Learning-to-Rank Meets Language: Boosting Language-Driven Ordering Alignment for Ordinal Classification
–Neural Information Processing Systems
We present a novel language-driven ordering alignment method for ordinal classification. The labels in ordinal classification contain additional ordering relations, making them prone to overfitting when relying solely on training data. Recent developments in pre-trained vision-language models inspire us to leverage the rich ordinal priors in human language by converting the original task into a vision-language alignment task. Consequently, we propose L2RCLIP, which fully utilizes the language priors from two perspectives. First, we introduce a complementary prompt tuning technique called RankFormer, designed to enhance the ordering relation of original rank prompts.
Neural Information Processing Systems
Jan-20-2025, 02:36:01 GMT
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