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Paper

LLM attribution analysis across different fine-tuning strategies and model scales for automated code compliance

by Jack Wei Lun Shi arxiv/2604.15589
Free2AITools Nexus Index
36.3
S: Semantic 50

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A: Authority 0
P: Popularity 0
R: Recency 71
Q: Quality 60
Tech Context
Vital Performance

Existing research on large language models (LLMs) for automated code compliance has primarily focused on performance, treating the models as black boxes and overlooking how training decisions affect their interpretive behavior. This paper addresses this gap by employing a perturbation-based attribution analysis to compare the interpretive behaviors of LLMs across different fine-tuning strategies such as full fine-tuning (FFT), low-rank adaptation (LoRA) and quantized LoRA fine-tuning, as well...

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Registry ID 2604.15589
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Cite this paper

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BibTeX
@misc{arxiv_2604_15589,
  author = {Jack Wei Lun Shi},
  title = {LLM attribution analysis across different fine-tuning strategies and model scales for automated code compliance Paper},
  year = {2026},
  howpublished = {\url{https://arxiv.org/abs/2604.15589}},
  note = {Accessed via Free2AITools.}
}
APA Style
Jack Wei Lun Shi. (2026). LLM attribution analysis across different fine-tuning strategies and model scales for automated code compliance [Paper]. Free2AITools. https://arxiv.org/abs/2604.15589

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βš–οΈ Free2AITools Nexus Index V2.0

Semantic (S) 50

Query-time baseline · scored live at search

Authority (A) 0
Popularity (P) 0
Recency (R) 71
Quality (Q) 60

πŸ’¬ Index Insight

FNI V2.0 for LLM attribution analysis across different fine-tuning strategies and model scales for automated code compliance: Authority (A:0), Popularity (P:0), Recency (R:71), Quality (Q:60). Semantic (S) is a query-time baseline scored live at search.

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πŸ“ Executive Summary

"Existing research on large language models (LLMs) for automated code compliance has primarily focused on performance, treating the models as black boxes and overlooking how training decisions affect their interpretive behavior. This paper addresses this gap by employing a perturbation-based attribution analysis to compare the interpretive behaviors of LLMs across different fine-tuning strategies such as full fine-tuning (FFT), low-rank adaptation (LoRA) and quantized LoRA fine-tuning, as well..."

❝ Cite Node

@article{Shi2026LLM,
  title={LLM attribution analysis across different fine-tuning strategies and model scales for automated code compliance},
  author={Jack Wei Lun Shi},
  journal={arXiv preprint arXiv:2604.15589},
  year={2026}
}

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Jack Wei Lun Shi

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πŸ“Š Research Signals

πŸ“…1970Published
⏱️71RecencyFNI pillar
βœ…60QualityFNI pillar
πŸ—‚οΈcs.CLField

🏷️ Research Topics

lora finetuning
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πŸ†” Identity & Source

id
2604.15589
slug
2604.15589
source
arxiv
author
Jack Wei Lun Shi
license
arXiv
tags
arxiv:cs.CL, arxiv:cs.AI, arxiv:cs.LG, llm

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params billions
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