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Main Authors: Xie, Jinxiang, Li, Zihao, He, Wei, Ding, Rui, Han, Shi, Zhang, Dongmei
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.15861
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author Xie, Jinxiang
Li, Zihao
He, Wei
Ding, Rui
Han, Shi
Zhang, Dongmei
author_facet Xie, Jinxiang
Li, Zihao
He, Wei
Ding, Rui
Han, Shi
Zhang, Dongmei
contents Text analysis of tabular data relies on two core operations: \emph{summarization} for corpus-level theme extraction and \emph{tagging} for row-level labeling. A critical limitation of employing large language models (LLMs) for these tasks is their inability to meet the high standards of output stability demanded by data analytics. To address this challenge, we introduce \textbf{CAST} (\textbf{C}onsistency via \textbf{A}lgorithmic Prompting and \textbf{S}table \textbf{T}hinking), a framework that enhances output stability by constraining the model's latent reasoning path. CAST combines (i) Algorithmic Prompting to impose a procedural scaffold over valid reasoning transitions and (ii) Thinking-before-Speaking to enforce explicit intermediate commitments before final generation. To measure progress, we introduce \textbf{CAST-S} and \textbf{CAST-T}, stability metrics for bulleted summarization and tagging, and validate their alignment with human judgments. Experiments across publicly available benchmarks on multiple LLM backbones show that CAST consistently achieves the best stability among all baselines, improving Stability Score by up to 16.2\%, while maintaining or improving output quality.
format Preprint
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publishDate 2026
record_format arxiv
spellingShingle CAST: Achieving Stable LLM-based Text Analysis for Data Analytics
Xie, Jinxiang
Li, Zihao
He, Wei
Ding, Rui
Han, Shi
Zhang, Dongmei
Computation and Language
Artificial Intelligence
Text analysis of tabular data relies on two core operations: \emph{summarization} for corpus-level theme extraction and \emph{tagging} for row-level labeling. A critical limitation of employing large language models (LLMs) for these tasks is their inability to meet the high standards of output stability demanded by data analytics. To address this challenge, we introduce \textbf{CAST} (\textbf{C}onsistency via \textbf{A}lgorithmic Prompting and \textbf{S}table \textbf{T}hinking), a framework that enhances output stability by constraining the model's latent reasoning path. CAST combines (i) Algorithmic Prompting to impose a procedural scaffold over valid reasoning transitions and (ii) Thinking-before-Speaking to enforce explicit intermediate commitments before final generation. To measure progress, we introduce \textbf{CAST-S} and \textbf{CAST-T}, stability metrics for bulleted summarization and tagging, and validate their alignment with human judgments. Experiments across publicly available benchmarks on multiple LLM backbones show that CAST consistently achieves the best stability among all baselines, improving Stability Score by up to 16.2\%, while maintaining or improving output quality.
title CAST: Achieving Stable LLM-based Text Analysis for Data Analytics
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2602.15861