论文标题
DASHBOT:基于深度强化学习的Insight驱动仪表板生成
DashBot: Insight-Driven Dashboard Generation Based on Deep Reinforcement Learning
论文作者
论文摘要
分析仪表板在商业智能上很受欢迎,可以促进具有多个图表的洞察发现。但是,创建有效的仪表板是高度要求的,这要求用户具有足够的数据分析背景并熟悉Power BI等专业工具。要创建仪表板,用户必须通过选择数据列并探索不同的图表组合来配置图表,以优化Insights的通信,即试用和错误。最近的研究已开始使用深度学习方法来生成仪表板,以降低可视化创建的负担。但是,由于缺乏大规模和高质量的仪表板数据集,这种努力极大地阻碍了这种努力。在这项工作中,我们建议使用深度强化学习来产生分析仪表板,这些仪表板可以使用良好的可视化知识和强化学习的估计能力。具体而言,我们使用可视化知识来构建训练环境并奖励代理商,以探索和模仿精心设计的代理网络。通过消融研究和用户研究证明了深钢筋学习模型的有用性。总而言之,我们的工作为开发有效的基于ML的可视化推荐人提供了新的机会,而无需事先培训数据集。
Analytical dashboards are popular in business intelligence to facilitate insight discovery with multiple charts. However, creating an effective dashboard is highly demanding, which requires users to have adequate data analysis background and be familiar with professional tools, such as Power BI. To create a dashboard, users have to configure charts by selecting data columns and exploring different chart combinations to optimize the communication of insights, which is trial-and-error. Recent research has started to use deep learning methods for dashboard generation to lower the burden of visualization creation. However, such efforts are greatly hindered by the lack of large-scale and high-quality datasets of dashboards. In this work, we propose using deep reinforcement learning to generate analytical dashboards that can use well-established visualization knowledge and the estimation capacity of reinforcement learning. Specifically, we use visualization knowledge to construct a training environment and rewards for agents to explore and imitate human exploration behavior with a well-designed agent network. The usefulness of the deep reinforcement learning model is demonstrated through ablation studies and user studies. In conclusion, our work opens up new opportunities to develop effective ML-based visualization recommenders without beforehand training datasets.