Discoveries and novel insights in ecology using structural equation modeling

IF 0.2 Q4 EVOLUTIONARY BIOLOGY
D. Laughlin, J. Grace
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引用次数: 12

Abstract

As we enter the era of data science (Lortie 2018), quantitative analysis methodologies are proliferating rapidly, leaving ecologists with the task of choosing among many alternatives. The use of structural equation modeling (SEM) by ecologists has increased in recent years, prompting us to ask users questions about their experience with the methodology. Responses indicate an enthusiastic endorsement of SEM. Two major elements of respondent’s experiences seem to contribute to their positive response, (1) a sense that they are obtaining more accurate explanatory understanding through the use of SEM and (2) excitement generated by the discovery of novel insights into their systems. We elaborate here on the detection of indirect effects, offsetting effects, and suppressed effects, and demonstrate how discovering these effects can advance ecology.
使用结构方程建模的生态学发现和新见解
随着我们进入数据科学时代(Lortie 2018),定量分析方法正在迅速扩散,生态学家面临着在众多替代方案中进行选择的任务。近年来,生态学家越来越多地使用结构方程建模(SEM),这促使我们向用户询问他们使用该方法的经验。回答表明对SEM的热情支持。受访者经历的两个主要因素似乎有助于他们的积极反应,(1)他们通过使用SEM获得更准确的解释性理解的感觉,以及(2)对他们的系统发现新见解所产生的兴奋。我们在这里详细介绍了间接效应、抵消效应和抑制效应的检测,并展示了发现这些效应如何促进生态学。
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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来源期刊
Ideas in Ecology and Evolution
Ideas in Ecology and Evolution EVOLUTIONARY BIOLOGY-
自引率
0.00%
发文量
4
审稿时长
36 weeks
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