Publication | Closed Access
On the Use of Double Sampling Schemes in Analyzing Categorical Data with Misclassification Errors
85
Citations
18
References
1977
Year
EngineeringFallible Classifying MechanismSampling TechniqueClassification MethodData ScienceData MiningPattern RecognitionClass ImbalanceFallible MechanismMisclassification ErrorsBiostatisticsStatisticsAutomatic ClassificationKnowledge DiscoveryComplex SampleSampling (Statistics)Intelligent ClassificationStatistical Learning TheoryAnalyzing Categorical DataData ClassificationStatistical InferenceClassificationCombined Maximum LikelihoodSurvey Methodology
Abstract In order to resolve the difficulties involved in inference from a sample of categorical data obtained by using a fallible classifying mechanism (usually inexpensive), we consider, as in Tenenbein (1970, 1971, 1972), the utilization of an additional sample. The second sample is subjected to a simultaneous cross-classification of its elements by the fallible mechanism and by some true (usually expensive) classifying mechanism. The setup is general; i.e., the discussion can be applied to any multidimensional cross-classified data obtained by unrestricted random sampling. Two methodologies are presented: (i) a combined maximum likelihood (ML) and least squares (LS) approach and (ii) a complete-LS approach. Both methodologies are illustrated using real data.
| Year | Citations | |
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1969 | 1.5K | |
1973 | 1.4K | |
1974 | 771 | |
1954 | 378 | |
1970 | 240 | |
1972 | 133 | |
1976 | 123 | |
1975 | 112 | |
1962 | 105 | |
1975 | 100 |
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