In numerical analysis, computational physics, and simulation, discretization error is the error resulting from the fact that a function of a continuous variable is represented in the computer by a finite number of evaluations, for example, on a lattice. Discretization error can usually be reduced by using a more finely spaced lattice, with an increased computational cost.

Examples

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Discretization error is the principal source of error in methods of finite differences and the pseudo-spectral method of computational physics.

When we define the derivative of as or , where is a finitely small number, the difference between the first formula and this approximation is known as discretization error.

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In signal processing, the analog of discretization is sampling, and results in no loss if the conditions of the sampling theorem are satisfied, otherwise the resulting error is called aliasing.

Discretization error, which arises from finite resolution in the domain, should not be confused with quantization error, which is finite resolution in the range (values), nor in round-off error arising from floating-point arithmetic. Discretization error would occur even if it were possible to represent the values exactly and use exact arithmetic – it is the error from representing a function by its values at a discrete set of points, not an error in these values.[1]

See also

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References

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  1. ^ Higham, Nicholas (2002). Accuracy and Stability of Numerical Algorithms (PDF). Other Titles in Applied Mathematics (2 ed.). SIAM. p. 5. doi:10.1137/1.9780898718027. ISBN 978-0-89871-521-7.

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Discretization

field.) The same is true of discretization error and quantization error. Mathematical methods relating to discretization include the Euler–Maruyama method

Numerical analysis

from the exact solution. Similarly, discretization induces a discretization error because the solution of the discrete problem does not coincide with the

Validated numerics

is numerics including mathematically strict error (rounding error, truncation error, discretization error) evaluation, and it is one field of numerical

Quantization (signal processing)

molecules). Beta encoder Color quantization Data binning Discretization Discretization error Least count Posterization Pulse-code modulation Quantile

Types of mesh

cost. Accuracy depends on both discretization error and solution error. For discretization error, a given mesh is a discrete approximation of the space,

Discretization of continuous features

machine learning, discretization refers to the process of converting or partitioning continuous attributes, features or variables to discretized or nominal

Dichotomy

multicategorical variables as binary variables is called dichotomization. The discretization error inherent in dichotomization is temporarily ignored for modeling purposes

Verlet integration

inherent in the method reduces the level of local errors introduced into the integration by the discretization by removing all odd-degree terms, here the terms