A model-free test for independence between time series

被引:0
作者
G. Alpargu
J. Buonaccorsi
机构
[1] University of Massachusetts,Department of Mathematics and Statistics
[2] California State University Fullerton,Department of Mathematics
来源
Journal of Agricultural, Biological, and Environmental Statistics | 2009年 / 14卷
关键词
Adjusted degrees of freedom; Autocorrelated process; Effective samplesize; Measurement error; Modified ; -test; Spatial synchrony.;
D O I
暂无
中图分类号
学科分类号
摘要
The problem of assessing the independence of time series arises in many situations, including evaluating the spatial synchrony of populations in different locations over time. Tests for independence generally have relied on assuming a particular dynamic model for each of the series, and those that do not, require long series. We adapt a test for association between spatial processes to provide a model-free (MF) test for independence between two time series under the assumption that each series is stationary and normally distributed. We evaluate the performance of the test through simulations and compare it with the naive (N) test, which ignores serial correlations, as well as with tests based on residuals from fitting specific dynamic models. We also consider additional tests that involve bootstrapping the MF and N tests. We find that the MF test generally preserves the desired test size, although this is not the case in some extreme settings. The MF test is clearly superior to residual-based tests that arise from fitting an incorrect model. The bootstrap tests are not as robust as the general MF test, but when they are valid, they seem to be more powerful. We also examine the robustness of the procedure to the additional measurement errors present in many applications, explore the extent to which some deficiencies in the MF test are due to estimation of the unknown covariances, and investigate the effect of nonnormality on the MF test. We illustrate the MF test’s performance through an example assessing mouse populations from different locations.
引用
收藏
页码:115 / 132
页数:17
相关论文
共 56 条
  • [1] Adler G. H.(1994)Tropical Forest Fragmentation and Isolation Promote Asynchrony Among Populations of a Frugivorous Rodent Journal of Animal Ecology 63 903-911
  • [2] Alpargu G.(2003)To Be or not to Be Valid in Testing the Significance of the Slope in Simple Quantitative Linear Models With Autocorrelated Errors Journal of Statistical Computation and Simulation 73 165-180
  • [3] Dutilleul P.(2001)Measuring and Testing for Spatial Synchrony Ecology 82 1668-1679
  • [4] Buonaccorsi J. P.(1985)Testing the Association Between Two Spatial Processes Statistics and Decisions 2 155-160
  • [5] Elkington J. S.(1989)Assessing the Significance of the Correlation Between Two Spatial Processes Biometrics 45 123-134
  • [6] Evans S. R.(1994)Density Dependence in Time Series Observations of Natural Populations: Estimation and Testing Ecology 64 205-224
  • [7] Liebhold A. M.(2003)Robust Tests for Independence of Two Time Series Statistica Sinica 13 827-852
  • [8] Clifford P.(1993)Modifying the Biometrics 49 305-314
  • [9] Richardson S.(1997) Test for Assessing the Correlation Between Two Spatial Processes Canadian Journal of Statistics 25 233-256
  • [10] Clifford P.(1996)Tests for Non-Correlation of Two Multivariate ARMA Time Series Ecology 77 2332-2342