Predicting 5G throughput with BAMMO, a boosted additive model for data with missing observations

Tate A Jacobson, Jie Ding, Hui Zou

Research output: Contribution to journalArticlepeer-review

Abstract

To deliver on the promise of 5G, network providers and application developers need to understand the factors impacting millimetre wave (mmWave) 5G throughput. Missing data, however, pose significant challenges for modelling throughput. Even in controlled settings, signal strength data may be only intermittently observed when a device's connection is weak, leading to missing predictor values in model training. In addition, users may choose not to share their data once the model is deployed, meaning that key predictors may be missing when we want to predict throughput for their devices. To address these challenges, we introduce boosted additive model for data with missing observation (BAMMO), a novel additive model estimator obtained via a componentwise boosting algorithm that naturally incorporates data with missing values in model fitting. We validate BAMMO's approach to handling missing data by comparing it with competing methods on real 5G network data with a high proportion of missing values and in simulations, finding that it delivers more accurate predictions and takes less time to compute. To identify key predictors of mmWave 5G throughput, we develop a novel extension of sparsity oriented importance learning for BAMMO, giving us a measure of variable importance based on the entire boosting solution path rather than a single selected model.

Original languageEnglish (US)
Pages (from-to)249-273
Number of pages25
JournalJournal of the Royal Statistical Society. Series C: Applied Statistics
Volume74
Issue number1
DOIs
StatePublished - Jan 2025

Bibliographical note

Publisher Copyright:
© 2024 The Royal Statistical Society.

Keywords

  • machine learning
  • mmWave 5G NR
  • mobile networks
  • model selection
  • variable importance

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