Chiang et al., 2014 - Google Patents
Prediction and clustering in signed networks: a local to global perspectiveChiang et al., 2014
View PDF- Document ID
- 10038266513449037078
- Author
- Chiang K
- Hsieh C
- Natarajan N
- Dhillon I
- Tewari A
- Publication year
- Publication venue
- The Journal of Machine Learning Research
External Links
Snippet
The study of social networks is a burgeoning research area. However, most existing work is on networks that simply encode whether relationships exist or not. In contrast, relationships in signed networks can be positive (“like”,“trust”) or negative (“dislike”,“distrust”). The theory …
- 239000011159 matrix material 0 abstract description 93
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