为什么要进行统计创新?

IF 4.4 2区 环境科学与生态学 Q1 ECOLOGY
Ecology Pub Date : 2025-03-10 DOI:10.1002/ecy.70056
Elise F. Zipkin, Kathy Cottingham
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引用次数: 0

摘要

生态学兴奋地推出了一种新的文章类型,“统计创新”,以取代“统计报告”。统计创新将扩展生态学在生态学一般领域内发布定量方法最重要发展的悠久传统。一个多世纪以来,生态学发表了开创性的工作,推动了生态数据的分析,包括关键建模框架的发展,这些框架已被广泛应用于个体、种群、群落和生态系统的分析。该杂志在采用数据收集和分析的新方法方面发挥了重要作用,发表了“操作指南”,并强调了各种定量技术的优点和局限性。《统计生态学的一个世纪》(A century of statistical Ecology)汇编于2024年4月,可在https://esajournals.onlinelibrary.wiley.com/doi/toc/10.1002/(ISSN)1939-9170.century-stat-ecology上查阅,它回顾了生态学迄今在统计生态学领域的发展中所发挥的关键作用。我们希望生态学保持在定量创新的前沿,因为需要复杂的定量方法继续增长,以处理无数类型的现代生态数据。虽然许多统计生态学论文已经变得越来越技术化,有了更多的目标读者,但最重要的方法发展要达到广泛的生态社区是至关重要的。鉴于该杂志在这一领域有影响力的工作的悠久历史,生态学是这类论文的理想出路。我们引入统计创新的目标是发表最好的统计生态学论文,具有广泛的吸引力。我们将统计生态学广义地定义为包括使用数学方程、概率和经验数据研究生态系统的任何研究。统计创新文章通过将数据的分析和解释放在最前沿,采取数据第一的观点。我们鼓励提交专注于从个体到宏观系统的任何生物水平以及跨越时间和/或空间的数据分析。关注模型验证、模型选择、统计工具综合和超越子学科的最佳实践的提交也受到欢迎和鼓励。在未来,我们希望统计创新将发展到包括与机器学习,人工智能和尚未探索的主题相关的生态学的新发展。为了给作者提供一个顺畅高效的出版流程,我们计划“快速跟踪”统计创新提交,并引入一个新的同行评审流程,指导审稿人在更短、更有针对性的评审中关注大局。处理编辑将在精简过程中发挥积极作用,以尽量减少出版所需的修订次数。此外,对长度的唯一限制是那些在生态学的标准文章,这消除了对统计报告的限制。完整的细节可以在作者指南中找到https://esajournals.onlinelibrary.wiley.com/hub/journal/19399170/author-guidelines.Scientists,在当前的出版领域充斥着研究论文。在过去的100年里,《生态学》一直是美国生态学会出版的重要而可靠的信息来源。我们设想生态学将继续在我们不断变化的世界中对关键主题进行可靠,可信和专业审查的统计生态学研究的前沿。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Why statistical innovations?

Ecology is excited to introduce a new article type, “Statistical Innovations,” which replaces “Statistical Reports.” Statistical Innovations will extend Ecology's long tradition of publishing the most important developments in quantitative methods within the general field of ecology. For over a century, Ecology has issued seminal work advancing the analysis of ecological data, including the development of key modeling frameworks that have been widely adopted in the analysis of individuals, populations, communities, and ecosystems. The journal has played an important role in the uptake of new approaches to data collection and analysis by publishing “how-to” guides and highlighting both the strengths and limitations of various quantitative techniques. The collection “A century of statistical Ecology,” collated in April 2024 and available at https://esajournals.onlinelibrary.wiley.com/doi/toc/10.1002/(ISSN)1939-9170.century-stat-ecology, reviews the critical role that Ecology has played in the development of the field of statistical ecology to date.

We want Ecology to remain at the forefront of quantitative innovations as the need for complex quantitative methods continues to grow to handle the myriad types of modern ecological data. While many statistical ecology papers have become increasingly technical, with more targeted audiences, it is critical for the most significant methods developments to reach the broad ecological community. Ecology is the ideal outlet for such papers given the journal's long history of impactful work in this area.

We introduce Statistical Innovations with the goal of publishing the very best statistical ecology papers that have wide appeal. We define statistical ecology broadly to include any research that studies ecological systems using mathematical equations, probability, and empirical data. Statistical Innovations articles take a data-first perspective by putting the analysis and interpretation of data at the forefront. We encourage submissions focused on any biological level from individuals to macrosystems and analyses of data across time and/or space. Submissions that focus on model validation, model selection, syntheses about statistical tools, and best practices that transcend subdisciplines are also welcomed and encouraged. In the future, we hope that Statistical Innovations will grow to encompass new developments in ecology related to machine learning, artificial intelligence, and as yet unexplored topics.

To provide a smooth and efficient publishing process for authors, we plan to “Fast Track” Statistical Innovations submissions and introduce a new peer review process that instructs reviewers to focus on the big picture in shorter, more targeted reviews. Handling editors will take an active role in streamlining the process to minimize the number of revisions required for publication. Additionally, the only constraints on length are those for a standard article at Ecology, which removes the restrictions that had been on Statistical Reports. Complete details are available in the author guidelines at https://esajournals.onlinelibrary.wiley.com/hub/journal/19399170/author-guidelines.

Scientists are flooded with research papers in the current publishing landscape. For the past 100 years, Ecology has been an important and reliable source of information published by the Ecological Society of America. We envision that Ecology will remain at the forefront of sound, trusted, and expertly reviewed statistical ecology research on critical topics in our changing world.

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来源期刊
Ecology
Ecology 环境科学-生态学
CiteScore
8.30
自引率
2.10%
发文量
332
审稿时长
3 months
期刊介绍: Ecology publishes articles that report on the basic elements of ecological research. Emphasis is placed on concise, clear articles documenting important ecological phenomena. The journal publishes a broad array of research that includes a rapidly expanding envelope of subject matter, techniques, approaches, and concepts: paleoecology through present-day phenomena; evolutionary, population, physiological, community, and ecosystem ecology, as well as biogeochemistry; inclusive of descriptive, comparative, experimental, mathematical, statistical, and interdisciplinary approaches.
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