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Forget Less by Learning from Parents Through Hierarchical Relationships

About

Custom Diffusion Models (CDMs) offer impressive capabilities for personalization in generative modeling, yet they remain vulnerable to catastrophic forgetting when learning new concepts sequentially. Existing approaches primarily focus on minimizing interference between concepts, often neglecting the potential for positive inter-concept interactions. In this work, we present Forget Less by Learning from Parents (FLLP), a novel framework that introduces a parent-child inter-concept learning mechanism in hyperbolic space to mitigate forgetting. By embedding concept representations within a Lorentzian manifold, naturally suited to modeling tree-like hierarchies, we define parent-child relationships in which previously learned concepts serve as guidance for adapting to new ones. Our method not only preserves prior knowledge but also supports continual integration of new concepts. We validate FLLP on three public datasets and one synthetic benchmark, showing consistent improvements in both robustness and generalization.

Arjun Ramesh Kaushik, Naresh Kumar Devulapally, Vishnu Suresh Lokhande, Nalini K. Ratha, Venu Govindaraju• 2026

Related benchmarks

TaskDatasetResultRank
Continual Concept CustomizationCIFC
C1 IA83.9
8
Continual Concept CustomizationCelebA
C1 IA77.4
3
Continual Concept CustomizationImageNet
Concept 1 IA82.1
3
Continual Concept LearningCustomConcept101
IA (C1 - C5)76.1
2
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