We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Spatial convergent cross mapping to detect causal relationships from short time series.
- Authors
Clark, Adam Thomas; Ye, Hao; Isbell, Forest; Deyle, Ethan R.; Cowles, Jane; Tilman, G. David; Sugihara, George
- Abstract
Recent developments in complex systems analysis have led to new techniques for detecting causal relationships using relatively short time series, on the order of 30 sequential observations. Although many ecological observation series are even shorter, perhaps fewer than ten sequential observations, these shorter time series are often highly replicated in space (i.e., plot replication). Here, we combine the existing techniques of convergent cross mapping (CCM) and dewdrop regression to build a novel test of causal relations that leverages spatial replication, which we call multispatial CCM. Using examples from simulated and real-world ecological data, we test the ability of multispatial CCM to detect causal relationships between processes. We find that multispatial CCM successfully detects causal relationships with as few as five sequential observations, even in the presence of process noise and observation error. Our results suggest that this technique may constitute a useful test for causality in systems where experiments are difficult to perform and long time series are not available. This new technique is available in the multispatialCCM package for the R programming language.
- Subjects
GEOMORPHOLOGY; SEDIMENT transport; META-analysis; HYDRAULICS; BIOTIC communities; RIVER ecology
- Publication
Ecology, 2015, Vol 96, Issue 5, p1174
- ISSN
0012-9658
- Publication type
Article
- DOI
10.1890/14-1479.1