HAPEns: Hardware-Aware Post-Hoc Ensembling for Tabular Data
arXiv cs.LG / 3/12/2026
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Key Points
- HAPEns is a post-hoc ensembling method that balances predictive accuracy with hardware efficiency on tabular data.
- It constructs a Pareto-front of diverse ensembles by jointly optimizing performance and resource usage for deployment.
- Experiments on 83 tabular datasets show HAPEns outperforms baselines and highlight memory usage as a key objective metric.
- The approach can meaningfully improve greedy ensembling with a static multi-objective weighting scheme, underscoring practical deployment benefits.
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