Jiang et al., 2017 - Google Patents
AptRank: an adaptive PageRank model for protein function prediction on bi-relational graphsJiang et al., 2017
View HTML- Document ID
- 348325213169931937
- Author
- Jiang B
- Kloster K
- Gleich D
- Gribskov M
- Publication year
- Publication venue
- Bioinformatics
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Snippet
Motivation: Diffusion-based network models are widely used for protein function prediction using protein network data and have been shown to outperform neighborhood-based and module-based methods. Recent studies have shown that integrating the hierarchical …
- 230000004853 protein function 0 title abstract description 32
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