Evaluation of matching noise for imputation techniques based on nonparametric local linear regression estimators

PL Conti, D Marella, M Scanu - Computational statistics & data analysis, 2008 - Elsevier
PL Conti, D Marella, M Scanu
Computational statistics & data analysis, 2008Elsevier
A new matching procedure based on imputing missing data by means of a local linear
estimator of the underlying population regression function (that is assumed not necessarily
linear) is introduced. Such a procedure is compared to other traditional approaches, more
precisely hot deck methods as well as methods based on kNN estimators. The relationship
between the variables of interest is assumed not necessarily linear. Performance is
measured by the matching noise given by the discrepancy between the distribution …
A new matching procedure based on imputing missing data by means of a local linear estimator of the underlying population regression function (that is assumed not necessarily linear) is introduced. Such a procedure is compared to other traditional approaches, more precisely hot deck methods as well as methods based on kNN estimators. The relationship between the variables of interest is assumed not necessarily linear. Performance is measured by the matching noise given by the discrepancy between the distribution generating genuine data and the distribution generating imputed values.
Elsevier
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