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走向生态学中统计方法的务实应用。

Towards a pragmatic use of statistics in ecology.

作者信息

Castilho Leonardo Braga, Prado Paulo Inácio

机构信息

Universidade de Brasília, Brasília, Brazil.

Departamento de Ecologia/Instituto de Biociências, Universidade de São Paulo, São Paulo, São Paulo, Brazil.

出版信息

PeerJ. 2021 Sep 1;9:e12090. doi: 10.7717/peerj.12090. eCollection 2021.

Abstract

Although null hypothesis testing (NHT) is the primary method for analyzing data in many natural sciences, it has been increasingly criticized. Recently, approaches based on information theory (IT) have become popular and were held by many to be superior because it enables researchers to properly assess the strength of the evidence that data provide for competing hypotheses. Many studies have compared IT and NHT in the context of model selection and stepwise regression, but a systematic comparison of the most basic uses of statistics by ecologists is still lacking. We used computer simulations to compare how both approaches perform in four basic test designs (t-test, ANOVA, correlation tests, and multiple linear regression). Performance was measured by the proportion of simulated samples for which each method provided the correct conclusion (power), the proportion of detected effects with a wrong sign (S-error), and the mean ratio of the estimated effect to the true effect (M-error). We also checked if the -value from significance tests correlated to a measure of strength of evidence, the Akaike weight. In general both methods performed equally well. The concordance is explained by the monotonic relationship between -values and evidence weights in simple designs, which agree with analytic results. Our results show that researchers can agree on the conclusions drawn from a data set even when they are using different statistical approaches. By focusing on the practical consequences of inferences, such a pragmatic view of statistics can promote insightful dialogue among researchers on how to find a common ground from different pieces of evidence. A less dogmatic view of statistical inference can also help to broaden the debate about the role of statistics in science to the entire path that leads from a research hypothesis to a statistical hypothesis.

摘要

尽管零假设检验(NHT)是许多自然科学领域分析数据的主要方法,但它受到的批评越来越多。最近,基于信息论(IT)的方法开始流行,许多人认为这种方法更优越,因为它能使研究人员正确评估数据为相互竞争的假设提供的证据强度。许多研究在模型选择和逐步回归的背景下比较了IT和NHT,但生态学家对统计学最基本用途的系统比较仍然缺乏。我们使用计算机模拟来比较这两种方法在四种基本测试设计(t检验、方差分析、相关性检验和多元线性回归)中的表现。通过每种方法得出正确结论的模拟样本比例(功效)、检测到的效应符号错误的比例(S误差)以及估计效应与真实效应的平均比率(M误差)来衡量表现。我们还检查了显著性检验的p值是否与证据强度的一种度量——赤池权重相关。总体而言,两种方法表现相当。这种一致性可以通过简单设计中p值与证据权重之间的单调关系来解释,这与分析结果一致。我们的结果表明,即使研究人员使用不同的统计方法,他们也能就从数据集中得出的结论达成一致。通过关注推断的实际后果,这种务实的统计学观点可以促进研究人员之间关于如何从不同证据中找到共同点的有见地的对话。对统计推断不那么教条的观点也有助于将关于统计学在科学中的作用的辩论扩展到从研究假设到统计假设的整个路径。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/48d3/8418218/401cd9748d8a/peerj-09-12090-g001.jpg

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