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A MONTE CARLO INVESTIGATION OF EXPERIMENTAL DATA REQUIREMENTS FOR FITTING POLYNOMIAL FUNCTIONS

机译:蒙特卡罗调查拟合多项式函数的实验数据要求

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This report examines the extent to which sample size affects the accuracy of a low-order polynomial approximation of an experimentally observed quantity and establishes a trend toward improvement in the accuracy of the approximation as a function of sample size. The task is made possible through a simulated analysis carried out by the Monte Carlo method, in which data are generated by using several transcendental or algebraic functions as models. Contaminated data of varying amounts are fitted to linear quadratic or cubic polynomials, and the behavior of the mean-squared error of the residual variance is determined as a function of sample size. Results indicate that the effect of the size of the sample is significant only for relatively small sample sizes and diminishes drastically for moderate and large amounts of experimental data.

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