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AIME
2005
Springer

Learning Rules from Multisource Data for Cardiac Monitoring

13 years 11 months ago
Learning Rules from Multisource Data for Cardiac Monitoring
This paper aims at formalizing the concept of learning rules from multisource data in a cardiac monitoring context. Our method has been implemented and evaluated on learning from data describing cardiac behaviors from different viewpoints, here electrocardiograms and arterial blood pressure measures. In order to cope with the dimensionality problems of multisource learning, we propose an Inductive Logic Programming method using a two-step strategy. Firstly, rules are learned independently from each sources. Secondly, the learned rules are used to bias a new learning process from the aggregated data. The results show that the the proposed method is much more efficient than learning directly from the aggregated data. Furthermore, it yields rules having better or equal accuracy than rules obtained by monosource learning.
Élisa Fromont, Rene Quiniou, Marie-Odile Co
Added 26 Jun 2010
Updated 26 Jun 2010
Type Conference
Year 2005
Where AIME
Authors Élisa Fromont, Rene Quiniou, Marie-Odile Cordier
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