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Publications

Publications by LIAAD

2017

SMOGN: a Pre-processing Approach for Imbalanced Regression

Authors
Branco, P; Torgo, L; Ribeiro, RP;

Publication
LIDTA@PKDD/ECML

Abstract

2017

Proceedings of the Workshop on IoT Large Scale Learning from Data Streams co-located with the 2017 European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases (ECML-PKDD 2017), Skopje, Macedonia, September 18-22, 2017

Authors
Mouchaweh, MS; Bifet, A; Bouchachia, H; Gama, J; Ribeiro, RP;

Publication
IOTSTREAMING@PKDD/ECML

Abstract

2017

Learning Through Utility Optimization in Regression Tasks

Authors
Branco, P; Torgo, L; Ribeiro, RP; Frank, E; Pfahringer, B; Rau, MM;

Publication
2017 IEEE INTERNATIONAL CONFERENCE ON DATA SCIENCE AND ADVANCED ANALYTICS (DSAA)

Abstract
Accounting for misclassification costs is important in many practical applications of machine learning, and cost sensitive techniques for classification have been studied extensively. Utility-based learning provides a generalization of purely cost-based approaches that considers both costs and benefits, enabling application to domains with complex cost-benefit settings. However, there is little work on utility- or cost-based learning for regression. In this paper, we formally define the problem of utility-based regression and propose a strategy for maximizing the utility of regression models. We verify our findings in a large set of experiments that show the advantage of our proposal in a diverse set of domains, learning algorithms and cost/benefit settings.

2017

Preface

Authors
Sayed Mouchaweh, M; Bifet, A; Bouchachia, H; Gama, J; Ribeiro, RP;

Publication
CEUR Workshop Proceedings

Abstract

2017

Preface

Authors
Sayed Mouchaweh, M; Bouchachia, H; Gama, J; Ribeiro, RP;

Publication
CEUR Workshop Proceedings

Abstract

2017

Off the beaten track: A new linear model for interval data

Authors
Dias, S; Brito, P;

Publication
EUROPEAN JOURNAL OF OPERATIONAL RESEARCH

Abstract
We propose a new linear regression model for interval-valued variables. The model uses quantile functions to represent the intervals, thereby considering the distributions within them. In this paper we study the special case where the Uniform distribution is assumed in each observed interval, and we analyze the extension to the Symmetric Triangular distribution. The parameters of the model are obtained solving a constrained quadratic optimization problem that uses the Mallows distance between quantile functions. As in the classical case, a goodness-of-fit measure is deduced. Two applications on up-to-date fields are presented: one predicting duration of unemployment and the other allowing forecasting burned area by forest fires.

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