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Effortless Data Exploration with zenvisage: An Expressive and Interactive Visual Analytics System

机译:使用zenvisage轻松进行数据探索:富有表现力的交互式视觉分析系统

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Data visualization is by far the most commonly used mechanism to explore and extract insights from datasets, especially by novice data scientists. And yet, current visual analytics tools are rather limited in their ability to operate on collections of visualizations-by composing, filtering, comparing, and sorting them-to find those that depict desired trends or patterns. The process of visual data exploration remains a tedious process of trial-and-error. We propose zenvisage. a visual analytics platform for effortlessly finding desired visual patterns from large datasets. We introduce zenvisage's general purpose visual exploration language, ZQL ("zee-quel") for specifying the desired visual patterns, drawing from use-cases in a variety of domains, including biology, mechanical engineering, climate science, and commerce. We formalize the expressiveness of ZQL via a visual exploration algebra-an algebra on collections of visualizations-and demonstrate that ZQL is as expressive as that algebra, zenvisage exposes an interactive front-end that supports the issuing of ZQL queries, and also supports interactions that are "short-cuts" to certain commonly used ZQL queries. To execute these queries, zenvisage uses a novel ZQL graph-based query optimizer that leverages a suite of optimizations tailored to the goal of processing collections of visualizations in certain pre-defined ways. Lastly, a user survey and study demonstrates that data scientists are able to effectively use zenvisage to eliminate error-prone and tedious exploration and directly identify desired visualizations.
机译:到目前为止,数据可视化是从数据集中探索和提取见解的最常用机制,尤其是对于新手数据科学家而言。但是,当前的可视化分析工具在通过组合,过滤,比较和排序来查找表示所需趋势或模式的可视化工具集合时,在操作可视化工具集合方面的能力受到很大限制。视觉数据探索过程仍然是一个反复试验的乏味过程。我们建议使用zenvisage。一个可视化分析平台,可轻松地从大型数据集中找到所需的可视化模式。我们引入zenvisage的通用视觉探索语言ZQL(“ zee-quel”),用于指定所需的视觉模式,这些语言是从生物学,机械工程,气候科学和商业等多个领域的用例中汲取的。我们通过可视化探索代数-可视化集合上的代数来规范ZQL的表达,并证明ZQL与该代数一样具有表达力,zenvisage公开了支持ZQL查询发布并支持交互的交互前端。是某些常用ZQL查询的“捷径”。为了执行这些查询,zenvisage使用了一种新颖的基于ZQL图的查询优化器,该优化器利用了针对以某些预定义方式处理可视化集合的目标而量身定制的一组优化。最后,一项用户调查和研究表明,数据科学家能够有效地使用zenvisage消除容易出错和繁琐的探索,并直接识别所需的可视化效果。

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