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Hauptverfasser: Xie, Guangyu, Zhang, Yice, Bao, Jianzhu, Wang, Qianlong, Sun, Yang, Wang, Bingbing, Xu, Ruifeng
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2510.24425
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author Xie, Guangyu
Zhang, Yice
Bao, Jianzhu
Wang, Qianlong
Sun, Yang
Wang, Bingbing
Xu, Ruifeng
author_facet Xie, Guangyu
Zhang, Yice
Bao, Jianzhu
Wang, Qianlong
Sun, Yang
Wang, Bingbing
Xu, Ruifeng
contents Recent efforts leverage knowledge distillation techniques to develop lightweight and practical sentiment analysis models. These methods are grounded in human-written instructions and large-scale user texts. Despite the promising results, two key challenges remain: (1) manually written instructions are limited in diversity and quantity, making them insufficient to ensure comprehensive coverage of distilled knowledge; (2) large-scale user texts incur high computational cost, hindering the practicality of these methods. To this end, we introduce CompEffDist, a comprehensive and efficient distillation framework for sentiment analysis. Our framework consists of two key modules: attribute-based automatic instruction construction and difficulty-based data filtering, which correspondingly tackle the aforementioned challenges. Applying our method across multiple model series (Llama-3, Qwen-3, and Gemma-3), we enable 3B student models to match the performance of 20x larger teacher models on most tasks. In addition, our approach greatly outperforms baseline methods in data efficiency, attaining the same performance level with only 10% of the data.
format Preprint
id arxiv_https___arxiv_org_abs_2510_24425
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Comprehensive and Efficient Distillation for Lightweight Sentiment Analysis Models
Xie, Guangyu
Zhang, Yice
Bao, Jianzhu
Wang, Qianlong
Sun, Yang
Wang, Bingbing
Xu, Ruifeng
Computation and Language
Recent efforts leverage knowledge distillation techniques to develop lightweight and practical sentiment analysis models. These methods are grounded in human-written instructions and large-scale user texts. Despite the promising results, two key challenges remain: (1) manually written instructions are limited in diversity and quantity, making them insufficient to ensure comprehensive coverage of distilled knowledge; (2) large-scale user texts incur high computational cost, hindering the practicality of these methods. To this end, we introduce CompEffDist, a comprehensive and efficient distillation framework for sentiment analysis. Our framework consists of two key modules: attribute-based automatic instruction construction and difficulty-based data filtering, which correspondingly tackle the aforementioned challenges. Applying our method across multiple model series (Llama-3, Qwen-3, and Gemma-3), we enable 3B student models to match the performance of 20x larger teacher models on most tasks. In addition, our approach greatly outperforms baseline methods in data efficiency, attaining the same performance level with only 10% of the data.
title Comprehensive and Efficient Distillation for Lightweight Sentiment Analysis Models
topic Computation and Language
url https://arxiv.org/abs/2510.24425