Recovering incomplete data using Statistical Multiple Imputations (SMI): a case study in environmental chemistry |
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Authors: | Mercer Theresa G Frostick Lynne E Walmsley Anthony D |
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Affiliation: | a Centre for Adaptive Science and Sustainability, Department of Geography, University of Hull, HU6 7RX, United Kingdom b Department of Geography, University of Hull, HU6 7RX, United Kingdom c Department of Chemistry, University of Hull, HU6 7RX, United Kingdom |
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Abstract: | This paper presents a statistical technique that can be applied to environmental chemistry data where missing values and limit of detection levels prevent the application of statistics. A working example is taken from an environmental leaching study that was set up to determine if there were significant differences in levels of leached arsenic (As), chromium (Cr) and copper (Cu) between lysimeters containing preservative treated wood waste and those containing untreated wood. Fourteen lysimeters were setup and left in natural conditions for 21 weeks. The resultant leachate was analysed by ICP-OES to determine the As, Cr and Cu concentrations. However, due to the variation inherent in each lysimeter combined with the limits of detection offered by ICP-OES, the collected quantitative data was somewhat incomplete. Initial data analysis was hampered by the number of ‘missing values’ in the data. To recover the dataset, the statistical tool of Statistical Multiple Imputation (SMI) was applied, and the data was re-analysed successfully. It was demonstrated that using SMI did not affect the variance in the data, but facilitated analysis of the complete dataset. |
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Keywords: | Environmental data Missing values Statistical Multiple Imputation |
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