| Literature DB >> 16907983 |
Nico Blüthgen1, Florian Menzel, Nils Blüthgen.
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.Entities:
Mesh:
Year: 2006 PMID: 16907983 PMCID: PMC1570337 DOI: 10.1186/1472-6785-6-9
Source DB: PubMed Journal: BMC Ecol ISSN: 1472-6785 Impact factor: 2.964
Figure 1Patterns within pollinator networks. Frequency distribution of the species-level specialization index (d') for pollinators and plants from two published networks, one from Britain [32] and one from Argentina [33]. Bars show the number of individuals in each category (label '0' defines 0.00 ≤ d' < 0.05, etc.). Bars are separated for different species, and total number of species in each category is given on top. Arrows indicate cases where bars are invisible due to low numbers of individuals.
Figure 2Sampling effect in pollinator networks. Rarefaction of sampling effort in a British and an Argentinean pollination web [32,33]. Two network-level measures of specialization – the frequency-based specialization index (H2') and the 'connectance' index (C) – are shown for networks in which the total number of interactions (m) has been reduced by randomly deleting interactions. Black dots show the effect of sampling effort for the original association matrix, gray dots the effect for a null model, i.e. five networks in which partners were randomly associated (same row and column totals as in the original matrix).
Figure 3Simulated random networks. Behavior of specialization measures in simulated random networks. Each point represents one matrix with random associations, based on specific row and column totals that follow a lognormal distribution. The size of squared matrices in (A) increased from 2 × 2 to 200 × 200. In (B), only the number of rows changed, while the number of columns was fixed at 20, rectangular matrices thus increased from 2 × 20 to 200 × 20. In (C), the network size was fixed at 20 × 20. The total number of interactions (m) increased with matrix size in (A), where each species had on average 20 individuals. In (B), m was fixed at 4000, resulting in a reduced interaction density for larger matrices. In (C), m increased from 20 to 4000. The index H2' and connectance C are specialization measures of the whole matrix and thus reciprocal, while the average number of links (), and weighted mean standardized Kullback-Leibler distance (
Elements in a species association matrix. Interaction frequencies (aij) between c animal and r plant species and their respective totals (rows:Ai, columns: Aj, total elements: m).
| Animal sp.1 | sp. 2 | ... | sp. | ||
| Plant sp. 1 | ... | a1 | |||
| sp. 2 | a21 | ... | a2 | ||
| ... | ... | ... | ... | ... | ... |
| sp. | ... | a | |||
| ... | |||||
Association matrix example. Fictive association matrix between three pollinator species and three plant species. Numbers in each cell are counts of interaction frequencies.
| Pollinator sp. 1 | Pollinator sp. 2 | ||
| Plant sp. 1 | 21 | 5 | 0 |
| Plant sp. 2 | 23 | 4 | 0 |
| 0 | 0 |