The representation of the personal context is complex and essential to improve the help machines can give to humans for making sense of the world, and the help humans can give to machines to improve their efficiency. We aim to design a novel model representation of the personal context and design a learning process for better integration with machine learning. We aim to implement these elements into a modern system architecture focus in real-life environments. Also, we show how our proposal can improve in specifically related work papers. Finally, we are moving forward with a better personal context representation with an improved model, the implementation of the learning process, and the architectural design of these components.
Streaming and Learning the Personal Context / Giunchiglia, Fausto; Rodas Britez, Marcelo Dario; Bontempelli, Andrea; Li, Xiaoyue. - 2995:(2021), pp. 19-27. (Intervento presentato al convegno MRC-HCCS – Human-Centric and Contextual Systems Twelfth International Workshop Modelling | Reasoning | Context tenutosi a Montreal, Quebec, Canada nel 19-20 August 2021).
Streaming and Learning the Personal Context
Fausto Giunchiglia;Marcelo Rodas Britez;Andrea Bontempelli;Xiaoyue Li
2021-01-01
Abstract
The representation of the personal context is complex and essential to improve the help machines can give to humans for making sense of the world, and the help humans can give to machines to improve their efficiency. We aim to design a novel model representation of the personal context and design a learning process for better integration with machine learning. We aim to implement these elements into a modern system architecture focus in real-life environments. Also, we show how our proposal can improve in specifically related work papers. Finally, we are moving forward with a better personal context representation with an improved model, the implementation of the learning process, and the architectural design of these components.File | Dimensione | Formato | |
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2021 MRC-HCCS Streaming context (1).pdf
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paper3.pdf
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