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A publicação pode ser exportada nos seguintes formatos: referência da APA (American Psychological Association), referência do IEEE (Institute of Electrical and Electronics Engineers), BibTeX e RIS.

Exportar Referência (APA)
Farkhari, H., Viana, J., Sebastião, P., Bernardo, L., Kahvazadeh, S. & Dinis, R. (2023). Accurate and reliable methods for 5G UAV jamming identification with calibrated uncertainty. In RCIS: The 17th International Conference on Research Challenges in Information Science. Corfu, Greece: CEUR-WS.
Exportar Referência (IEEE)
H. Farkhari et al.,  "Accurate and reliable methods for 5G UAV jamming identification with calibrated uncertainty", in RCIS: The 17th Int. Conf. on Research Challenges in Information Science, Corfu, Greece, CEUR-WS, 2023
Exportar BibTeX
@inproceedings{farkhari2023_1783877295515,
	author = "Farkhari, H. and Viana, J. and Sebastião, P. and Bernardo, L. and Kahvazadeh, S. and Dinis, R.",
	title = "Accurate and reliable methods for 5G UAV jamming identification with calibrated uncertainty",
	booktitle = "RCIS: The 17th International Conference on Research Challenges in Information Science",
	year = "2023",
	editor = "",
	volume = "",
	number = "",
	series = "",
	publisher = "CEUR-WS",
	address = "Corfu, Greece",
	organization = "Magkos, E., Karagiannis, S., and Campos, L.",
	url = "https://www.rcis-conf.com/rcis2023/"
}
Exportar RIS
TY  - CPAPER
TI  - Accurate and reliable methods for 5G UAV jamming identification with calibrated uncertainty
T2  - RCIS: The 17th International Conference on Research Challenges in Information Science
AU  - Farkhari, H.
AU  - Viana, J.
AU  - Sebastião, P.
AU  - Bernardo, L.
AU  - Kahvazadeh, S.
AU  - Dinis, R.
PY  - 2023
CY  - Corfu, Greece
UR  - https://www.rcis-conf.com/rcis2023/
AB  - This research highlights the negative impact of ignoring uncertainty on DNN decision-making and Reliability. Proposed combined preprocessing and post-processing methods enhance DNN accuracy and Reliability in time-series binary classification for 5G UAV security dataset, employing ML algorithms and confidence values. Several metrics are used to evaluate the proposed hybrid algorithms. The study emphasizes the XGB classifier's unreliability and suggests the proposed methods' potential superiority over the DNN softmax layer. Furthermore, improved uncertainty calibration based on the Reliability Score metric minimizes the difference between Mean Confidence and Accuracy, enhancing accuracy and Reliability.
ER  -