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Network Embedding Methods for Large Networks in Political Science
We compare the performance of five prominent network embedding methods on prediction of ideology of Twitter users and ideology of Internet domains, and provide guidelines for researchers on the use of these models for their own research.
Citation
Brown, Megan A., Zhanna Terechshenko, Rachel Connolly, Angela Lai, Charlotte Ji, Jonathan Nagler, Joshua A. Tucker, and Richard Bonneau. "Network Embeddings Methods for Large Networks in Political Science." SSRN Electronic Journal, (2021). https://dx.doi.org/10.2139/ssrn.3962536
Date Posted
Nov 12, 2021
Authors
- Megan A. Brown,
- Zhanna Terechshenko,
- Rachel Connolly,
- Angela Lai,
- Charlotte Ji,
- Jonathan Nagler,
- Joshua A. Tucker,
- Richard Bonneau
Area of Study
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Abstract
Social networks play an important role in many political science studies. With the rise of social media, these networks have grown in both size and complexity. Analysis of these large networks requires generation of feature representations that can be used in machine learning models. One way to generate these feature representations is to use network embedding methods for learning low-dimensional feature representations of nodes and edges in a network. While there is some literature comparing the advantages and shortcomings of these models, to our knowledge, there has not been any analysis on the applicability of network embedding models to classification tasks in political science. In this paper, we compare the performance of five prominent network embedding methods on prediction of ideology of Twitter users and ideology of Internet domains. We find that LINE provides the best feature representation across all 4 datasets that we use, resulting in the highest performance accuracy. Finally, we provide the guidelines for researchers on the use of these models for their own research.