Dai et al., 2016 - Google Patents
A novel supervised competitive learning algorithmDai et al., 2016
- Document ID
- 12511668296974041926
- Author
- Dai Q
- Song G
- Publication year
- Publication venue
- Neurocomputing
External Links
Snippet
Competitive learning is a mechanism well-suited for the learning paradigm of regularity detection, and is typically an unsupervised learning mechanism. However, in this work, a novel Supervised Competitive Learning (SCL) algorithm is proposed for the generation of …
- 230000002860 competitive 0 title abstract description 40
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