论文标题

利用机器学习利用生态系统修复项目中的传统生态知识

Leveraging traditional ecological knowledge in ecosystem restoration projects utilizing machine learning

论文作者

Rakova, Bogdana, Winter, Alexander

论文摘要

生态系统恢复已被认为对于在联合国所有可持续发展目标上取得加速进步至关重要。决策者,政策制定者,数据科学家,地球科学家和其他从事这些项目的学者可以从明确的考虑和包含各种观点中积极受益。在生态系统恢复项目的整个阶段的社区参与可能会有助于改善社区福祉,保护生物多样性,生态系统功能以及社会生态系统的韧性。对于将土著人民和当地社区与数据科学和机器学习工作实践的传统生态知识有意义地融合需要概念框架。自适应框架将通过改善围绕恢复和保护项目的社区和代理间沟通以及使相关的实时数据访问可访问社区和代理沟通,从而考虑并解决当地社区和地理位置的需求和挑战。在本文中,我们简要介绍了现有的机器学习(ML)应用程序针对森林生态系统修复项目的应用。我们继续质疑他们的固有局限性是否可以阻止他们能够充分解决所有相关利益相关者的福祉的社会文化方面。偏见和意外后果构成了基于ML的解决方案的下游负面影响的重大风险。我们建议,自适应和可扩展的实践可以激励在生态系统的ML恢复项目的所有阶段,并在人与算法参与者之间的激励措施来激励跨学科的合作。此外,将ML项目作为开放和重复性过程可以促进各个层面的访问,并创造激励措施,从而导致恢复工作规模的催化合作。

Ecosystem restoration has been recognized to be critical to achieving accelerating progress on all of the United Nations' Sustainable Development Goals. Decision makers, policymakers, data scientists, earth scientists, and other scholars working on these projects could positively benefit from the explicit consideration and inclusion of diverse perspectives. Community engagement throughout the stages of ecosystem restoration projects could contribute to improved community well-being, the conservation of biodiversity, ecosystem functions, and the resilience of socio-ecological systems. Conceptual frameworks are needed for the meaningful integration of traditional ecological knowledge of indigenous peoples and local communities with data science and machine learning work practices. Adaptive frameworks would consider and address the needs and challenges of local communities and geographic locations by improving community and inter-agent communication around restoration and conservation projects and by making relevant real-time data accessible. In this paper, we provide a brief analysis of existing Machine Learning (ML) applications for forest ecosystem restoration projects. We go on to question if their inherent limitations may prevent them from being able to adequately address socio-cultural aspects of the well-being of all involved stakeholders. Bias and unintended consequences pose significant risks of downstream negative implications of ML-based solutions. We suggest that adaptive and scalable practices could incentivize interdisciplinary collaboration during all stages of ecosystemic ML restoration projects and align incentives between human and algorithmic actors. Furthermore, framing ML projects as open and reiterative processes can facilitate access on various levels and create incentives that lead to catalytic cooperation in the scaling of restoration efforts.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源