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Measuring specialization in species interaction networks

Blüthgen, Nico ; Menzel, Florian ; Blüthgen, Nils (2006)
Measuring specialization in species interaction networks.
In: BMC Ecology, 6 (1)
Artikel, Bibliographie

Kurzbeschreibung (Abstract)

BACKGROUND:Network analyses of plant-animal interactions hold valuable biological information. They are often used to quantify the degree of specialization between partners, but usually based on qualitative indices such as 'connectance' or number of links. These measures ignore interaction frequencies or sampling intensity, and strongly depend on network size.RESULTS:Here we introduce two quantitative indices using interaction frequencies to describe the degree of specialization, based on information theory. The first measure (d') describes the degree of interaction specialization at the species level, while the second measure (H2') characterizes the degree of specialization or partitioning among two parties in the entire network. Both indices are mathematically related and derived from Shannon entropy. The species-level index d' can be used to analyze variation within networks, while H2' as a network-level index is useful for comparisons across different interaction webs. Analyses of two published pollinator networks identified differences and features that have not been detected with previous approaches. For instance, plants and pollinators within a network differed in their average degree of specialization (weighted mean d'), and the correlation between specialization of pollinators and their relative abundance also differed between the webs. Rarefied sampling effort in both networks and null model simulations suggest that H2' is not affected by network size or sampling intensity.CONCLUSION:Quantitative analyses reflect properties of interaction networks more appropriately than previous qualitative attempts, and are robust against variation in sampling intensity, network size and symmetry. These measures will improve our understanding of patterns of specialization within and across networks from a broad spectrum of biological interactions.

Typ des Eintrags: Artikel
Erschienen: 2006
Autor(en): Blüthgen, Nico ; Menzel, Florian ; Blüthgen, Nils
Art des Eintrags: Bibliographie
Titel: Measuring specialization in species interaction networks
Sprache: Englisch
Publikationsjahr: 2006
Titel der Zeitschrift, Zeitung oder Schriftenreihe: BMC Ecology
Jahrgang/Volume einer Zeitschrift: 6
(Heft-)Nummer: 1
URL / URN: http://www.biomedcentral.com/1472-6785/6/9
Kurzbeschreibung (Abstract):

BACKGROUND:Network analyses of plant-animal interactions hold valuable biological information. They are often used to quantify the degree of specialization between partners, but usually based on qualitative indices such as 'connectance' or number of links. These measures ignore interaction frequencies or sampling intensity, and strongly depend on network size.RESULTS:Here we introduce two quantitative indices using interaction frequencies to describe the degree of specialization, based on information theory. The first measure (d') describes the degree of interaction specialization at the species level, while the second measure (H2') characterizes the degree of specialization or partitioning among two parties in the entire network. Both indices are mathematically related and derived from Shannon entropy. The species-level index d' can be used to analyze variation within networks, while H2' as a network-level index is useful for comparisons across different interaction webs. Analyses of two published pollinator networks identified differences and features that have not been detected with previous approaches. For instance, plants and pollinators within a network differed in their average degree of specialization (weighted mean d'), and the correlation between specialization of pollinators and their relative abundance also differed between the webs. Rarefied sampling effort in both networks and null model simulations suggest that H2' is not affected by network size or sampling intensity.CONCLUSION:Quantitative analyses reflect properties of interaction networks more appropriately than previous qualitative attempts, and are robust against variation in sampling intensity, network size and symmetry. These measures will improve our understanding of patterns of specialization within and across networks from a broad spectrum of biological interactions.

Fachbereich(e)/-gebiet(e): 10 Fachbereich Biologie
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10 Fachbereich Biologie > Komplexe ökologische Netzwerke
Hinterlegungsdatum: 27 Sep 2011 14:09
Letzte Änderung: 05 Mär 2013 09:54
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