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A comparative study of reciprocal averaging and other ordination techniques

Hugh G. Gauch, +2 more
- 01 Mar 1977 - 
- Vol. 65, Iss: 1, pp 157-174
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TLDR
Comparison of ordination performance of reciprocal averaging with non-standardized and standardized principal components analysis (PCA) and polar or Bray-Curtis ordination (PO) found that RA is much superior to PCA at high beta diversities and on the whole preferable toPCA at low Beta diversities.
Abstract
SUMMARY Reciprocal averaging is a technique of indirect ordination, related both to weighted averages and to principal components analysis and other eigenvector techniques. A series of tests with simulated community gradients (coenoclines), simulated community patterns (coenoplanes), and sets of vegetation samples was used to compare ordination performance of reciprocal averaging (RA) with non-standardized and standardized principal components analysis (PCA) and polar or Bray-Curtis ordination (PO). Of these, non-standardized PCA is most vulnerable to effects of beta diversity, giving distorted ordinations of sample sets with three or more half-changes. PO and RA give good ordinations to five or more half-changes, and standardized PCA is intermediate. Sample errors affect all these techniques more at low than at high beta diversity, but PCA is most vulnerable to effects of sample errors. All three techniques could ordinate well a small (1-5 x 1-5 half-changes) simulated community pattern; and PO and RA could ordinate larger patterns (4 5 x 4-5 half-changes) well. PCA distorts larger community patterns into complex surfaces. Given a rectangular pattern (1-5 x 4-5 halfchanges), RA distorts the major axis of sample variation into an arch in the second axis of ordination. Clusters of samples tend to distort PCA ordinations in rather unpredictable ways, but they have smaller effects on RA, and none on PO. Outlier samples do not affect PO (unless used as endpoints), but can cause marked deterioration in RA and PCA ordinations. RA and PO are little subject to the involution of axis extremes that affects nonstandardized PCA. Despite the arch effect, RA is much superior to PCA at high beta diversities and on the whole preferable to PCA at low beta diversities. Second and higher axes of PCA and RA may express ecologically meaningless, curvilinear functions of lower axes. When curvilinear displacements are combined with sample error, axis interpretation is difficult. None of the techniques solves all the problems for ordination that result from the curvilinear relationships characteristic of community data. For applied ordination research consideration of sample set properties, careful use of supporting information to evaluate axes, and comparison of results of RA or PCA with PO and direct ordination are suggested.

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Journal Article

Plant community variability on a small area in southeastern Montana

TL;DR: In this article, the authors used polar ordination and stepwise discriminant analysis to identify plant communities in a prairie grassland in southeastern Montana and found that cover of litter was one of the most useful variables in distinguishing among vegetation luiits on the study area.
Journal ArticleDOI

La végétation des contreforts des Laurentides : une analyse des gradients écologiques et du niveau successionnel des communautés

Sylvie Gauthier, +1 more
- 01 Feb 1990 - 
TL;DR: Ordination and classification analyses show that soil moisture and richness, two factors strongly associated to topographical variations, are the ecological factors that best explain vegetation distribution.
Journal ArticleDOI

Weed Species Shifts with Increasing Field Age in Alaska

Jeffery S. Conn, +1 more
- 01 Jul 1983 - 
TL;DR: Vegetative cover of weeds was determined in 84 agricultural fields representing a number of crops in Alaska, highlighting the importance of using weed - free seed and other management practices to minimize the spread of introduced weeds.
Journal ArticleDOI

Effects of sample distribution along gradients on eigenvector ordination

TL;DR: In general, disproportionately heavy sampling of the ends of a gradient increases the interpretability of eigenvector ordinations as mentioned in this paper, and in particular, correspondence analysis and detrended correspondence analysis (DCA) best reproduce the original positions of samples in simulated coenoclines when samples are clustered toward the end of the axis.
Journal ArticleDOI

A comparison of reciprocal averaging and non-centred principal components analysis

Exequiel Ezcurra
- 01 Jul 1987 - 
TL;DR: In this paper, a non-centred principal components analysis (NPCA) was used to ordinate sites and species simultaneously, and can be solved either by direct iteration or by eigenvector calculation.
References
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Journal ArticleDOI

An Ordination of the Upland Forest Communities of Southern Wisconsin

TL;DR: It is shown that nature of unit variation is a naajor problenl in systematies, and that whether this variation is diserete, continuous, or in some other form, there is a need for appliGation of (uantitative and statistical methods.
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Multidimensional scaling by optimizing goodness of fit to a nonmetric hypothesis

TL;DR: The fundamental hypothesis is that dissimilarities and distances are monotonically related, and a quantitative, intuitively satisfying measure of goodness of fit is defined to this hypothesis.
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Nonmetric multidimensional scaling: A numerical method

TL;DR: The numerical methods required in the approach to multi-dimensional scaling are described and the rationale of this approach has appeared previously.
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Evolution and measurement of species diversity

Robert H. Whittaker
- 01 May 1972 - 
Journal ArticleDOI

Some distance properties of latent root and vector methods used in multivariate analysis

John C. Gower
- 01 Dec 1966 - 
TL;DR: In this paper, the authors derived necessary and sufficient conditions for a solution to exist in real Euclidean space for a multivariate multivariate sample of size n as points P1, P2,..., PI in a Euclidian space and discussed the interpretation of the distance A(Pi, Pj) between the ith and jth members of the sample.