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📄 Abstract
Abstract: Fine-tuning LLMs for classification typically maps inputs directly to labels.
We ask whether attaching brief explanations to each label during fine-tuning
yields better models. We evaluate conversational response quality along three
axes: naturalness, comprehensiveness, and on-topic adherence, each rated on
5-point scales. Using ensemble-generated data from multiple LLMs, we fine-tune
a 7B-parameter model and test across six diverse conversational datasets.
Across 18 dataset, task settings, label-plus-explanation training outperforms
label-only baselines.
A central and unexpected result concerns random tokens. We replace
human-written explanations with text that is syntactically incoherent yet
vocabulary-aligned with the originals (e.g., shuffled or bag-of-words
variants). Despite lacking semantics, these pseudo-explanations still improve
accuracy over label-only training and often narrow much of the gap to true
explanations. The effect persists across datasets and training seeds,
indicating that gains arise less from meaning than from structure: the extra
token budget encourages richer intermediate computation and acts as a
regularizer that reduces over-confident shortcuts.
Internal analyses support this view: explanation-augmented models exhibit
higher activation entropy in intermediate layers alongside sharper predictive
mass at the output layer, consistent with increased deliberation before
decision. Overall, explanation-augmented fine-tuning, whether with genuine
rationales or carefully constructed random token sequences, improves accuracy
and reliability for LLM classification while clarifying how token-level
scaffolding shapes computation during inference.
Key Contributions
Investigates the impact of attaching explanations to labels during LLM fine-tuning for classification tasks. It demonstrates that explanation-enhanced fine-tuning consistently outperforms label-only training, even with semantically incoherent pseudo-explanations, suggesting a regularization effect that improves model accuracy and conversational quality.
Business Value
Leads to more accurate and higher-quality LLM-based classification systems and conversational agents, improving user experience and task completion rates in customer service, content moderation, and information retrieval.