Using machine learning to uncover synergies between forest restoration and livelihood support in the Himalayas

IF 3.6 2区 社会学 Q1 ECOLOGY Ecology and Society Pub Date : 2024-03-31 DOI:10.5751/es-14696-290132
Pushpendra Rana, Harry W. Fischer, Eric A. Coleman, Forrest Fleischman
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Abstract

In recent years, governments and international organizations have initiated numerous large-scale tree planting projects with the dual goals of restoring landscapes and supporting rural livelihoods. However, there remains a need for greater knowledge of drivers and conditions that enable positive social and environmental outcomes over the long term. In this study, we used interpretable machine learning (IML) to explore win–win and win–lose outcomes between livelihood benefits and forest cover using four decades of tree plantation data from northern India. Our results indicated that, in areas with a larger population of socioeconomically marginalized groups, moderate levels of education, and existing histories of community collective action, there is a higher probability of achieving joint positive outcomes. We also found that joint positive outcomes are more common within a consolidated local institutional space, suggesting that decentralized governance structures with cross-sectoral duties and functions may be better equipped to mediate conflicts between intersecting forest and land use challenges. Finally, our findings showed that non-forestry and anti-poverty interventions such as universal labor generation programs and universal education are associated with improved forest cover alongside livelihood benefits from plantations. Whereas contemporary policy discussions have given substantial attention to tree plantation schemes, our work suggests that effective restoration requires much more than planting alone. A broad mixture of socioeconomic, institutional, and policy interventions is needed to create favorable conditions for long-term success. In particular, anti-poverty programs may serve as important indirect policy pathways for ensuring restoration gains.

The post Using machine learning to uncover synergies between forest restoration and livelihood support in the Himalayas first appeared on Ecology & Society.

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利用机器学习发现喜马拉雅山森林恢复与生计支持之间的协同作用
近年来,各国政府和国际组织发起了许多大规模植树项目,以实现恢复景观和支持农村生计的双重目标。然而,我们仍然需要更多地了解能够长期产生积极的社会和环境成果的驱动因素和条件。在这项研究中,我们利用印度北部四十年的植树造林数据,使用可解释机器学习(IML)来探索生计效益和森林覆盖率之间的双赢和双输结果。我们的研究结果表明,在社会经济边缘化群体人口较多、教育水平中等、社区集体行动历史悠久的地区,实现共同积极成果的可能性较高。我们还发现,在巩固的地方制度空间内,联合积极成果更为常见,这表明具有跨部门职责和功能的分权治理结构可能更有能力调解相互交织的森林和土地使用挑战之间的冲突。最后,我们的研究结果表明,非林业和反贫困干预措施(如普及劳动力生成计划和普及教育)与植树造林带来的生计惠益一起,与森林覆盖率的提高相关联。尽管当代的政策讨论对植树造林计划给予了极大关注,但我们的研究表明,有效的恢复所需要的远不止植树造林这么简单。要想创造长期成功的有利条件,就需要广泛的社会经济、制度和政策干预措施。使用机器学习发现喜马拉雅山森林恢复与生计支持之间的协同效应》一文首次发表于《生态与社会》。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Ecology and Society
Ecology and Society 环境科学-生态学
CiteScore
6.20
自引率
4.90%
发文量
109
审稿时长
3 months
期刊介绍: Ecology and Society is an electronic, peer-reviewed, multi-disciplinary journal devoted to the rapid dissemination of current research. Manuscript submission, peer review, and publication are all handled on the Internet. Software developed for the journal automates all clerical steps during peer review, facilitates a double-blind peer review process, and allows authors and editors to follow the progress of peer review on the Internet. As articles are accepted, they are published in an "Issue in Progress." At four month intervals the Issue-in-Progress is declared a New Issue, and subscribers receive the Table of Contents of the issue via email. Our turn-around time (submission to publication) averages around 350 days. We encourage publication of special features. Special features are comprised of a set of manuscripts that address a single theme, and include an introductory and summary manuscript. The individual contributions are published in regular issues, and the special feature manuscripts are linked through a table of contents and announced on the journal''s main page. The journal seeks papers that are novel, integrative and written in a way that is accessible to a wide audience that includes an array of disciplines from the natural sciences, social sciences, and the humanities concerned with the relationship between society and the life-supporting ecosystems on which human wellbeing ultimately depends.
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