2016
DOI: 10.1609/aaai.v30i1.10280
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Metric Learning for Ordinal Data

Abstract: A large amount of ordinal-valued data exist in many domains, including medical and health science, social science, economics, political science, etc. Unlike image and speech datasets of real-valued data, learning with ordinal variables (i.e., features) presents unique challenges. In particular, the nominal differences between those feature values, which are just ranks, do not necessarily correspond to the real distances between the corresponding categories. Given their wide existence, it is imperative to devel… Show more

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Cited by 3 publications
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“…For instance, bronze, silver, gold, and platinum should be identified as ordinal and given the order bronze < silver < gold < platinum. For composing the battery, we looked at the literature dealing with ordinal attributes, in particular (Shi et al, 2016;Bellmann & Schwenker, 2020). These papers cover the attributes in the UCI datasets Cars, Nursery, BreastCancer, Hayes-Roth, Balance and CMC.…”
Section: Get Unitsmentioning
confidence: 99%
“…For instance, bronze, silver, gold, and platinum should be identified as ordinal and given the order bronze < silver < gold < platinum. For composing the battery, we looked at the literature dealing with ordinal attributes, in particular (Shi et al, 2016;Bellmann & Schwenker, 2020). These papers cover the attributes in the UCI datasets Cars, Nursery, BreastCancer, Hayes-Roth, Balance and CMC.…”
Section: Get Unitsmentioning
confidence: 99%