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Publications

Publications by LIAAD

2008

Preface

Authors
Soares, C; Peng, Y; Meng, J; Washio, T; Zhou, ZH;

Publication
Frontiers in Artificial Intelligence and Applications

Abstract

2008

Empirical evaluation of ranking trees on some metalearning problems

Authors
Rebelo, C; Soares, C; Da Costa, JP;

Publication
AAAI Workshop - Technical Report

Abstract
The problem of learning rankings is receiving increased attention from several research communities. In this paper we empirically evaluate an adaptation of the algorithm of learning decision trees for rankings. Our experiments are carried out on some metalearning problems, which consist of relating characteristics of learning problems to the relative performance of learning algorithms. We obtain positive results which, somewhat surprisingly, indicate that the method predicts more accurately the top ranks. Copyright © 2008, Association for the Advancement of Artificial Intelligence.

2008

Issues and Challenges in Learning from Data Streams

Authors
Gama, J;

Publication
Next Generation of Data Mining.

Abstract

2008

Research Challenges in Ubiquitous Knowledge Discovery

Authors
May, M; Berendt, B; Cornuéjols, A; Gama, J; Giannotti, F; Hotho, A; Malerba, D; Menasalvas, E; Morik, K; Pedersen, RU; Saitta, L; Saygin, Y; Schuster, A; Vanhoof, K;

Publication
Next Generation of Data Mining.

Abstract

2008

Knowledge discovery from sensor data

Authors
Ganguly, AR; Gama, J; Omitaomu, OA; Gaber, MM; Vatsavai, RR;

Publication
Knowledge Discovery from Sensor Data

Abstract
As sensors become ubiquitous, a set of broad requirements is beginning to emerge across high-priority applications including disaster preparedness and management, adaptability to climate change, national or homeland security, and the management of critical infrastructures. This book presents innovative solutions in offline data mining and real-time analysis of sensor or geographically distributed data. It discusses the challenges and requirements for sensor data based knowledge discovery solutions in high-priority application illustrated with case studies. It explores the fusion between heterogeneous data streams from multiple sensor types and applications in science, engineering, and security. © 2009 by Taylor & Francis Group, LLC.

2008

Introduction

Authors
Ganguly, AR; Gama, J; Omitaomu, OA; Gaber, MM; Vatsavai, RR;

Publication
Knowledge Discovery from Sensor Data

Abstract

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