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Numerical Ecology with R

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TLDR
This book is aimed at professional researchers, practitioners, graduate students and teachers in ecology, environmental science and engineering, and in related fields such as oceanography, molecular ecology, agriculture and soil science, who already have a background in general and multivariate statistics and wish to apply this knowledge to their data using the R language.
Abstract
Numerical Ecology with R provides a long-awaited bridge between a textbook in Numerical Ecology and the implementation of this discipline in the R language. After short theoretical overviews, the authors accompany the users through the exploration of the methods by means of applied and extensively commented examples. Users are invited to use this book as a teaching companion at the computer. The travel starts with exploratory approaches, proceeds with the construction of association matrices, then addresses three families of methods: clustering, unconstrained and canonical ordination, and spatial analysis. All the necessary data files, the scripts used in the chapters, as well as the extra R functions and packages written by the authors, can be downloaded from a web page accessible through the Springer web site(http://adn.biol.umontreal.ca/ numericalecology/numecolR/). This book is aimed at professional researchers, practitioners, graduate students and teachers in ecology, environmental science and engineering, and in related fields such as oceanography, molecular ecology, agriculture and soil science, who already have a background in general and multivariate statistics and wish to apply this knowledge to their data using the R language, as well as people willing to accompany their disciplinary learning with practical applications. People from other fields (e.g. geology, geography, paleoecology, phylogenetics, anthropology, the social and education sciences, etc.) may also benefit from the materials presented in this book. The three authors teach numerical ecology, both theoretical and practical, to a wide array of audiences, in regular courses in their Universities and in short courses given around the world. Daniel Borcard is lecturer of Biostatistics and Ecology and researcher in Numerical Ecology at Universite de Montreal, Quebec, Canada. Francois Gillet is professor of Community Ecology and Ecological Modelling at Universite de Franche-Comte, Besancon, France. Pierre Legendre is professor of Quantitative Biology and Ecology at Universite de Montreal, Fellow of the Royal Society of Canada, and ISI Highly Cited Researcher in Ecology/Environment.

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Anticipating social equity impacts in REDD+ policy design: An example from the Democratic Republic of Congo

TL;DR: In this article, the impact of prevailing social and ecological conditions on the potential equity outcome of REDD+ intervention at the local level is discussed, and a flexible adaptive management and equity-aware approach is recommended from the policy design to implementation, by anticipating and mitigating potential risks.

Continuous variation of macroinvertebrate communities along environmental gradients in northern streams

TL;DR: In this paper, the authors examined the nature of macroinvertebrate community variation across a set of streams in three drainage basins in Finland and concluded that geographical location and local environmental factors are strongly intertwined.
Journal ArticleDOI

Inferring the relative resilience of alternative states.

TL;DR: Time series modeling of phytoplankton communities at three sites in a floodplain in central Spain revealed a decrease in the importance of short-term variability in the communities, suggesting that community dynamics slowed down in the dry relative to the wet state and a paradox: increasing species richness may not necessarily enhance resilience.
Journal ArticleDOI

The use of metabarcoding for meiofauna ecological patterns assessment.

TL;DR: The similarity between the model selected for diversity descriptors, the richness of nematode genera and meiofauna composition emphasized the utility of predictive models for metabarcoding estimates to detect small-scale interactions of these organisms.
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