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The Benefit of Multitask Representation Learning

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abstract

We discuss a general method to learn data representations from multiple tasks. We provide a justification for this method in both settings of multitask learning and learning-to-learn. The method is illustrated in detail in the special case of linear feature learning. Conditions on the theoretical advantage offered by multitask representation learning over independent task learning are established. In particular, focusing on the important example of half-space learning, we derive the regime in which multitask representation learning is beneficial over independent task learning, as a function of the sample size, the number of tasks and the intrinsic data dimensionality. Other potential applications of our results include multitask feature learning in reproducing kernel Hilbert spaces and multilayer, deep networks.

fields

cs.LG 1

years

2026 1

verdicts

UNVERDICTED 1

representative citing papers

Unsupervised Causal Abstractions Discovery

cs.LG · 2026-06-17 · unverdicted · novelty 6.0

Low-rank graphs induce latents that form causal abstractions, with identifiability results and a practical objective enabling unsupervised learning of high-level SCMs from low-level measurements.

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  • Unsupervised Causal Abstractions Discovery cs.LG · 2026-06-17 · unverdicted · none · ref 52 · internal anchor

    Low-rank graphs induce latents that form causal abstractions, with identifiability results and a practical objective enabling unsupervised learning of high-level SCMs from low-level measurements.