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Probabilistic knowledge infusion through symbolic features for context-aware activity recognition

Articolo
Data di Pubblicazione:
2023
Citazione:
Probabilistic knowledge infusion through symbolic features for context-aware activity recognition / L. Arrotta, G. Civitarese, C. Bettini. - In: PERVASIVE AND MOBILE COMPUTING. - ISSN 1574-1192. - 91:(2023 Apr), pp. 101780.1-101780.13. [10.1016/j.pmcj.2023.101780]
Abstract:
In the general machine learning domain, solutions based on the integration of deep learning models with knowledge-based approaches are emerging. Indeed, such hybrid systems have the advantage of improving the recognition rate and the model's interpretability. At the same time, they require a significantly reduced amount of labeled data to reliably train the model. However, these techniques have been poorly explored in the sensor-based Human Activity Recognition (HAR) domain. The common-sense knowledge about activity execution can potentially improve purely data-driven approaches. While a few knowledge infusion approaches have been proposed for HAR, they rely on rigid logic formalisms that do not take into account uncertainty. In this paper, we propose P-NIMBUS, a novel knowledge infusion approach for sensor-based HAR that relies on probabilistic reasoning. A probabilistic ontology is in charge of computing symbolic features that are combined with the features automatically extracted by a CNN model from raw sensor data and high-level context data. In particular, the symbolic features encode probabilistic common-sense knowledge about the activities consistent with the user's surrounding context. These features are infused within the model before the classification layer. We experimentally evaluated P-NIMBUS on a HAR dataset of mobile devices sensor data that includes 14 different activities performed by 25 users. Our results show that P-NIMBUS outperforms state-of-the-art neuro-symbolic approaches, with the advantage of requiring a limited amount of training data to reach satisfying recognition rates (i.e., more than 80% of F1-score with only 20% of labeled data).
Tipologia IRIS:
01 - Articolo su periodico
Keywords:
Context-awareness; Human activity recognition; Neuro-symbolic;
Elenco autori:
L. Arrotta, G. Civitarese, C. Bettini
Autori di Ateneo:
BETTINI CLAUDIO ( autore )
CIVITARESE GABRIELE ( autore )
Link alla scheda completa:
https://air.unimi.it/handle/2434/958816
Link al Full Text:
https://air.unimi.it/retrieve/handle/2434/958816/2160669/ProDUSTIN%20(1).pdf
Progetto:
MUSA - Multilayered Urban Sustainability Actiona
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