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Autori principali: Su, Yiheng, Lease, Matthew
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2604.01206
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author Su, Yiheng
Lease, Matthew
author_facet Su, Yiheng
Lease, Matthew
contents We present RELISH (REgression with a Latent Iterative State Head), a novel, lightweight architecture designed for text regression with large language models. Rather than decoding numeric targets as text or aggregating multiple generated outputs, RELISH predicts scalar values directly from frozen LLM representations by iteratively refining a learned latent state through cross-attention over token-level representations, and then mapping the final state to a point estimate with a linear regressor. Across five datasets, four LLM backbones, and two LLM training regimes, RELISH consistently outperforms prior baselines from all three major LLM regression families, including autoregressive decoding, regression-aware inference, and existing predictive head methods. Despite these gains, RELISH remains highly parameter-efficient, requiring only 3.4-3.7M trainable parameters across frozen LLM backbones (only 0.01-0.04% additional overhead), far less than LoRA-based alternatives that grow with model size (0.26-0.42%).
format Preprint
id arxiv_https___arxiv_org_abs_2604_01206
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle LLM REgression with a Latent Iterative State Head
Su, Yiheng
Lease, Matthew
Computation and Language
Machine Learning
We present RELISH (REgression with a Latent Iterative State Head), a novel, lightweight architecture designed for text regression with large language models. Rather than decoding numeric targets as text or aggregating multiple generated outputs, RELISH predicts scalar values directly from frozen LLM representations by iteratively refining a learned latent state through cross-attention over token-level representations, and then mapping the final state to a point estimate with a linear regressor. Across five datasets, four LLM backbones, and two LLM training regimes, RELISH consistently outperforms prior baselines from all three major LLM regression families, including autoregressive decoding, regression-aware inference, and existing predictive head methods. Despite these gains, RELISH remains highly parameter-efficient, requiring only 3.4-3.7M trainable parameters across frozen LLM backbones (only 0.01-0.04% additional overhead), far less than LoRA-based alternatives that grow with model size (0.26-0.42%).
title LLM REgression with a Latent Iterative State Head
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2604.01206