ASGM-KG: Unveiling Alluvial Gold Mining Through Knowledge Graphs

Debashis Gupta, Aditi Golder, Luis Fernendez, Miles Silman, Greg Lersen, Fan Yang, Bob Plemmons, Sarra Alqahtani, Paul Victor Pauca
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Abstract

Artisanal and Small-Scale Gold Mining (ASGM) is a low-cost yet highly destructive mining practice, leading to environmental disasters across the world's tropical watersheds. The topic of ASGM spans multiple domains of research and information, including natural and social systems, and knowledge is often atomized across a diversity of media and documents. We therefore introduce a knowledge graph (ASGM-KG) that consolidates and provides crucial information about ASGM practices and their environmental effects. The current version of ASGM-KG consists of 1,899 triples extracted using a large language model (LLM) from documents and reports published by both non-governmental and governmental organizations. These documents were carefully selected by a group of tropical ecologists with expertise in ASGM. This knowledge graph was validated using two methods. First, a small team of ASGM experts reviewed and labeled triples as factual or non-factual. Second, we devised and applied an automated factual reduction framework that relies on a search engine and an LLM for labeling triples. Our framework performs as well as five baselines on a publicly available knowledge graph and achieves over 90 accuracy on our ASGM-KG validated by domain experts. ASGM-KG demonstrates an advancement in knowledge aggregation and representation for complex, interdisciplinary environmental crises such as ASGM.
ASGM-KG:通过知识图谱揭开砂金开采的神秘面纱
个体和小规模采金业(ASGM)是一种低成本但破坏性极大的采矿活动,在全球热带流域造成了环境灾难。个体和小规模采金业横跨多个研究和信息领域,包括自然和社会系统,而知识往往被分散在各种媒体和文件中。因此,我们引入了一个知识图谱(ASGM-KG),它整合并提供了有关个体和小规模采金业实践及其环境影响的重要信息。当前版本的 ASGM-KG 由 1,899 个三元组组成,这些三元组使用大型语言模型 (LLM) 从非政府组织和政府组织发布的文件和报告中提取。这些文件都是由一组具有 ASGM 专业知识的热带生态学家精心挑选的。该知识图谱通过两种方法进行验证。首先,一小组 ASGM 专家对三元组进行审查,并将其标记为事实或非事实。其次,我们设计并应用了一个自动事实还原框架,该框架依赖于搜索引擎和 LLM 来标记三元组。我们的框架在公开知识图谱上的表现与五条基准线不相上下,在经领域专家验证的 ASGM-KG 上的准确率超过 90%。ASGM-KG 展示了针对复杂、跨学科环境危机(如 ASGM)的知识聚合和表示方法的进步。
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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