DPPIN: A Biological Dataset of Dynamic Protein-Protein Interaction
Networks
- URL: http://arxiv.org/abs/2107.02168v1
- Date: Mon, 5 Jul 2021 17:52:55 GMT
- Title: DPPIN: A Biological Dataset of Dynamic Protein-Protein Interaction
Networks
- Authors: Dongqi Fu, Jingrui He
- Abstract summary: We generate a new biological dataset of dynamic protein-protein interaction networks (i.e., DPPIN)
DPPIN consists of twelve dynamic protein-level interaction networks of yeast cells at different scales.
We design dynamic local clustering, dynamic spectral clustering, dynamic subgraph matching, dynamic node classification, and dynamic graph classification experiments.
- Score: 40.490606259328686
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Nowadays, many network representation learning algorithms and downstream
network mining tasks have already paid attention to dynamic networks or
temporal networks, which are more suitable for real-world complex scenarios by
modeling evolving patterns and temporal dependencies between node interactions.
Moreover, representing and mining temporal networks have a wide range of
applications, such as fraud detection, social network analysis, and drug
discovery. To contribute to the network representation learning and network
mining research community, in this paper, we generate a new biological dataset
of dynamic protein-protein interaction networks (i.e., DPPIN), which consists
of twelve dynamic protein-level interaction networks of yeast cells at
different scales. We first introduce the generation process of DPPIN. To
demonstrate the value of our published dataset DPPIN, we then list the
potential applications that would be benefited. Furthermore, we design dynamic
local clustering, dynamic spectral clustering, dynamic subgraph matching,
dynamic node classification, and dynamic graph classification experiments,
where DPPIN indicates future research opportunities for some tasks by
presenting challenges on state-of-the-art baseline algorithms. Finally, we
identify future directions for improving this dataset utility and welcome
inputs from the community. All resources of this work are deployed and publicly
available at https://github.com/DongqiFu/DPPIN.
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