conferenceObject
Matching user queries in natural language with Cyber-Physical Systems using deep learning through a Transformer approach
Registro en:
J. A. Llopis, A. J. Fernández-García, J. Criado and L. Iribarne, "Matching user queries in natural language with Cyber-Physical Systems using deep learning through a Transformer approach," 2022 International Conference on INnovations in Intelligent SysTems and Applications (INISTA), Biarritz, France, 2022, pp. 1-6, doi: 10.1109/INISTA55318.2022.9894230.
9781665498104
Autor
Llopis, Juan Alberto
Fernández-García, Antonio Jesús
Criado, Javier
Iribarne, Luis
Institución
Resumen
IoT devices, as a result of technological advancements, may have different ways of operating and communicating despite having the same features. Therefore, finding a specific device among the whole of deployed devices can be a difficult task. To help find devices in an efficient and timely way, we propose a recommender system using deep learning for matching W3C Web of Things artifacts (called as WoT devices) with natural language queries. The proposal uses the Transformer algorithm to study the usage of deep learning to facilitate searching for devices, assuming that the model can be used as a recommendation tool to match WoT devices in Cyber-Physical Systems.