Data from: Analysing the dynamics and relative influence of variables affecting ecosystem responses using functional PCA and boosted trees: a seagrass case study
1. Understanding the relative influence of variables on ecosystem responses and the dynamics of their effect is necessary for effective ecosystem monitoring and management. Also known as causal pathways anlaysis, we develop an approach using functional Principal Components Analysis (fPCA) and machin...
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Zusammenfassung: | 1. Understanding the relative influence of variables on ecosystem
responses and the dynamics of their effect is necessary for effective
ecosystem monitoring and management. Also known as causal pathways
anlaysis, we develop an approach using functional Principal Components
Analysis (fPCA) and machine learning within a scenario analysis framework.
2. fPCA is used to identify most influential variables for correlated,
non-homogenoeus and non-linear time series data characteristic of complex
ecosystems. Hierarchical clustering of fPCA scores reveals groups of more
homogeneous scenarios and similarly influential variables. The resultant
subset of variables helps to overcome model identifiability problems when
analysing time-lagged effects using Boosted Regression Trees (BRT). 3. We
use simulated data generated by a Dynamic Bayesian Network (DBN) of
ecological windows for seagrass ecosystems given dredging stressors; 3024
scenarios with 75 state variables are analysed. The BRT demonstrated a
high level of fit ((R^2≈0.97,MSE≈0.16), supporting the validity of
influential variables identified by fPCA. Influential variables identified
included genus, location type, light, growth and seed. Six consecutive
months of positive growth and adequate light were important for predicting
states of high or moderate population. 4. Compared to traditional scenario
analysis and sensitivity analysis approaches, our approach simultaneously
enabled capture of n-way interactions while accounting for time
correlations. Although some variables and their dynamics agreed with
existing knowledge, new variables and/or time lags of their effects were
identified, corresponding to opportunities for further investigation as
well as informing monitoring and management. Although our method was
demonstrated on state variables with DBN simulated data, it is equally
applicable to general time series data. |
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DOI: | 10.5061/dryad.j943d68 |