Konstantinos G. Papaspyropoulos, Dimitris Kugiumtzis
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引用次数: 0
摘要
因果关系知识是了解生态系统动态机制的基础。为了从多变量时间序列中发现此类关系,格兰杰因果关系(Granger causality)这一最早在计量经济学中提出的概念,已在向量自回归(VAR)模型中得到阐述。生态学中经常出现的计数时间序列的格兰杰因果关系很少被探讨,这可能是由于在多变量计数时间序列上估计自回归模型存在困难。本研究通过使用几个变量数量和时间序列长度不同的系统进行模拟研究,探讨基于 VAR 的格兰杰因果关系是否适合生态计数时间序列。基于 VAR 的计数时间序列格兰杰因果关系(DVAR)似乎可以有效估计,即使是长时间序列中的两个计数。在所有研究的时间序列长度中,超过 8 个计数的 DVAR 与 VAR 在连续值时间序列上得到的格兰杰因果关系效果非常吻合。在两个生态时间序列中也取得的积极结果表明,基于 VAR 的格兰杰因果关系可用于评估现实世界计数时间序列中的因果关系,即使只有很少的独立整数值或很多零。
On the Validity of Granger Causality for Ecological Count Time Series
Knowledge of causal relationships is fundamental for understanding the dynamic mechanisms of ecological systems. To detect such relationships from multivariate time series, Granger causality, an idea first developed in econometrics, has been formulated in terms of vector autoregressive (VAR) models. Granger causality for count time series, often seen in ecology, has rarely been explored, and this may be due to the difficulty in estimating autoregressive models on multivariate count time series. The present research investigates the appropriateness of VAR-based Granger causality for ecological count time series by conducting a simulation study using several systems of different numbers of variables and time series lengths. VAR-based Granger causality for count time series (DVAR) seems to be estimated efficiently even for two counts in long time series. For all the studied time series lengths, DVAR for more than eight counts matches the Granger causality effects obtained by VAR on the continuous-valued time series well. The positive results, also in two ecological time series, suggest the use of VAR-based Granger causality for assessing causal relationships in real-world count time series even with few distinct integer values or many zeros.