Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Robust multi-task boosting using clustering and local ensembling

About

Multi-Task Learning (MTL) aims to boost predictive performance by sharing information across related tasks, yet conventional methods often suffer from negative transfer when unrelated or noisy tasks are forced to share representations. We propose Robust Multi-Task Boosting using Clustering and Local Ensembling (RMB-CLE), a principled MTL framework that integrates error-based task clustering with local ensembling. Unlike prior work that assumes fixed clusters or hand-crafted similarity metrics, RMB-CLE derives inter-task similarity directly from cross-task errors, which admit a risk decomposition into functional mismatch and irreducible noise, providing a theoretically grounded mechanism to prevent negative transfer. Tasks are grouped adaptively via agglomerative clustering, and within each cluster, a local ensemble enables robust knowledge sharing while preserving task-specific patterns. Experiments show that RMB-CLE recovers ground-truth clusters in synthetic data and consistently outperforms multi-task, single-task, and pooling-based ensemble methods across diverse real-world and synthetic benchmarks. These results demonstrate that RMB-CLE is not merely a combination of clustering and boosting but a general and scalable framework that establishes a new basis for robust multi-task learning.

Seyedsaman Emami, Daniel Hern\'andez-Lobato, Gonzalo Mart\'inez-Mu\~noz• 2026

Related benchmarks

TaskDatasetResultRank
ClassificationBank--
25
RegressionAbalone
RMSE2.169
17
RegressionParkinsons
RMSE0.349
16
ClassificationSynthetic
Recall0.901
12
ClassificationSynthetic multi-task
Accuracy90
12
RegressionSynthetic
MAE0.218
12
RegressionSynthetic multi-task dataset
RMSE0.278
12
ClassificationAdult-Gender real-world (test)
Accuracy87.2
10
ClassificationAdult Race real-world (test)
Accuracy87.3
10
ClassificationAvila real-world (test)
Accuracy87.5
10
Showing 10 of 26 rows

Other info

Follow for update