Activity Prediction is foreseeing the following activity people are going to execute. This is a crucial task in smart home environments, i.e., in order to facilitate the daily routines of elderly people with or without special needs. In this paper, we focused on Activity Daily Living prediction and we proposed a novel activity prediction technique based on the combination of Marked Temporal Point Processes and Neural Networks. Experiments on real and synthetic smart space datasets have shown that our approach is able to conveniently represent and predict daily living activities in an unsupervised way. We evaluated its performance and compared its results with state-of-the-art methods providing freely available implementations. Noticeably, the proposed approach outperforms the best concurrent algorithm by obtaining an improvement of F1-score of 60% (on average of the considered datasets).

Predicting activities of daily living via temporal point processes: Approaches and experimental results / Fortino, G.; Guzzo, A.; Ianni, M.; Leotta, F.; Mecella, M.. - In: COMPUTERS & ELECTRICAL ENGINEERING. - ISSN 0045-7906. - 96:(2021). [10.1016/j.compeleceng.2021.107567]

Predicting activities of daily living via temporal point processes: Approaches and experimental results

Leotta, F.;Mecella, M.
2021

Abstract

Activity Prediction is foreseeing the following activity people are going to execute. This is a crucial task in smart home environments, i.e., in order to facilitate the daily routines of elderly people with or without special needs. In this paper, we focused on Activity Daily Living prediction and we proposed a novel activity prediction technique based on the combination of Marked Temporal Point Processes and Neural Networks. Experiments on real and synthetic smart space datasets have shown that our approach is able to conveniently represent and predict daily living activities in an unsupervised way. We evaluated its performance and compared its results with state-of-the-art methods providing freely available implementations. Noticeably, the proposed approach outperforms the best concurrent algorithm by obtaining an improvement of F1-score of 60% (on average of the considered datasets).
2021
Marked temporal point processes, Activities of daily living, Activity prediction, Ambient assisted living
01 Pubblicazione su rivista::01a Articolo in rivista
Predicting activities of daily living via temporal point processes: Approaches and experimental results / Fortino, G.; Guzzo, A.; Ianni, M.; Leotta, F.; Mecella, M.. - In: COMPUTERS & ELECTRICAL ENGINEERING. - ISSN 0045-7906. - 96:(2021). [10.1016/j.compeleceng.2021.107567]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1683357
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