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Publications

Publications by LIAAD

2018

Message from the program chairs

Authors
Washio, T; Gama, J; Li, Y; Parekh, R; Liu, H; Bifet, A; De Veaux, RD;

Publication
Proceedings - 2017 International Conference on Data Science and Advanced Analytics, DSAA 2017

Abstract

2018

Preface

Authors
Gama, J;

Publication
MATEC Web of Conferences

Abstract

2018

Preface

Authors
Li, X; Gama, J; Chen, B; Chen, S; Wang, S; Zhu, XH;

Publication
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)

Abstract

2018

Active Learning by Clustering for Drifted Data Stream Classification

Authors
Zgraja, J; Gama, J; Wozniak, M;

Publication
ECML PKDD 2018 Workshops - DMLE 2018 and IoTStream 2018, Dublin, Ireland, September 10-14, 2018, Revised Selected Papers

Abstract
Usually, during data stream classifier learning, we assume that labels of all incoming examples are available without any delay and they are used to update employing predictive model. Unfortunately, this assumption about access to all class labels is naive and it requires relatively high budget for labeling. It causes that methods which can train data stream classifiers on the basis of partially labeled data are highly desirable. Among them, active learning [1] seems to be a promising direction, which focuses on selecting only the most valuable learning examples to be labeled and used to produce an accurate predictive model. However, designing such a system we have to ensure that a cho-sen active learning strategy is able to handle changes in data distribution and quickly adapt to changing data distribution. In this work, we focus on novel active learning strategies that are designed for effective tackling of such changes. We propose a novel active data stream classifier learning method based on query by clustering approach. Experimental evaluation of the proposed methods prove the usefulness of the proposed approach for reducing labeling cost for classifier of drifting data streams.

2018

Special track on data streams

Authors
Bifet, A; Carvalho, A; Gama, J;

Publication
Proceedings of the ACM Symposium on Applied Computing

Abstract

2018

Dynamic Laplace: Efficient Centrality Measure for Weighted or Unweighted Evolving Networks

Authors
Cordeiro, M; Sarmento, RP; Brazdil, P; Gama, J;

Publication
CoRR

Abstract

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