Abstract
Network alignment (NA) finds conserved regions between two networks. NA methods optimize node conservation (NC) and edge conservation. Dynamic graphlet degree vectors are a state-of-the-art dynamic NC measure, used within the fastest and most accurate NA method for temporal networks: DynaWAVE. Here, we use graphlet-orbit transitions (GoTs), a different graphlet-based measure of temporal node similarity, as a new dynamic NC measure within DynaWAVE, resulting in GoT-WAVE. Results: On synthetic networks, GoT-WAVE improves DynaWAVE's accuracy by 30% and speed by 64%. On real networks, when optimizing only dynamic NC, the methods are complementary. Furthermore, only GoT-WAVE supports directed edges. Hence, GoT-WAVE is a promising new temporal NA algorithm, which efficiently optimizes dynamic NC. We provide a user-friendly user interface and source code for GoT-WAVE. Availability and implementation: http://www.dcc.fc.up.pt/got-wave/ Supplementary information: Supplementary data are available at Bioinformatics online.
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CITATION STYLE
Aparício, D., Ribeiro, P., Milenković, T., & Silva, F. (2019). Temporal network alignment via GoT-WAVE. Bioinformatics, 35(18), 3527–3529. https://doi.org/10.1093/bioinformatics/btz119
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