文学生物多样性与作者社会空间处境的关系——对自然-文化纠缠的思考

IF 4.2 1区 环境科学与生态学 Q1 BIODIVERSITY CONSERVATION
Lars Langer, Manuel Burghardt, Roland Borgards, Ronny Richter, Christian Wirth
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引用次数: 0

摘要

用自然科学和人文科学相结合的方法来理解自然与文化的纠缠,在这两个领域都是少有的。通过结合数字人文科学和生态学的方法,我们旨在确定几种与个人对生物多样性的敏感性相关的人们的生活环境。决策者可以考虑和针对具有强相关性的情况,例如,通过制定具体的教育方案,提高人们的生态意识或调整相关法规。我们将机器学习技术应用于一个数据库,该数据库包括1705年至1969年创意文学(BiL)中提到的生物多样性频率信息,作为响应变量,与相应作品及其作者的元数据相关,作为预测变量,包括地域、年龄、性别和文学类型。该算法确定了响应对每个预测因子的依赖,这可以解释为生物多样性的特定敏感性参数的强度,并且我们还将其与时间联系起来。我们认识到性别、年龄、地区和定居规模是与BiL显著相关的预测因子。从统计学上讲,这些预测指标可被视为最终个体生物多样性意识水平的起点。例如,来自农村的作者比来自城市的作者表现出更高的BiL,我们将其解释为生物多样性意识依赖于与自然的空间距离的信号,这反过来可以在城市发展中得到解决。我们的结论是,在文学数据上应用机器学习技术会产生有意义的结果,从而显示出进一步类似调查的潜力,以及自然科学和人文科学方法的结合,以实现迄今为止无法实现的见解。通过我们的研究,这些见解可能有助于基于生态学的决策过程。在《华尔街日报》博客上阅读免费的《简明语言摘要》。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The relation between biodiversity in literature and social and spatial situation of authors: Reflections on the nature–culture entanglement
Abstract Understanding the nature–culture entanglement by combining the methods of natural sciences and humanities is little approached in neither of the fields. With a specific combination of methods from both digital humanities and ecology, we aimed at identifying several of people's life circumstances that relate to their individual sensitivity towards biodiversity. The circumstances with a strong correlation could be considered and targeted by decision‐makers, for example by developing specific education programmes for making people more eco‐conscious or adjusting relevant regulations. We applied machine learning techniques onto a database including information about the frequency of biodiversity mentioned in creative literature (BiL) from 1705 to 1969 as response variable related to metadata about the corresponding works and their authors as predictors, including localisation, age, gender and literature genre. The algorithm determined the response's dependency on each predictor, which can be interpreted as the intensity of this particular sensitivity parameter for biodiversity, and which we also related to time. We recognised that gender, age, region and settlement size are predictors significantly correlated to BiL. Statistically, these predictors can be viewed as starting points of the eventual individual level of awareness for biodiversity. For example, authors from villages exhibit a higher BiL than those from cities, which we interpret as a signal for the dependence of awareness for biodiversity on spatial distance from nature, which in turn can be addressed in urban development. Our conclusion is that applying a machine learning technique on literary data yields meaningful results, thereby showing potential for further similar investigations and the combination of methods from natural sciences and humanities to achieve so far unattainable insights. With our study, these insights could contribute to ecologically based decision‐making processes. Read the free Plain Language Summary for this article on the Journal blog.
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来源期刊
People and Nature
People and Nature Multiple-
CiteScore
10.00
自引率
9.80%
发文量
103
审稿时长
12 weeks
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