6533b7d7fe1ef96bd1268fd0

RESEARCH PRODUCT

Regression imputation for Space-Time datasets with missing values

Anna Lisa BondiAntonella Plaia

subject

Cross-sectional dataSpace timeMissing datacomputer.software_genreRegressionTerminologyGeographyStatisticsSpace-time data imputationPerformance indicatorImputation (statistics)Data miningSettore SECS-S/01 - StatisticacomputerPanel data

description

Data consisting in repeated observations on a series of fixed units are very common in different context like biological, environmental and social sciences, and different terminology is often used to indicate this kind of data: panel data, longitudinal data, time series-cross section data (TSCS), spatio-temporal data. Missing information are inevitable in longitudinal studies, and can produce biased estimates and loss of powers. The aim of this paper is to propose a new regression (single) imputation method that, considering the particular structure and characteristics of the data set, creates a “complete” data set that can be analyzed by any researcher on different occasions and using different techniques. Simulated incomplete data from a PM10 dataset recorded in Palermo in 2003 have been generated, in order to evaluate the performance of the imputation method by using suitable performance indicators.

http://hdl.handle.net/10447/21102