Learning to quantify (a.k.a. quantification) is a task concerned with training unbiased estimators of class prevalence via supervised learning. This task originated with the observation that “Classify and Count” (CC), the trivial method of obtaining class prevalence estimates, is often a biased estimator, and thus delivers suboptimal quantification accuracy. Fol- lowing this observation, several methods for learning to quantify have been proposed and have been shown to outperform CC. In this work we contend that previous works have failed to use properly optimised versions of CC. We thus reassess the real merits of CC and its variants, and argue that, while still inferior to some cutting-edge methods, they deliver near-state-of-the- art acc...
QuaPy is an open-source framework for performing quantification (a.k.a. supervised prevalence estima...
Accurate calibration of probabilistic predictive models learned is critical for many practical predi...
Learning probabilistic classification and prediction models that generate accurate probabilities is ...
ABSTRACT Learning to Quantify (LQ) is the task of training class prevalence estimators via supervis...
The task of quantification consists in providing an aggregate estimation (e.g. the class distributio...
Quantification (or prevalence estimation) algorithms aim at predicting the class distribution of uns...
There are real applications that do not demand to classify or to make predictions about individual o...
Sentiment quantification is the task of training, by means of supervised learning, estimators of the...
Real-world applications demand effective methods to estimate the class distribution of a sample. In ...
We address the problem of quantification, a supervised learning task whose goal is, given a class, t...
Quantification, variously called supervised prevalence estimation or learning to quantify, is the su...
supervised machine learning, estimation, mixture models, shifting class prior, nonstationary class d...
classification, quantification, cost quantification, text mining This paper promotes a new task for ...
Classifiers can provide counts of items per class, but systematic classification errors yield biases...
# Learning to Quantify The aim of LeQua 2022 (the 1st edition of the CLEF “Learning to Quantify” la...
QuaPy is an open-source framework for performing quantification (a.k.a. supervised prevalence estima...
Accurate calibration of probabilistic predictive models learned is critical for many practical predi...
Learning probabilistic classification and prediction models that generate accurate probabilities is ...
ABSTRACT Learning to Quantify (LQ) is the task of training class prevalence estimators via supervis...
The task of quantification consists in providing an aggregate estimation (e.g. the class distributio...
Quantification (or prevalence estimation) algorithms aim at predicting the class distribution of uns...
There are real applications that do not demand to classify or to make predictions about individual o...
Sentiment quantification is the task of training, by means of supervised learning, estimators of the...
Real-world applications demand effective methods to estimate the class distribution of a sample. In ...
We address the problem of quantification, a supervised learning task whose goal is, given a class, t...
Quantification, variously called supervised prevalence estimation or learning to quantify, is the su...
supervised machine learning, estimation, mixture models, shifting class prior, nonstationary class d...
classification, quantification, cost quantification, text mining This paper promotes a new task for ...
Classifiers can provide counts of items per class, but systematic classification errors yield biases...
# Learning to Quantify The aim of LeQua 2022 (the 1st edition of the CLEF “Learning to Quantify” la...
QuaPy is an open-source framework for performing quantification (a.k.a. supervised prevalence estima...
Accurate calibration of probabilistic predictive models learned is critical for many practical predi...
Learning probabilistic classification and prediction models that generate accurate probabilities is ...