The quantile-based classifier with variable-wise parameters
Quantile-based classifiers can classify high-dimensional observations by minimising a discrepancy of an observation to a class based on suitable quantiles of the within-class distributions, corresponding to a unique percentage for all variables. The present work extends these classifiers by introduc...
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Zusammenfassung: | Quantile-based classifiers can classify high-dimensional observations by
minimising a discrepancy of an observation to a class based on suitable
quantiles of the within-class distributions, corresponding to a unique
percentage for all variables. The present work extends these classifiers by
introducing a way to determine potentially different optimal percentages for
different variables. Furthermore, a variable-wise scale parameter is
introduced. A simple greedy algorithm to estimate the parameters is proposed.
Their consistency in a nonparametric setting is proved. Experiments using
artificially generated and real data confirm the potential of the
quantile-based classifier with variable-wise parameters. |
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DOI: | 10.48550/arxiv.2404.13589 |