推进垂直领域的质量评估:大型语言模型文本输入的评分计算

Jun-Kai Yi, Yi-Fan Yao
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引用次数: 0

摘要

随着基于 Transformer 的生成式人工智能的出现,有关大规模生成式语言模型的研究激增,尤其是在自然语言处理应用领域。此外,这些模型已在教育、历史、数学、医学、信息处理和网络安全等多个垂直领域展现出巨大的潜力。在中文人工智能应用研究中,人们发现生成式人工智能生成的文本质量已成为关注的焦点。然而,对输入文本质量的研究仍然是一个被忽视的重点。因此,基于垂直领域词典的矢量化对比和文本结构分析,提出了影响生成质量的三个输入指标 D1、D2 和 D3。在此基础上,我们研究了一种名为 VFS(垂直字段得分)的文本质量评价算法,并设计了一种名为 V-L(垂直长度)的输出评价指标。我们的实验表明,得分较高的输入文本能使人工智能生成器产生更有效的输出。这种改进可以帮助用户,尤其是在特定垂直领域利用人工智能生成器进行问题解答时,从而提高回答的有效性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancing Quality Assessment in Vertical Field: Scoring Calculation for Text Inputs to Large Language Models
With the advent of Transformer-based generative AI, there has been a surge in research focused on large-scale generative language models, especially in natural language processing applications. Moreover, these models have demonstrated immense potential across various vertical fields, ranging from education and history to mathematics, medicine, information processing, and cybersecurity. In research on AI applications in Chinese, it has been found that the quality of text generated by generative AI has become a central focus of attention. However, research on the quality of input text still remains an overlooked priority. Consequently, based on the vectorization comparison of vertical field lexicons and text structure analysis, proposes three input indicators D1, D2, and D3 that affect the quality of generation. Based on this, we studied a text quality evaluation algorithm called VFS (Vertical Field Score) and designed an output evaluation metric named V-L (Vertical-Length). Our experiments indicate that higher-scoring input texts enable generative AI to produce more effective outputs. This enhancement aids users, particularly in leveraging generative AI for question-answering in specific vertical fields, thereby improving response effectiveness and accuracy.
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