Jain et al., 1988 - Google Patents
Classifier design with Parzen windowsJain et al., 1988
- Document ID
- 14346039212437406993
- Author
- Jain A
- Ramaswami M
- Publication year
- Publication venue
- Machine intelligence and pattern recognition
External Links
Snippet
A number of methods are available in the literature to estimate the class-conditional densities for pattern classification. The Parzen-window method of density estimation is studied with emphasis on techniques for optimal window-width estimation. We report the …
- 238000000034 method 0 abstract description 19
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