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Statistical inference / Signal processing / Kernel density estimation / Statistical theory / Estimator / Normal distribution / Gaussian function / Density estimation / Support vector machine / Statistics / Estimation theory / Non-parametric statistics
Date: 2010-10-26 10:39:52
Statistical inference
Signal processing
Kernel density estimation
Statistical theory
Estimator
Normal distribution
Gaussian function
Density estimation
Support vector machine
Statistics
Estimation theory
Non-parametric statistics

Y:JFOPRE&#x05;8-05OPRE0825-FIN.DVI

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