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Characterizing Large Scale Land Acquisitions Through Network Analysis

机译:通过网络分析表征大规模土地征用

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Large Scale Land Acquisitions (LSLAs) by private companies or states have seen a sudden increase in recent years, mainly due to combined and increasing demands for biofuel (i.e., caused by the increase in oil prices) and food (i.e., caused by the increase in world population and changes in dietary habits). These highly controversial phenomena raise many questions about production models, people's rights, resource governance, and are often at the root of conflicts with local populations. A valuable source of open access information about LSLAs, which fosters the study of such phenomena, is the database collected by the Land Matrix initiative. The database lists land deals of at least 200 ha and details for example, their nature (e.g. agriculture, infrastructure, mining), their current status (e.g. ongoing, abandoned, pending), and the investing companies. The information about land deals collected in the Land Matrix database comes from heterogeneous sources such as press articles, government data, individual contributions and scientific publications. In this work, we focus on a land trade network built upon the Land Matrix data about top companies and target countries related to each deal in the database. Modeling the information about LSLAs in a land trade network allows us to leverage on network analysis techniques, which will help to characterize land acquisition deals from an original point of view. In order to take a first step in this direction, we provide: (ⅰ) a centrality based analysis of the land trade network, including an analysis based on the correlation of centrality measures with different country development indicators, and (ⅱ) an analysis based on network motifs (i.e., recurring, statistically significant subgraphs), which provides an insight into higher order correlations between countries, thus providing fresh knowledge about recurring patterns in transnational land trade deals.
机译:近年来,私人公司或州的大规模土地收购(LSLA)突然增加,这主要是由于对生物燃料(即,石油价格上涨所致)和粮食(即,价格上涨所致)的综合需求不断增加世界人口和饮食习惯的变化)。这些极富争议性的现象引发了有关生产模式,人民权利,资源治理的许多问题,并且常常是与当地居民发生冲突的根源。 Land Matrix计划收集的数据库是有关LSLA的开放获取信息的宝贵来源,可促进对此类现象的研究。该数据库列出了至少200公顷的土地交易以及详细信息,例如其性质(例如农业,基础设施,采矿),其当前状态(例如进行中,废弃,待决)以及投资公司。在“土地矩阵”数据库中收集的有关土地交易的信息来自不同来源,例如新闻文章,政府数据,个人贡献和科学出版物。在这项工作中,我们专注于建立在土地矩阵数据上的土地贸易网络,该数据涉及数据库中与每笔交易相关的顶级公司和目标国家。在土地交易网络中对有关LSLA的信息进行建模,使我们能够利用网络分析技术,这将有助于从原始角度表征土地收购交易。为了朝这个方向迈出第一步,我们提供:(ⅰ)对土地贸易网络进行基于中心度的分析,包括基于中心度测度与不同国家发展指标的相关性进行的分析,以及(ⅱ)基于网络主题(即重复出现的,具有统计意义的子图),可以深入了解国家之间的高阶相关性,从而提供有关跨国土地贸易交易中重复出现的模式的新鲜知识。

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