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Publicações

Publicações por LIAAD

2004

Incremental learning and concept drift: Editor's introduction

Autores
Kubat, M; Gama, J; Utgoff, P;

Publicação
Intelligent Data Analysis

Abstract

2004

On avoiding redundancy in inductive logic programming

Autores
Fonseca, N; Costa, VS; Silva, F; Camacho, R;

Publicação
INDUCTIVE LOGIC PROGRAMMING, PROCEEDINGS

Abstract
ILP systems induce first-order clausal theories performing a search through very large hypotheses spaces containing redundant hypotheses. The generation of redundant hypotheses may prevent the systems from finding good models and increases the time to induce them. In this paper we propose a classification of hypotheses redundancy and show how expert knowledge can be provided to an ILP system to avoid it. Experimental results show that the number of hypotheses generated and execution time are reduced when expert knowledge is used to avoid redundancy.

2004

Introduction to the special issue on meta-learning

Autores
Giraud Carrier, C; Vilalta, R; Brazdil, P;

Publicação
MACHINE LEARNING

Abstract

2004

Improving progressive sampling via meta-learning on learning curves

Autores
Leite, R; Brazdil, P;

Publicação
MACHINE LEARNING: ECML 2004, PROCEEDINGS

Abstract
This paper describes a method that can be seen as an improvement of, the standard progressive sampling. The standard method uses samples of data of increasing size until accuracy of the learned concept cannot be further improved. The issue we have addressed here is how to avoid using some of the samples in this progression. The paper presents a method for predicting the stopping point using a meta-learning approach. The method requires just four iterations of the progressive sampling. The information gathered is used to identify the nearest learning curves, for which the sampling procedure was carried out fully. This in turn permits to generate the prediction regards the stopping point. Experimental evaluation shows that the method can lead to significant savings of time without significant losses of accuracy.

2004

Learning Text Extraction Rules, without Ignoring Stop Words

Autores
Cordeiro, J; Brazdil, P;

Publicação
Pattern Recognition in Information Systems, Proceedings of the 4th International Workshop on Pattern Recognition in Information Systems, PRIS 2004, In conjunction with ICEIS 2004, Porto, Portugal, April 2004

Abstract

2004

A Meta-learning Approach to Improve Progressive Sampling

Autores
Leite, R; Brazdil, P;

Publicação
Pattern Recognition in Information Systems, Proceedings of the 4th International Workshop on Pattern Recognition in Information Systems, PRIS 2004, In conjunction with ICEIS 2004, Porto, Portugal, April 2004

Abstract

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