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密度依赖性测试,是吗?

Density dependence tests, are they?

作者信息

Wolda Henk, Dennis Brian

机构信息

Smithsonian Tropical Research Institute, Unit 0948, APO AA, 34002-0948, USA.

Dept. Fish and Wildlife Resources, University of Idaho, 83843, Moscow, ID, USA.

出版信息

Oecologia. 1993 Oct;95(4):581-591. doi: 10.1007/BF00317444.

Abstract

A large number of time series of abundances of insects and birds from a variety of data sets were submitted to a new density dependence test. The results varied enormously between data sets, but the relation between the frequency of statistically significant density dependence (SSDD) and the length of the series was similar to that of the power curve of the test, making the results consistent with the hypothesis of the density-dependent model being universally applicable throughout the data used. Pest and non-pest species did not differ in the incidence of SSDD. The more sampling error present in the data, the higher the percentages of SSDD. This was expected given that the power of the test increases with increasing sampling error in the data. Many of the data used here, as well as in the literature, clearly violate the basic assumption of the test that the organism concerned should be univoltine and semelparous. Yet the incidence of SSDD was the same in univoltine as in bi/polyvoltine species and the same in semelparous organisms as in birds that are reproductively active in more than one year. The seasonal migrant Autographa gamma in Britain and Czechoslovakia and even rainfall data were found to have SSDD. Statistical significance, however, does not automatically lead to the conclusion of density-dependent regulation. Any series of random variables which are in a stochastic equilibrium, such as a series of independent, identically distributed, random variables, is typically described better by the alternative (density-dependent) model than by the null (density-independent) model. Significant test results were often obtained with sloppy data, with data that clearly violate the basic assumptions of the test and with other data where an interpretation of the results in terms of densitydependent regulation was absurd. Given the fact that other explanations have to be found for significant test results for all these cases, mechanisms other than regulation may very well be applicable too where the data are entirely appropriate for the test. The test is simply a data-based choice between a model without and one with a stochastic equilibrium. A time series as such does not contain any information about the causes of the fluctuation pattern, so that one cannot expect statistics to produce such information from that time series. A significant test result using suitable data is entirely consistent with the hypothesis of density-dependent regulation, but also with any other suitable hypotheses. Because the test results were generally consistent with the hypothesis of a universal applicability of the density-dependence model, a negative test result may only mean that the time series was not long enough for the density dependence that was present to become statistically significant. Positive results are difficult to interpret, but so are negative results. A final decision needs to be based not so much on the test result as on much detailed information about the population concerned. Because the "density-dependence test" does not test for the presence of the mechanism of density-dependent regulation and because of the loaded, multiple meanings of the term "density-dependence", calling the test a "test of statistical density dependence" may be preferable.

摘要

大量来自各种数据集的昆虫和鸟类丰度时间序列被用于一项新的密度依赖性测试。不同数据集的结果差异极大,但统计上显著的密度依赖性(SSDD)频率与序列长度之间的关系类似于该测试的幂曲线,这使得结果与密度依赖性模型在所有使用的数据中普遍适用的假设相一致。害虫和非害虫物种在SSDD发生率上没有差异。数据中存在的抽样误差越多,SSDD的百分比就越高。鉴于测试的功效会随着数据中抽样误差的增加而提高,这是可以预料到的。这里使用的许多数据以及文献中的数据,显然都违反了该测试的基本假设,即所涉及的生物应该是单化性和单次生殖的。然而,单化性物种和双化/多化性物种的SSDD发生率相同,单次生殖生物和每年多次繁殖的鸟类的SSDD发生率也相同。在英国和捷克斯洛伐克的季节性迁徙昆虫苜蓿丫纹夜蛾甚至降雨数据都被发现具有SSDD。然而,统计显著性并不自动导致密度依赖性调节的结论。任何处于随机平衡的一系列随机变量,例如一系列独立、同分布的随机变量,通常用替代(密度依赖性)模型比用零假设(密度独立性)模型描述得更好。在数据不严谨、明显违反测试基本假设的数据以及其他根据密度依赖性调节来解释结果很荒谬的数据中,经常会得到显著的测试结果。鉴于对于所有这些情况的显著测试结果都必须找到其他解释,那么在数据完全适合该测试的情况下,除了调节机制之外的其他机制很可能也适用。该测试仅仅是在一个没有随机平衡的模型和一个有随机平衡的模型之间基于数据的选择。这样的一个时间序列并不包含关于波动模式原因的任何信息,因此不能期望统计数据能从那个时间序列中产生这样的信息。使用合适数据得到的显著测试结果完全符合密度依赖性调节的假设,但也符合任何其他合适的假设。因为测试结果总体上与密度依赖性模型普遍适用性的假设一致,所以负面的测试结果可能仅仅意味着时间序列不够长,以至于存在的密度依赖性没有在统计上变得显著。正面结果难以解释,负面结果也是如此。最终的决定与其基于测试结果,不如基于关于相关种群的更多详细信息。由于“密度依赖性测试”并不测试密度依赖性调节机制的存在,并且由于“密度依赖性”这个术语有多重含义,将该测试称为“统计密度依赖性测试”可能更合适。

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