A review onquantification learning
Subject:
Class distribution estimation
Prevalence estimation
Quantification
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Editorial:
ACM
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Abstract:
The task of quantification consists in providing an aggregate estimation (e.g. the class distribution in a classification problem) for unseen test sets, applying a model that is trained using a training set with a different data distribution. Several real-world applications demand this kind of methods that do not require predictions for individual examples and just focus on obtaining accurate estimates at an aggregate level. During the past few years, several quantification methods have been proposed from different perspectives and with different goals. This paper presents a unified review of the main approaches with the aim of serving as an introductory tutorial for newcomers in the field
The task of quantification consists in providing an aggregate estimation (e.g. the class distribution in a classification problem) for unseen test sets, applying a model that is trained using a training set with a different data distribution. Several real-world applications demand this kind of methods that do not require predictions for individual examples and just focus on obtaining accurate estimates at an aggregate level. During the past few years, several quantification methods have been proposed from different perspectives and with different goals. This paper presents a unified review of the main approaches with the aim of serving as an introductory tutorial for newcomers in the field
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DOI:
Patrocinado por:
TIN2015-65069-C2-2-R, FEDER, Federación Española de Enfermedades Raras; MINECO, Ministerio de Economía y Competitividad; IIS-1447795, NSF, Norsk Sykepleierforbund
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