Cruickshank, 2020 - Google Patents
Multi-view clustering of social-based dataCruickshank, 2020
View PDF- Document ID
- 16766588117210346009
- Author
- Cruickshank I
- Publication year
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Snippet
Real-world, social phenomena produce various types of data, like explicit networks or user- emitted text. When different sets of data describe the same entities, the data is termed multi- view or multi-modal. A distinct advantage of multi-view data is that different views may better …
- 238000000034 method 0 abstract description 350
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