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揭志强, 叶阳, 程时伟. 基于眼动跟踪的个性化文本摘要生成模型[J]. 计算机辅助设计与图形学学报, 2023, 35(10): 1620-1628. DOI: 10.3724/SP.J.1089.2023.19666
引用本文: 揭志强, 叶阳, 程时伟. 基于眼动跟踪的个性化文本摘要生成模型[J]. 计算机辅助设计与图形学学报, 2023, 35(10): 1620-1628. DOI: 10.3724/SP.J.1089.2023.19666
Jie Zhiqiang, Ye Yang, Cheng Shiwei. A Model to Personalized Text Summarization Generation Based on Eye Tracking[J]. Journal of Computer-Aided Design & Computer Graphics, 2023, 35(10): 1620-1628. DOI: 10.3724/SP.J.1089.2023.19666
Citation: Jie Zhiqiang, Ye Yang, Cheng Shiwei. A Model to Personalized Text Summarization Generation Based on Eye Tracking[J]. Journal of Computer-Aided Design & Computer Graphics, 2023, 35(10): 1620-1628. DOI: 10.3724/SP.J.1089.2023.19666

基于眼动跟踪的个性化文本摘要生成模型

A Model to Personalized Text Summarization Generation Based on Eye Tracking

  • 摘要: 为了满足不同用户对生成摘要的个性化需求, 提出一种基于眼动跟踪的个性化文本摘要生成网络模型. 首先使用阅读时的注视和扫视等眼动跟踪数据提取眼动关键信息, 并使用长短期记忆模型对眼动关键信息进行编码;然后将眼动关键信息隐藏层状态融合到注意力机制中, 结合内部注意力模型和指针生成器网络生成个性化的文本摘要; 最后设计开发了相关的文本摘要生成系统. 使用包含用户眼动数据的中文新闻数据集 ADEGBTS 进行实验的结果表明, 与现有的文本摘要模型相比, 所提模型在 ROUGE 指标评估上的得分更高, 达到 48.68%; 用户测试结果表明, 所提系统可以高效地生成个性化摘要.

     

    Abstract: In order to meet the personalized demands of various users for summarization generation, a gaze-based key information guide network (GKGN) is proposed. Firstly, it uses eye-movement data, such as fixation and saccade in the reading process, to extract key eye-movement information. The key eye-movement information is encoded by long-short term memory (LSTM) networks. Secondly, the hidden layer state of the key eye-movement information is fused with mechanisms of attention. Apart from that, intra-attention model and pointer generator network (PGN) are fused to generate the personalized text summarization. The ADEGBTS dataset, which contains users’ eye-movement data on reading Chinese news, is used for evaluating the GKGN model. The results show that, compared with existing text summarization models, the GKGN model scored 48.68% higher on the ROUGE. In addition, a text summarization system is designed and developed, and the user test results show that the system can efficiently generate the personalized summarization.

     

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