Case-based retrieval and K-NN classification techniques are suitable for assessing haemodialysis treatment efficiency and for identifying risk situations. In this domain, cases involve time series data, that need to undergo a feature extraction phase in order to reduce dimensionality and to speed up similarity calculation. In this paper, we propose a deep learning architecture for time series feature extraction, based on the use of a convolutional autoencoder. Deep features provide a better time series representation with respect to features produced by the Discrete Cosine Transform (DCT). Indeed, in our experiments, K-NN classification based on deep features has outperformed the DCT-based one. We are also working in the direction of improving interpretability, by using case retrieval results obtained in a different feature space (defined on the basis of domain knowledge) to explain the outputs provided by the adoption of the deep learning technique.

Deep feature extraction for representing and classifying time series cases: Towards an interpretable approach in haemodialysis

Montani S.;Striani M.
2020-01-01

Abstract

Case-based retrieval and K-NN classification techniques are suitable for assessing haemodialysis treatment efficiency and for identifying risk situations. In this domain, cases involve time series data, that need to undergo a feature extraction phase in order to reduce dimensionality and to speed up similarity calculation. In this paper, we propose a deep learning architecture for time series feature extraction, based on the use of a convolutional autoencoder. Deep features provide a better time series representation with respect to features produced by the Discrete Cosine Transform (DCT). Indeed, in our experiments, K-NN classification based on deep features has outperformed the DCT-based one. We are also working in the direction of improving interpretability, by using case retrieval results obtained in a different feature space (defined on the basis of domain knowledge) to explain the outputs provided by the adoption of the deep learning technique.
2020
33rd International Florida Artificial Intelligence Research Society Conference, FLAIRS 2020
North Miami Beach, USA
2020
Proceedings of the 33rd International Florida Artificial Intelligence Research Society Conference, FLAIRS 2020
The AAAI Press
417
420
https://aaai.org/ocs/index.php/FLAIRS/FLAIRS20/paper/view/18473
Leonardi G.; Montani S.; Striani M.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1885202
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