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Domain Expansion: A Latent Space Construction Framework for Multi-Task Learning

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Training a single network with multiple objectives often leads to conflicting gradients that degrade shared representations, forcing them into a compromised state that is suboptimal for any single task--a problem we term latent representation collapse. We introduce Domain Expansion, a framework that prevents these conflicts by restructuring the latent space itself. Our framework uses a novel orthogonal pooling mechanism to construct a latent space where each objective is assigned to a mutually orthogonal subspace. We validate our approach across diverse benchmarks--including ShapeNet, MPIIGaze, and Rotated MNIST--on challenging multi-objective problems combining classification with pose and gaze estimation. Our experiments demonstrate that this structure not only prevents collapse but also yields an explicit, interpretable, and compositional latent space where concepts can be directly manipulated.

Chi-Yao Huang, Khoa Vo, Aayush Atul Verma, Duo Lu, Yezhou Yang• 2026

Related benchmarks

TaskDatasetResultRank
Concept CompositionMPIIGaze
Sim (⊕ and ⊖)0.95
10
Concept CompositionRotated-MNIST
Similarity Score73
10
Gaze EstimationMPIIGaze
Spearman Correlation (x)0.73
10
Identity IdentificationMPIIGaze
V-score (id)0.99
10
Rotation RegressionRotated-MNIST
Spearman Corr0.93
10
Digit ClassificationRotated-MNIST
V-Score0.96
10
Multi-task Learning EvaluationShapeNet Objective Set 1
Spearman (az)0.95
5
Multi-task Learning EvaluationShapeNet Objective Set 2
Spearman (az)0.95
5
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