2022 5th International Conference on Contemporary Computing and Informatics (IC3I) 2022
DOI: 10.1109/ic3i56241.2022.10072623
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BDT: An Ada Boost Classifier Ensemble with Decision Tree for Traffic Network Prediction

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“…The final prediction is obtained by integrating the predictions of all weak classifiers and weighting them according to their accuracy. AdaBoost has been employed in a variety of wireless network applications, including traffic network prediction [38] and network performance forecasting [39]. However, there are still limited studies that specifically focus on using AdaBoost for 5G coverage prediction.…”
Section: G Adaboostmentioning
confidence: 99%
“…The final prediction is obtained by integrating the predictions of all weak classifiers and weighting them according to their accuracy. AdaBoost has been employed in a variety of wireless network applications, including traffic network prediction [38] and network performance forecasting [39]. However, there are still limited studies that specifically focus on using AdaBoost for 5G coverage prediction.…”
Section: G Adaboostmentioning
confidence: 99%