导师:关于表格数据的自然语言问题的自动可视化答案

Can Liu, Yun Han, Ruike Jiang, Xiaoru Yuan
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引用次数: 29

摘要

我们提出了一个自动管道来生成带有注释的可视化,以回答公众对表格数据提出的自然语言问题。使用预训练的语言表示模型,首先将输入的自然语言问题和表头编码为向量。根据这些向量,多任务端到端深度神经网络提取相关数据区域和相应的聚集类型。我们为不同的属性类型和任务提供了精心设计的可视化和注释。我们用最先进的作品和最好的商业工具进行了对比实验。结果表明,该方法具有更高的精度和更有效的可视化效果。
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ADVISor: Automatic Visualization Answer for Natural-Language Question on Tabular Data
We propose an automatic pipeline to generate visualization with annotations to answer natural-language questions raised by the public on tabular data. With a pre-trained language representation model, the input natural language questions and table headers are first encoded into vectors. According to these vectors, a multi-task end-to-end deep neural network extracts related data areas and corresponding aggregation type. We present the result with carefully designed visualization and annotations for different attribute types and tasks. We conducted a comparison experiment with state-of-the-art works and the best commercial tools. The results show that our method outperforms those works with higher accuracy and more effective visualization.
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