检测负密度依赖性的简单补救措施

IF 1.9 4区 环境科学与生态学 Q3 ECOLOGY Plant Ecology Pub Date : 2023-12-19 DOI:10.1007/s11258-023-01381-7
Pavel Fibich, Jan Lepš
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引用次数: 0

摘要

同种负密度依赖性(CNDD)是通过降低高密度下的种群增长率来维持高物种多样性的过程之一,从而使局部较不常见的物种优于常见物种。但是,检测 CNDD 的方法可能会产生错误信号,特别是由于容易出错的预测因子导致回归稀释和回归斜率被低估,从而高估了 CNDD。利用巴罗科罗拉多岛热带森林地块的模拟数据和实际观测数据,我们发现,在经典回归方法不成功的地方,主轴回归可以大大减少预测因子误差的影响。最佳主轴法正确识别了(1)模拟数据中 93% 的无 CNDD 案例,以及(2)真实物种观测数据中的无 CNDD 案例,与使用两次普查之间的存活率进行的直接评估结果一致。如果在有树苗但没有成虫的四分区中引入人工/虚拟成虫,误差会更大。虽然主轴法可以作为减少这些偏差的简单补救措施,但要正确识别 CNDD 等动态过程,对地块的重复普查和对亲代后代的识别仍能提供最相关的数据。
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Simple remedy for pitfalls in detecting negative density dependence

Conspecific negative density dependence (CNDD) is one of the processes that can maintain high species diversity by decreasing population growth rates at high densities, and can thereby favour locally less common species over common ones. But the methods for detection of CNDD can produce false signals, in particular, overestimate CNDD, due to error prone predictors causing regression dilution and underestimation of regression slope. Using simulated and real observed data from tropical forest plot in Barro Colorado Island, we showed that major axis regression can considerably decrease the effects of errors in predictors where classical regression methods did not succeed. The best major axis method correctly identified (1) 93% of no CNDD cases in simulated data, and (2) no CNDD in real species observed data in concordance with direct assessment using survival between censuses. The errors were mostly higher if artificial/virtual adults were introduced in the quadrats with saplings, but without adults. Although major axis methods can be used as a simple remedy for the reductions of these biases, to properly identify dynamic processes like CNDD, repeated census of the plot and identification of parent’s offspring still provide the most relevant data.

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来源期刊
Plant Ecology
Plant Ecology 环境科学-林学
CiteScore
3.40
自引率
0.00%
发文量
58
审稿时长
8.6 months
期刊介绍: Plant Ecology publishes original scientific papers that report and interpret the findings of pure and applied research into the ecology of vascular plants in terrestrial and wetland ecosystems. Empirical, experimental, theoretical and review papers reporting on ecophysiology, population, community, ecosystem, landscape, molecular and historical ecology are within the scope of the journal.
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