# The Jensen Effect and Functional Single Index Models: Estimating the   Ecological Implications of Nonlinear Reaction Norms

**Authors:** Zi Ye, Giles Hooker, Stephen Ellner

arXiv: 1901.01864 · 2019-12-17

## TL;DR

This paper introduces a new method to estimate and test the ecological impact of environmental variability on species using a functional single index model, focusing on the Jensen Effect to understand nonlinear responses.

## Contribution

It develops a novel approach for estimating the Jensen Effect directly from observational data, enhancing understanding of nonlinear environmental responses in ecology.

## Key findings

- Method performs well in simulations
- Effective on real ecological data
- Provides insights into species coexistence mechanisms

## Abstract

This paper develops tools to characterize how species are affected by environmental variability, based on a functional single index model relating a response such as growth rate or survival to environmental conditions. In ecology, the curvature of such responses are used, via Jensen's inequality, to determine whether environmental variability is harmful or beneficial, and differing nonlinear responses to environmental variability can contribute to the coexistence of competing species.   Here, we address estimation and inference for these models with observational data on individual responses to environmental conditions. Because nonparametric estimation of the curvature (second derivative) in a nonparametric functional single index model requires unrealistic sample sizes, we instead focus on directly estimating the effect of the nonlinearity, by comparing the average response to a variable environment with the response at the expected environment, which we call the Jensen Effect. We develop a test statistic to assess whether this effect is significantly different from zero. In doing so we re-interpret the SiZer method of Chaudhuri and Marron (1995) by maximizing a test statistic over smoothing parameters. We show that our proposed method works well both in simulations and on real ecological data from the long-term data set described in Drake (2005).

## Full text

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## Figures

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## References

28 references — full list in the complete paper: https://tomesphere.com/paper/1901.01864/full.md

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Source: https://tomesphere.com/paper/1901.01864