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The LLM Bottleneck: Why Open-Source Vision LLMs Struggle with Hierarchical Visual Recognition

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This paper reveals that many open-source large language models (LLMs) lack hierarchical knowledge about our visual world, unaware of even well-established biology taxonomies. This shortcoming makes LLMs a bottleneck for vision LLMs' hierarchical visual recognition (e.g., recognizing Anemone Fish but not Vertebrate). We arrive at these findings using about one million four-choice visual question answering (VQA) tasks constructed from six taxonomies and four image datasets. Interestingly, finetuning a vision LLM using our VQA tasks reaffirms LLMs' bottleneck effect because the VQA tasks improve the LLMs' hierarchical consistency more than the vision LLMs'. We conjecture that one cannot make open-source vision LLMs understand visual concepts hierarchically until LLMs possess corresponding taxonomy knowledge.

Yuwen Tan, Yuan Qing, Boqing Gong• 2025

Related benchmarks

TaskDatasetResultRank
Taxonomic ClassificationiNat Plant 21
HCA29.34
9
Taxonomic ClassificationiNat Animal 21
HCA23.38
9
Taxonomic ClassificationCUB-200
HCA46.17
9
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