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Publicações

Publicações por LIAAD

2011

Learning from Data Streams

Autores
Gama, J; Rodrigues, PP;

Publicação
Encyclopedia of Data Warehousing and Mining, Second Edition

Abstract

2011

Contributions to a Decision Support System Based on Depth of Anesthesia Signals

Autores
Sebastiao, R; Silva, MM; Gama, J; Mendonca, T;

Publicação
2012 25TH INTERNATIONAL SYMPOSIUM ON COMPUTER-BASED MEDICAL SYSTEMS (CBMS)

Abstract
In the clinical practice the concerns about the administration of hypnotics and analgesics for minimally invasive diagnostics and therapeutic procedures have enormously increased in the past years. The automatic detection of changes in the signals used to evaluate the depth of anesthesia is hence of foremost importance in order to decide how to adapt the doses of hypnotics and analgesics that should be administered to patients. The aim of this work is to online detect drifts in the referred depth of anesthesia signals of patients undergoing general anesthesia. The performance of the proposed method is illustrated using BIS records previously collected from patients subject to abdominal surgery. The results show that the drifts detected by the proposed method are in accordance with the actions of the clinicians in terms of times where a change in the hypnotic or analgesic rates had occurred. This detection was performed under the presence of noise and sensor faults. The presented algorithm was also online validated. The results encourage the inclusion of the proposed algorithm in a decision support system based on depth of anesthesia signals.

2011

Advances in Intelligent Data Analysis X

Autores
Gama, J; Bradley, E; Hollmén, J;

Publicação
Lecture Notes in Computer Science

Abstract

2011

New Results on Minimum Error Entropy Decision Trees

Autores
Marques de Sa, JPM; Sebastiao, R; Gama, J; Fontes, T;

Publicação
PROGRESS IN PATTERN RECOGNITION, IMAGE ANALYSIS, COMPUTER VISION, AND APPLICATIONS

Abstract
We present new results on the performance of Minimum Error Entropy (MEE) decision trees, which use a novel node split criterion. The results were obtained in a comparive study with popular alternative algorithms, on 42 real world datasets. Carefull validation and statistical methods were used. The evidence gathered from this body of results show that the error performance of MEE trees compares well with alternative algorithms. An important aspect to emphasize is that MEE trees generalize better on average without sacrifing error performance.

2011

Correcting streaming predictions of an electricity load forecast system using a prediction reliability estimate

Autores
Bosnic, Z; Rodrigues, PP; Kononenko, I; Gama, J;

Publicação
Advances in Intelligent and Soft Computing

Abstract
Accurately predicting values for dynamic data streams is a challenging task in decision and expert systems, due to high data flow rates, limited storage and a requirement to quickly adapt a model to new data. We propose an approach for correcting predictions for data streams which is based on a reliability estimate for individual regression predictions. In our work, we implement the proposed technique and test it on a real-world problem: prediction of the electricity load for a selected European geographical region. For predicting the electricity load values we implement two regression models: the neural network and the k nearest neighbors algorithm. The results show that our method performs better than the referential method (i.e. the Kalman filter), significantly improving the original streaming predictions to more accurate values. © 2011 Springer-Verlag Berlin Heidelberg.

2011

Special track on data streams

Autores
Gama, J; Carvalho, A; Krishnaswamy, S; Rodrigues, PP;

Publicação
Proceedings of the ACM Symposium on Applied Computing

Abstract

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