“…To mitigate this issue, other authors have suggested that nodes should exchange labeled samples across multiple links [24,30], but the problem is that the statistical relationship between the inputs and target are link-specific and should not be aggregated. In summary, there are several opportunities to advance the state of the art in LQ estimation.…”
Section: Overview On Existing Approaches and The State Of The Artmentioning
confidence: 99%
“…The use of regression techniques in the form of supervised learning have also been explored in a series of works by the same research center [28][29][30]91]. In [28,29], a distributed protocol was designed to exploit the mobility of nodes for gathering diverse training samples, and afterwards, use the training samples in an offline supervised learning algorithm.…”
Section: Machine Learningmentioning
confidence: 99%
“…To address the adaptability issues in [28,29], Di Caro et al developed an online learning framework that incrementally retrains its regression model [30]. According to Di…”
Section: Machine Learningmentioning
confidence: 99%
“…(iv) Reduce sampling and labeling expenses -Some schemes ignore the costs associated with collecting labeled training examples as evident in the large training sets used in [28,29] and the continuous online labeling and tuning used in [24,30]. However, there are energy and network costs associated with obtaining labels due to them residing at the opposite end of the link.…”
Section: Future Directions For Learning Link Qualitymentioning
confidence: 99%
“…(v) Improved accuracy -Some authors advocate for the mixing of training sets gathered across disparate links to expedite model startup [30,93].…”
Section: Future Directions For Learning Link Qualitymentioning
“…To mitigate this issue, other authors have suggested that nodes should exchange labeled samples across multiple links [24,30], but the problem is that the statistical relationship between the inputs and target are link-specific and should not be aggregated. In summary, there are several opportunities to advance the state of the art in LQ estimation.…”
Section: Overview On Existing Approaches and The State Of The Artmentioning
confidence: 99%
“…The use of regression techniques in the form of supervised learning have also been explored in a series of works by the same research center [28][29][30]91]. In [28,29], a distributed protocol was designed to exploit the mobility of nodes for gathering diverse training samples, and afterwards, use the training samples in an offline supervised learning algorithm.…”
Section: Machine Learningmentioning
confidence: 99%
“…To address the adaptability issues in [28,29], Di Caro et al developed an online learning framework that incrementally retrains its regression model [30]. According to Di…”
Section: Machine Learningmentioning
confidence: 99%
“…(iv) Reduce sampling and labeling expenses -Some schemes ignore the costs associated with collecting labeled training examples as evident in the large training sets used in [28,29] and the continuous online labeling and tuning used in [24,30]. However, there are energy and network costs associated with obtaining labels due to them residing at the opposite end of the link.…”
Section: Future Directions For Learning Link Qualitymentioning
confidence: 99%
“…(v) Improved accuracy -Some authors advocate for the mixing of training sets gathered across disparate links to expedite model startup [30,93].…”
Section: Future Directions For Learning Link Qualitymentioning
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