Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

CTRL Your Shift: Clustered Transfer Residual Learning for Many Small Datasets

About

Machine learning (ML) tasks often utilize large-scale data that is drawn from several distinct sources, such as different locations, treatment arms, or groups. In such settings, practitioners often desire predictions that not only exhibit good overall accuracy, but also remain reliable within each source and preserve the differences that matter across sources. For instance, several asylum and refugee resettlement programs now use ML-based employment predictions to guide where newly arriving families are placed within a host country, which requires generating informative and differentiated predictions for many and often small source locations. However, this task is made challenging by several common characteristics of the data in these settings: the presence of numerous distinct data sources, distributional shifts between them, and substantial variation in sample sizes across sources. This paper introduces Clustered Transfer Residual Learning (CTRL), a meta-learning method that combines the strengths of cross-domain residual learning and adaptive pooling/clustering in order to simultaneously improve overall accuracy and preserve source-level heterogeneity. We establish new theory showing that high-quality clusters can be learned efficiently, bypassing the need for repeated model refitting over candidate subsets. We evaluate CTRL alongside other state-of-the-art benchmarks on 5 large-scale datasets. This includes a dataset from the national asylum program in Switzerland, where the algorithmic geographic assignment of asylum seekers is currently being piloted. CTRL consistently outperforms the benchmarks across several key metrics and when using a range of different base learners.

Gauri Jain, Dominik Rothenh\"ausler, Kirk Bansak, Elisabeth Paulson• 2025

Related benchmarks

TaskDatasetResultRank
Predictive Modeling across GroupsSynthetic
RWA0.962
24
Predictive Modeling across GroupsSwiss Asylum Seekers
RWA40.1
24
Predictive Modeling across GroupsEducation
RWA0.946
24
RegressionSynthetic
MSE0.136
24
RegressionSwiss Asylum Seekers
MSE0.092
24
RegressionDissecting Health Bias
MSE0.164
24
RegressionUK Asylum Decisions
MSE0.183
24
RegressionEducation
MSE0.15
24
Showing 8 of 8 rows

Other info

Follow for update