptation strategies among farmers, other studies found that climate change adaptation actions varied partly due to socio-economic factors and geographical locations [8], [9]. Regional adaptation actions can be effective when adaptation policies better incorporate the adaptive capacity of a farmer or farming community [1], [10]- [12].…”
Section: Introductionmentioning
confidence: 99%