cs.AI updates on arXiv.org 06月30日 12:14
Dynamic Adaptive Rank Space Exploration for Efficient Sentiment Analysis with Large Language Models
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本文提出DARSE框架,通过动态自适应排名空间探索,优化LLMs的情感分析性能,实验显示其有效提升了分析准确度。

arXiv:2410.16589v2 Announce Type: replace-cross Abstract: Sentiment analysis has become increasingly important for assessing public opinion and informing decision-making. Large language models (LLMs) have revolutionized this field by capturing nuanced language patterns. However, adapting LLMs to domain-specific sentiment analysis tasks remains challenging due to computational constraints and the need for optimal fine-tuning. To address these challenges, we propose a novel Dynamic Adaptive Rank Space Exploration (DARSE) framework for efficient and effective sentiment analysis using LLMs. DARSE consists of a coarse-grained greedy algorithm to identify the optimal rank range, a fine-grained exploration algorithm to refine rank selection, and a dynamic rank allocation method to determine the optimal rank combination for each LLM layer. Extensive experiments demonstrate that DARSE significantly improves sentiment analysis accuracy, achieving a 15.1% improvement in MSE and a 4.3% improvement in accuracy compared to previous work. Our framework strikes a balance between computational efficiency and model performance, making it a promising approach for sentiment analysis with LLMs.

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情感分析 LLMs DARSE框架 性能优化 计算效率
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