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An algorithmic and information-theoretic approach to multimetric index construction

机译:多指标指标构建的算法和信息理论方法

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摘要

The use of multimetric indices (MMIs), such as the widely used index of biological integrity (IBI), to measure, track, summarize and infer the overall impact of human disturbance on biological communities has been steadily growing in recent years. Initially, MMIs were developed for aquatic communities using preselected biological metrics as indicators of system integrity. As interest in these bioassessment tools has grown, so have the types of biological systems to which they are applied. For many ecosystem types the appropriate biological metrics to use as measures of biological integrity are not known a priori. As a result, a variety of ad hoc protocols for selecting metrics empirically has developed. However, the assumptions made by proposed protocols have not be explicitly described or justified, causing many investigators to call for a clear, repeatable methodology for developing empirically derived metrics and indices that can be applied to any biological system. An issue of particular importance that has not been sufficiently addressed is the way that individual metrics combine to produce an MM1 that is a sensitive composite indicator of human disturbance. In this paper, we present and demonstrate an algorithm for constructing MMIs given a set of candidate metrics and a measure of human disturbance. The algorithm uses each metric to inform a candidate MMI, and then uses information-theoretic principles to select MMIs that capture the information in the multidimensional system response from among possible MMIs. Such an approach can be used to create purely empirical (data-based) MMIs or can, optionally, be influenced by expert opinion or biological theory through the use of a weighting vector to create value-weighted MMIs. We demonstrate the algorithm with simulated data to demonstrate the predictive capacity of the final MMIs and with real data from wetlands from Acadia and Rocky Mountain National Parks. For the Acadia wetland data, the algorithm identified 4 metrics that combined to produce a -0.88 correlation with the human disturbance index. When compared to other methods, we find this algorithmic approach resulted in MMIs that were more predictive and comprise fewer metrics.
机译:近年来,使用多指标指标(MMI)(例如广泛使用的生物完整性指标(IBI))来测量,跟踪,总结和推断人为干扰对生物群落的总体影响一直在稳步增长。最初,使用预先选择的生物学指标作为系统完整性的指标为水生社区开发MMI。随着对这些生物评估工具的兴趣的增长,应用它们的生物系统的类型也随之增长。对于许多生态系统类型而言,先验的已知适当的生物度量用作生物完整性度量。结果,已经开发了用于凭经验选择度量的各种临时协议。但是,尚未明确描述或提出由提议的协议做出的假设,导致许多研究人员呼吁采用清晰,可重复的方法来开发根据经验得出的可应用于任何生物系统的指标和指标。尚未得到充分解决的一个特别重要的问题是各个指标组合生成MM1的方式,该MM1是人为干扰的敏感综合指标。在本文中,我们介绍并演示了一种用于构造MMI的算法,其中给出了一组候选指标和一种人为干扰度量。该算法使用每个度量来通知候选MMI,然后使用信息论原理从可能的MMI中选择在多维系统响应中捕获信息的MMI。这样的方法可以用来创建纯粹的经验(基于数据)的MMI,也可以通过使用加权矢量来创建价值加权的MMI,而有选择地受到专家意见或生物学理论的影响。我们用模拟数据演示算法,以证明最终MMI的预测能力,并用来自阿卡迪亚和落基山国家公园的湿地的真实数据进行演示。对于阿卡迪亚湿地数据,该算法确定了4个度量标准,这些度量标准组合在一起产生与人类干扰指数的-0.88相关性。与其他方法相比,我们发现这种算法方法产生的MMI更具预测性,并且包含较少的指标。

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