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A comparison of maximum likelihood and least squares for the estimation of a cumulative distribution
Abstract:Monte Carlo methods are used to compare the methods of maximum likelihood and least squares to estimate a cumulative distribution function. When the probabilistic model used is correct or nearly correct, the two methods produce similar results with the MLE usually slightly superior When an incorrect model is used, or when the data is contaminated, the least squares technique often gives substantially superior results.
Keywords:Algorithm  autoregressive moving average process  exact likelihood  seasonal model
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