mammalia-baboon-association-group20     (Animal Social Networks)
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This network dataset is in the category of Animal Social Networks
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Metadata
Category | Animal Social Networks |
Collection | Animal Networks |
About | Real-world animal interaction network data sets. Animal interaction data from published studies of wild, captive, and domesticated animals. |
Tags | |
Source | https://bansallab.github.io/asnr/data.html |
Short | Animal Networks |
Vertex type | Animal, Mammal, baboon |
Edge type | Interaction |
Format | Undirected |
Edge weights | Weighted |
Species | Papio cynocephalus |
Taxon. class | Mammalia |
Population | free-ranging |
Geo. location | Amboseli National Park, Kenya |
Data collection | focal sampling |
Interaction type | spatial proximity |
Definition of interaction | These networks were constructed based on nearest neighbour data collected during focal sampling. |
Edge weight type | frequency |
Data collection duration | 30days |
Time span (within a day) | focal follow/ad libitum |
Description | Networks represent grooming interaction or association between five social groups of baboons. Each network summarizes data collected within 30 days before and 90 days after each knockout. A natural knockout was considered to have occurred when a given alpha or beta male was present in the group for at least three months prior to his disappearance, and then he disappeared permanently from the group. |
Citation | Franz, Mathias, Jeanne Altmann, and Susan C. Alberts. "Knockouts of high-ranking males have limited impact on baboon social networks." Current zoology 61.1 (2015): 107-113. |
Please cite the following if you use the data:
Note that if you transform/preprocess the data, please consider sharing the data by uploading it along with the details on the transformation and reference to any published materials using it.
@inproceedings{nr,
title={The Network Data Repository with Interactive Graph Analytics and Visualization},
author={Ryan A. Rossi and Nesreen K. Ahmed},
booktitle={AAAI},
url={https://networkrepository.com},
year={2015}
}
Network Data Statistics
Nodes | 13 |
Edges | 30 |
Density | 0.384615 |
Maximum degree | 7 |
Minimum degree | 2 |
Average degree | 4 |
Assortativity | -0.0582011 |
Number of triangles | 45 |
Average number of triangles | 3 |
Maximum number of triangles | 8 |
Average clustering coefficient | 0.390842 |
Fraction of closed triangles | 0.365854 |
Maximum k-core | 4 |
Lower bound of Maximum Clique | 4 |
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