2015
DOI: 10.1007/s10661-015-4825-7
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Exploring spatial patterns of farmland transactions and farmland use changes

Abstract: Strong economic incentives stimulate the conversion of farmland to non-farm uses possessing higher economic benefits, and rising land values can result in further conversions in the surrounding areas. However, previous studies focused exclusively on the analysis of attribute data, without concern for location or geographic information. Our study focuses on the application of spatial analysis method by exploring the magnitude and patterns of farmland use changes and farmland transactions in Tainan County in sou… Show more

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Cited by 7 publications
(3 citation statements)
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“…Therefore, we apply Moran's I to test for the significance of spatial patterns. If significant, positive spatial autocorrelation exists, then objects with similar characteristics will tend to be in close proximity to each other [23]. A weak or nonexistent spatial pattern indicates a lack of similarity, that is, in essence, a random pattern.…”
Section: Spatial Autocorrelation Coefficientmentioning
confidence: 99%
“…Therefore, we apply Moran's I to test for the significance of spatial patterns. If significant, positive spatial autocorrelation exists, then objects with similar characteristics will tend to be in close proximity to each other [23]. A weak or nonexistent spatial pattern indicates a lack of similarity, that is, in essence, a random pattern.…”
Section: Spatial Autocorrelation Coefficientmentioning
confidence: 99%
“…It can realize the visualization of geospatial data and identify patterns and spatial relationships that are not easy to find using traditional data analysis methods. Geospatial analysis methods, such as the gravity center model, superposition analysis, correlation analysis and geoscience information Tupu, have been applied and verified in the fields of farmland environment, farmland quality evaluation, farmland preservation policy and land use transitions [6,[29][30][31][32]. Farmland landscapes may have different evolution patterns and development trends in different periods and regions.…”
Section: Introductionmentioning
confidence: 99%
“…In addition to urban land expansion, continuous farmland shrinkage has also received much attention from scholars and politicians in recent years. Most existing researches about farmland loss have focused on the spatiotemporal patterns [37][38][39], influencing factors [40,41], the impact on grain production and food security [42,43], as well as the protection policy analysis [44][45][46]. Those studies usually took urban expansion or farmland loss as a relatively independent phenomenon and payed little attention to the interrelation of these two phenomena.…”
Section: Introductionmentioning
confidence: 99%