2015
DOI: 10.5430/air.v4n1p22
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Diagnostic with incomplete nominal/discrete data

Abstract: Missing values may be present in data without undermining its use for diagnostic / classification purposes but compromise application of readily available software. Surrogate entries can remedy the situation, although the outcome is generally unknown. Discretization of continuous attributes renders all data nominal and is helpful in dealing with missing values; particularly, no special handling is required for different attribute types. A number of classifiers exist or can be reformulated for this representati… Show more

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Cited by 14 publications
(36 citation statements)
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“…Data on 300 attributes from 2,700 attendances of 900 patients have been collected in recent years. The dataset has been used in several data mining applications for identification of DM [33,34] and related conditions. [35,36] The temporal data underwent compression to instantiate patients instead of attendances by calculating longitudinal means or modes on the amount of available data.…”
Section: Clinical Datasetmentioning
confidence: 99%
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“…Data on 300 attributes from 2,700 attendances of 900 patients have been collected in recent years. The dataset has been used in several data mining applications for identification of DM [33,34] and related conditions. [35,36] The temporal data underwent compression to instantiate patients instead of attendances by calculating longitudinal means or modes on the amount of available data.…”
Section: Clinical Datasetmentioning
confidence: 99%
“…[33] On a different occasion [34] we followed an approach on a par with the General Location Model [37] to set MV in then existing a version of the DiScRi data, which is appropriate for mixed attribute type domains consisting of continuous as well as of categorical features.…”
Section: Novel Data Analyticsmentioning
confidence: 99%
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