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Normal distribution / Inverse Gaussian distribution / Normal-inverse Gaussian distribution / Gaussian process / Convolution / Continuous function / Mathematical analysis / Statistics / Stochastic processes
Date: 2003-06-25 12:55:47
Normal distribution
Inverse Gaussian distribution
Normal-inverse Gaussian distribution
Gaussian process
Convolution
Continuous function
Mathematical analysis
Statistics
Stochastic processes

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