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首页> 外文期刊>Fisheries: A Bulletin of the American Fisheries Society >Detecting Temporal Trends in Freshwater Fisheries Surveys: Statistical Power and the Important Linkages between Management Questions and Monitoring Objectives
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Detecting Temporal Trends in Freshwater Fisheries Surveys: Statistical Power and the Important Linkages between Management Questions and Monitoring Objectives

机译:在淡水渔业调查中发现时间趋势:统计能力和管理问题与监测目标之间的重要联系

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摘要

Monitoring to detect temporal trends in biological and habitat indices is a critical component of fisheries management. Thus, it is important that management objectives are linked to monitoring objectives. This linkage requires a definition of what constitutes a management-relevant temporal trend. It is also important to develop expectations for the amount of time required to detect a trend (i.e., statistical power) and for choosing an appropriate statistical model for analysis. We provide an overview of temporal trends commonly encountered in fisheries management, review published studies that evaluated statistical power of long-term trend detection, and illustrate dynamic linear models in a Bayesian context, as an additional analytical approach focused on shorter term change. We show that monitoring programs generally have low statistical power for detecting linear temporal trends and argue that often management should be focused on different definitions of trends, some of which can be better addressed by alternative analytical approaches.
机译:监测监测生物和栖息地指数的时间趋势是渔业管理的重要组成部分。因此,将管理目标与监控目标联系起来非常重要。这种联系需要定义什么构成与管理相关的时间趋势。对检测趋势所需的时间量(即统计能力)以及选择适当的统计模型进行分析也应制定预期。我们提供了渔业管理中通常遇到的时间趋势的概述,回顾了评估长期趋势检测的统计能力的已发表研究,并举例说明了在贝叶斯背景下的动态线性模型,作为针对短期变化的附加分析方法。我们表明,监视程序通常对于检测线性时间趋势具有较低的统计能力,并认为管理应经常集中于趋势的不同定义,其中一些可以通过替代分析方法更好地解决。

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