Global evidence for non-random dynamics in fish recruitment
Charles T. Perretti, Stephan B. Munch, Michael J. Fogarty, George, Sugihara

TL;DR
This study demonstrates strong evidence of non-random, deterministic patterns in fish recruitment fluctuations across numerous populations, using a novel nonparametric analysis that does not rely on specific models.
Contribution
It introduces a model-free, nonparametric method to detect non-random dynamics in fish recruitment time series, applicable across diverse data sources and fish families.
Findings
Evidence of non-random dynamics in fish recruitment is robust.
Support for non-randomness increases with more observations.
Method is applicable across various abundance estimation techniques.
Abstract
Understanding what controls apparently random fluctuations in fish recruitment is a major challenge in fisheries science. Our current inability to anticipate recruitment failures has led to costly management actions and in some cases complete fishery collapse. Time series observations of fish recruitment reflect an interplay of underlying population processes, environmental forcing, measurement error, and process error. Given that the error component is often very strong, an important unresolved question is whether any non-random signal can be uncovered in the annual fluctuations of recruitment time series. Here, we address this fundamental question in an analysis of 569 fish populations from a global database of recruitment. Using a nonparametric time series analysis method, we find overwhelming evidence for non-random dynamics operating in the recruitment process. Unlike previous…
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Taxonomy
TopicsMarine and fisheries research · Fish Ecology and Management Studies · Evolutionary Game Theory and Cooperation
