A new ChatGPT-empowered, easy-to-use machine learning paradigm for environmental science

Haoyuan An , Xiangyu Li , Yuming Huang , Weichao Wang , Yuehan Wu , Lin Liu , Weibo Ling , Wei Li , Hanzhu Zhao , Dawei Lu , Qian Liu , Guibin Jiang
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Abstract

The quantity and complexity of environmental data show exponential growth in recent years. High-quality big data analysis is critical for performing a sophisticated characterization of the complex network of environmental pollution. Machine learning (ML) has been employed as a powerful tool for decoupling the complexities of environmental big data based on its remarkable fitting ability. Yet, due to the knowledge gap across different subjects, ML concepts and algorithms have not been well-popularized among researchers in environmental sustainability. In this context, we introduce a new research paradigm—“ChatGPT + ML + Environment”, providing an unprecedented chance for environmental researchers to reduce the difficulty of using ML models. For instance, each step involved in applying ML models to environmental sustainability, including data preparation, model selection and construction, model training and evaluation, and hyper-parameter optimization, can be easily performed with guidance from ChatGPT. We also discuss the challenges and limitations of using this research paradigm in the field of environmental sustainability. Furthermore, we highlight the importance of “secondary training” for future application of “ChatGPT + ML + Environment”.

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为环境科学提供全新的、由 ChatGPT 支持的、易于使用的机器学习范例
近年来,环境数据的数量和复杂性呈指数级增长。高质量的大数据分析对于复杂的环境污染网络进行精密的特征描述至关重要。机器学习(ML)凭借其卓越的拟合能力,已被用作一种强大的工具,用于解耦环境大数据的复杂性。然而,由于不同学科之间存在知识鸿沟,机器学习的概念和算法在环境可持续发展领域的研究人员中尚未得到广泛普及。在此背景下,我们引入了一种新的研究范式--"ChatGPT + ML + 环境",为环境研究人员提供了一个前所未有的机会,以降低使用 ML 模型的难度。例如,在 ChatGPT 的指导下,将 ML 模型应用于环境可持续性的每个步骤,包括数据准备、模型选择和构建、模型训练和评估以及超参数优化,都可以轻松完成。我们还讨论了在环境可持续性领域使用这种研究范式所面临的挑战和局限性。此外,我们还强调了 "二次训练 "对于 "ChatGPT + ML + 环境 "未来应用的重要性。
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来源期刊
Eco-Environment & Health
Eco-Environment & Health 环境科学与生态学-生态、环境与健康
CiteScore
11.00
自引率
0.00%
发文量
18
审稿时长
22 days
期刊介绍: Eco-Environment & Health (EEH) is an international and multidisciplinary peer-reviewed journal designed for publications on the frontiers of the ecology, environment and health as well as their related disciplines. EEH focuses on the concept of “One Health” to promote green and sustainable development, dealing with the interactions among ecology, environment and health, and the underlying mechanisms and interventions. Our mission is to be one of the most important flagship journals in the field of environmental health. Scopes EEH covers a variety of research areas, including but not limited to ecology and biodiversity conservation, environmental behaviors and bioprocesses of emerging contaminants, human exposure and health effects, and evaluation, management and regulation of environmental risks. The key topics of EEH include: 1) Ecology and Biodiversity Conservation Biodiversity Ecological restoration Ecological safety Protected area 2) Environmental and Biological Fate of Emerging Contaminants Environmental behaviors Environmental processes Environmental microbiology 3) Human Exposure and Health Effects Environmental toxicology Environmental epidemiology Environmental health risk Food safety 4) Evaluation, Management and Regulation of Environmental Risks Chemical safety Environmental policy Health policy Health economics Environmental remediation
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