2021
DOI: 10.1007/s10618-021-00778-0
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Differentially Private Distance Learning in Categorical Data

Abstract: Most privacy-preserving machine learning methods are designed around continuous or numeric data, but categorical attributes are common in many application scenarios, including clinical and health records, census and survey data. Distance-based methods, in particular, have limited applicability to categorical data, since they do not capture the complexity of the relationships among different values of a categorical attribute. Although distance learning algorithms exist for categorical data, they may disclose pr… Show more

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