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Relational Retrieval: Leveraging Known-Novel Interactions for Generalized Category Discovery

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In this study, we tackle Generalized Category Discovery (GCD) via a Relational Retrieval perspective, explicitly coupling labeled and unlabeled data through bidirectional knowledge transfer. While existing methods treat these sources separately, missing valuable interaction opportunities, we propose Relational Pattern Consistency (RPC) that enables mutual enhancement. RPC employs One-vs-All classifiers for soft ID/OOD decomposition, then introduces two mechanisms: (i) for known-class preservation, we transfer semantic behavioral alignment; (ii) for category discovery, we leverage the insight that samples from the same category maintain invariant relationships with known-class prototypes, transforming unreliable pseudo-labeling into well-defined relational pattern matching. This bidirectional design allows labeled data to guide unlabeled learning while discovering novel categories through their collective relational signatures. Extensive experiments demonstrate RPC achieves state-of-the-art performance on both generic and fine-grained benchmarks.

Yulin Xu, Chunqi Guo, Yuanzhen Shuai, Jianyuan Ni• 2026

Related benchmarks

TaskDatasetResultRank
Generalized Category DiscoveryImageNet-100
All Accuracy86.2
236
Generalized Category DiscoveryCIFAR-100
Accuracy (All)83.8
233
Generalized Category DiscoveryStanford Cars
Accuracy (All)65.5
208
Generalized Category DiscoveryCUB
Accuracy (All)67.1
186
Generalized Category DiscoveryCIFAR-10
All Accuracy97.6
152
Generalized Category DiscoveryFGVC Aircraft
Accuracy (All)62.1
115
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