Beyond Interpretability: Exploring the Comprehensibility of Adaptive Video Streaming through Large Language Models
Beyond Interpretability: Exploring the Comprehensibility of Adaptive Video Streaming through Large Language Models
Over the past decade, adaptive video streaming technology has witnessed significant advancements, particularly driven by the rapid evolution of deep learning techniques. However, the black-box nature of deep learning algorithms presents challenges for developers in understanding decision-making processes and optimizing for specific application scenarios. Although existing research has enhanced algorithm interpretability through decision tree conversion, interpretability does not directly equate to developers' subjective comprehensibility. To address this challenge, we introduce \texttt{ComTree}, the first bitrate adaptation algorithm generation framework that considers comprehensibility. The framework initially generates the complete set of decision trees that meet performance requirements, then leverages large language models to evaluate these trees for developer comprehensibility, ultimately selecting solutions that best facilitate human understanding and enhancement. Experimental results demonstrate that \texttt{ComTree} significantly improves comprehensibility while maintaining competitive performance, showing potential for further advancement. The source code is available at https://github.com/thu-media/ComTree.
Lianchen Jia、Chaoyang Li、Ziqi Yuan、Jiahui Chen、Tianchi Huang、Jiangchuan Liu、Lifeng Sun
计算技术、计算机技术
Lianchen Jia,Chaoyang Li,Ziqi Yuan,Jiahui Chen,Tianchi Huang,Jiangchuan Liu,Lifeng Sun.Beyond Interpretability: Exploring the Comprehensibility of Adaptive Video Streaming through Large Language Models[EB/OL].(2025-08-22)[2025-09-06].https://arxiv.org/abs/2508.16448.点此复制
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