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ESMC: MLLM-Based Embedding Selection for Explainable Multiple Clustering

About

Typical deep clustering methods, while achieving notable progress, can only provide one clustering result per dataset. This limitation arises from their assumption of a fixed underlying data distribution, which may fail to meet user needs and provide unsatisfactory clustering outcomes. Our work investigates how multi-modal large language models (MLLMs) can be leveraged to achieve user-driven clustering, emphasizing their adaptability to user-specified semantic requirements. However, directly using MLLM output for clustering has risks for producing unstructured and generic image descriptions instead of feature-specific and concrete ones. To address these issues, our method first discovers that MLLMs' hidden states of text tokens are strongly related to the corresponding features, and leverages these embeddings to perform clusterings from any user-defined criteria. We also employ a lightweight clustering head augmented with pseudo-label learning, significantly enhancing clustering accuracy. Extensive experiments demonstrate its competitive performance on diverse datasets and metrics.

Xinyue Wang, Yuheng Jia, Hui Liu, Junhui Hou• 2025

Related benchmarks

TaskDatasetResultRank
Image ClusteringCIFAR-10
NMI0.8293
243
Clustering (Color)Fruit360
NMI0.6952
24
Clustering (Color)Stanford Cars
NMI81.38
24
Clustering (Color)Flowers
NMI72.83
24
Clustering (Glass)CMUface
NMI0.7665
24
Clustering (Pose)CMUface
NMI0.6271
24
Clustering (Species)Fruit360
NMI50.36
24
ClusteringCMUface Emotion
NMI0.2237
16
ClusteringFruit Color
NMI0.9308
16
ClusteringFruit Species
NMI1
16
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