Numerical Methods and Optimization in Finance
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Keywords
Acceptance-rejection method; Adaptive expectations; Agent-based modeling; Algorithmic complexity; American option; Approximation; ARMA; Asset selection; Autoregression; Barrier option; Bates Model; Binomial Trees; Bisection; Bootstrap; Boundary conditions; Box-Muller method; Brownian bridge; Calibration of option pricing models; Characteristic function; Computer arithmetic; Condition number; Constant proportion portfolio insurance (CPPI); Constraints; Copula; Crank-Nicolson; Differential Evolution; Direct methods; Direct search; Downside risk; Early exercise; Early exercise boundary; Escrowed dividend model; Experimental design; Explicit method; Extreme value theory; Financial Modeling; Financial Optimization; Finite differences; Fixed point; Gap risk; GARCH; Gauss rules; Gauss-Newton; Gauss-Seidel method; Geometric Brownian motion; Gradient based method; Greeks; Heston model; Historical simulation; Implicit method; Implied volatility; Initial conditions; Interest rate models; Inversion method; Iterative methods; Jacobi method; Least Median of Squares; Least Squares problems; Least Trimmed Squares; Levenberg-Marquardt; Linear correlation; Local Search; Machine precision; Markov chain; Matrix factorization; Metropolis algorithm; Model accuracy; Model evaluation; Model risk; Moving average processes; Nelder-Mead direct search; Nelson-Siegel model; Nelson-Siegel-Svensson model; Newton method; Nonlinear Least Squares; Numerical instability; Numerical integration; Numerical methods in finance; Operation count; Optimization; Optimization heuristics; Option pricing; Particle Swarm Optimization; Portfolio optimization; Portfolios; Pseudo-random numbers; Quadratic programming; Quasi-Monte Carlo; Random number generator; Rank correlation; Risk-reward measures; Robust regression; Root finding; SOR; Sparse matrices; Steepest descent; Term structure models; Threshold Accepting; Unconstrained optimization; Value-at-risk; Volatility clustering; Wiener processes; θ-method;All these keywords.
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