Information visualizations such as bar charts and line charts are very common for analyzing data and discovering critical insights. Often people analyze charts to answer questions that they have in mind. Answering such questions can be challenging as they often require a significant amount of perceptual and cognitive effort. Chart Question Answering (CQA) systems typically take a chart and a natural language question as input and automatically generate the answer to facilitate visual data analysis. Over the last few years, there has been a growing body of literature on the task of CQA. In this survey, we systematically review the current state-of-the-art research focusing on the problem of chart question answering. We provide a taxonomy by identifying several important dimensions of the problem domain including possible inputs and outputs of the task and discuss the advantages and limitations of proposed solutions. We then summarize various evaluation techniques used in the surveyed papers. Finally, we outline the open challenges and future research opportunities related to chart question answering.
翻译:条形图和条形图等信息直观化是分析数据和发现关键洞察力非常常见的。人们常常分析图表,以回答他们想问的问题。回答这些问题可能具有挑战性,因为这些问题往往需要大量的认知和认知努力。图表问答系统通常以图表和自然语言问题作为投入,并自动生成答案,以便利视觉数据分析。过去几年来,关于CQA任务的大量文献越来越多。在这次调查中,我们系统地审查当前以图表回答问题问题为焦点的最新研究。我们通过确定问题领域的若干重要方面,包括任务的可能投入和产出,并讨论拟议解决方案的优点和局限性,提供了一种分类学。然后我们总结了调查文件中使用的各种评估技术。最后,我们概述了与图表回答有关的公开挑战和未来研究机会。