Advanced Salp Swarm Algorithm based Hyper-parameter Optimization for Cell-level Traffic Prediction Model
Deep learning (DL) has been widely used for cell-level traffic prediction and achieved state-of-the-art prediction accuracy in recent years. Though hyper-parameters seriously impact the DL-based prediction models’ performance, finding the best hyper-parameters for various prediction models is a significant challenge in the fifth generation (5G) and beyond mo-bile networks because optimizing each model’s hyper-parameters manually with expert experience or with the exhaustively searching method is highly time and computational resource consuming.This work formulates the hyper-parameter optimization problem (HPO) related to every cell-level traffic prediction task into a combinatorial programming (CP) problem to address this issue.To solve it, we propose a salp swarm algorithm with chaotic mapping and adaptive learning (SSA-CMAL). Our numerical results demonstrate that compared with the benchmarks, the proposed algorithm has a breakneck convergence speed and can provide better hyper-parameters for the cell-level traffic prediction models to obtain higher prediction accuracy.
History
Publication status
- Published
File Version
- Accepted version
Presentation Type
- paper
Event name
The 6th International Conference on Data-driven Optimization of Complex Systems (DOCS 2024)Event location
Hangzhou, ChinaEvent type
conferenceEvent start date
2024-07-15Event finish date
2024-07-20Department affiliated with
- Engineering and Design Publications
Institution
University of SussexFull text available
- Yes
Peer reviewed?
- Yes