Inferring, comparing and exploring ecological networks from time-series data through R packages constructnet, disgraph and dynet

29 Mar 2021  ·  Anshuman Swain, Travis Byrum, Zhaoyi Zhuang, Luke Perry, Michael Lin, William Fagan ·

Network inference is a major field of interest for the ecological community, especially in light of the high cost and difficulty of manual observation, and easy availability of remote, long term monitoring data. In addition, comparing across similar network structures, especially with spatial, environmental, or temporal variability and, simulating processes on networks to create toy models and hypotheses - are topics of considerable interest to the researchers. A large number of methods are being developed in the network science community to achieve these objectives but either don't have their code available or an implementation in R, the language preferred by ecologists and other biologists. We provide a suite of three packages which will provide a central suite of standardized network inference methods from time-series data (constructnet), distance metrics (disgraph) and (process) simulation models (dynet) to the growing R network analysis environment and would help ecologists and biologists to perform and compare methods under one roof. These packages are implemented in a coherent, consistent framework - making comparisons across methods and metrics easier. We hope that these tools in R will help increase the accessibility of network tools to ecologists and other biologists, who the language for most of their analysis.

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