Rough-and-ready assessment of the degree and importance of smoothing in functional estimation |
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Authors: | M. C. Jones |
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Affiliation: | Department of Statistics, The Open University, Walton Hall, Milton Keynes, UK |
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Abstract: | In nonparametric estimation of functionals of a distribution, it may or may not be desirable, or indeed necessary, to introduce a degree of smoothing into this estimation. In this article, I describe a method for assessing, with just a little thought about the functional of interest, (i) whether smoothing is likely to prove worthwhile, and (ii) if so, roughly how much smoothing is appropriate (in order-of-magnitude terms). This rule-of-thumb is not guaranteed to be accurate nor does it give a complete answer to the smoothing problem. However, I have found it very useful over a number of years; many examples of its use, and limitations, are given. |
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Keywords: | bandwidth density derivatives empirical distribution function kernel density estimation kernel functional estimation mean squared error smoothed bootstrapping |
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