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Numerical analysis / Monte Carlo methods / Mathematical finance / Variance reduction / Probabilistic complexity theory / Sobol sequence / Low-discrepancy sequence / Quantitative analyst / Software framework / Mathematics / Applied mathematics / Probability and statistics
Date: 2011-05-02 04:45:11
Numerical analysis
Monte Carlo methods
Mathematical finance
Variance reduction
Probabilistic complexity theory
Sobol sequence
Low-discrepancy sequence
Quantitative analyst
Software framework
Mathematics
Applied mathematics
Probability and statistics

Monte Carlo simulation techniques -The development of a general framework Master’s Thesis carried out at the Department of Management and Engineering, Linköping Institute of Technology

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