van Velzen, 2024 - Google Patents
An analysis of imputation techniques under four missingness mechanisms using direct and indirect evaluation combined with computation timevan Velzen, 2024
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- 10821907340037573295
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- van Velzen S
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This thesis investigates the performance of various (single and multiple) imputation algorithms under four missingness mechanisms: MCAR (Missing Completely At Random), MAR (Missing At Random), and MNAR (Missing Not At Random) Type 1 and 2. Using six …
- 238000000034 method 0 title abstract description 209
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