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On the Provable Importance of Gradients for Language-Assisted Image Clustering

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This paper investigates the recently emerged problem of Language-assisted Image Clustering (LaIC), where textual semantics are leveraged to improve the discriminability of visual representations to facilitate image clustering. Due to the unavailability of true class names, one of core challenges of LaIC lies in how to filter positive nouns, i.e., those semantically close to the images of interest, from unlabeled wild corpus data. Existing filtering strategies are predominantly based on the off-the-shelf feature space learned by CLIP; however, despite being intuitive, these strategies lack a rigorous theoretical foundation. To fill this gap, we propose a novel gradient-based framework, termed as GradNorm, which is theoretically guaranteed and shows strong empirical performance. In particular, we measure the positiveness of each noun based on the magnitude of gradients back-propagated from the cross-entropy between the predicted target distribution and the softmax output. Theoretically, we provide a rigorous error bound to quantify the separability of positive nouns by GradNorm and prove that GradNorm naturally subsumes existing filtering strategies as extremely special cases of itself. Empirically, extensive experiments show that GradNorm achieves the state-of-the-art clustering performance on various benchmarks.

Bo Peng, Jie Lu, Guangquan Zhang, Zhen Fang• 2025

Related benchmarks

TaskDatasetResultRank
Image ClusteringCIFAR-10
NMI0.826
318
Image ClusteringSTL-10
ACC98.3
282
Image ClusteringImageNet-10
NMI0.987
201
ClusteringImagenet Dogs
NMI81
85
Image ClusteringDTD
NMI63.1
49
Image ClusteringCIFAR-20
NMI61.3
43
Image ClusteringImageNet-1K
NMI79.2
25
ClusteringPets
NMI81.5
21
ClusteringFlowers
NMI (%)86.7
17
Image ClusteringUCF-101
NMI82.5
12
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