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Featured researches published by Charles D. Stolper.


IEEE Transactions on Visualization and Computer Graphics | 2014

Progressive Visual Analytics: User-Driven Visual Exploration of In-Progress Analytics

Charles D. Stolper; Adam Perer; David Gotz

As datasets grow and analytic algorithms become more complex, the typical workflow of analysts launching an analytic, waiting for it to complete, inspecting the results, and then re-Iaunching the computation with adjusted parameters is not realistic for many real-world tasks. This paper presents an alternative workflow, progressive visual analytics, which enables an analyst to inspect partial results of an algorithm as they become available and interact with the algorithm to prioritize subspaces of interest. Progressive visual analytics depends on adapting analytical algorithms to produce meaningful partial results and enable analyst intervention without sacrificing computational speed. The paradigm also depends on adapting information visualization techniques to incorporate the constantly refining results without overwhelming analysts and provide interactions to support an analyst directing the analytic. The contributions of this paper include: a description of the progressive visual analytics paradigm; design goals for both the algorithms and visualizations in progressive visual analytics systems; an example progressive visual analytics system (Progressive Insights) for analyzing common patterns in a collection of event sequences; and an evaluation of Progressive Insights and the progressive visual analytics paradigm by clinical researchers analyzing electronic medical records.


IEEE Transactions on Visualization and Computer Graphics | 2012

SnapShot: Visualization to Propel Ice Hockey Analytics

Pileggi H; Charles D. Stolper; Boyle Jm; John T. Stasko

Sports analysts live in a world of dynamic games flattened into tables of numbers, divorced from the rinks, pitches, and courts where they were generated. Currently, these professional analysts use R, Stata, SAS, and other statistical software packages for uncovering insights from game data. Quantitative sports consultants seek a competitive advantage both for their clients and for themselves as analytics becomes increasingly valued by teams, clubs, and squads. In order for the information visualization community to support the members of this blossoming industry, it must recognize where and how visualization can enhance the existing analytical workflow. In this paper, we identify three primary stages of todays sports analysts routine where visualization can be beneficially integrated: 1) exploring a dataspace; 2) sharing hypotheses with internal colleagues; and 3) communicating findings to stakeholders.Working closely with professional ice hockey analysts, we designed and built SnapShot, a system to integrate visualization into the hockey intelligence gathering process. SnapShot employs a variety of information visualization techniques to display shot data, yet given the importance of a specific hockey statistic, shot length, we introduce a technique, the radial heat map. Through a user study, we received encouraging feedback from several professional analysts, both independent consultants and professional team personnel.


IEEE Transactions on Visualization and Computer Graphics | 2014

GLO-STIX: Graph-Level Operations for Specifying Techniques and Interactive eXploration

Charles D. Stolper; Minsuk Kahng; Zhiyuan Lin; Florian Foerster; Aakash Goel; John T. Stasko; Duen Horng Chau

The field of graph visualization has produced a wealth of visualization techniques for accomplishing a variety of analysis tasks. Therefore analysts often rely on a suite of different techniques, and visual graph analysis application builders strive to provide this breadth of techniques. To provide a holistic model for specifying network visualization techniques (as opposed to considering each technique in isolation) we present the Graph-Level Operations (GLO) model. We describe a method for identifying GLOs and apply it to identify five classes of GLOs, which can be flexibly combined to re-create six canonical graph visualization techniques. We discuss advantages of the GLO model, including potentially discovering new, effective network visualization techniques and easing the engineering challenges of building multi-technique graph visualization applications. Finally, we implement the GLOs that we identified into the GLO-STIX prototype system that enables an analyst to interactively explore a graph by applying GLOs.


IEEE Transactions on Visualization and Computer Graphics | 2017

Vispubdata.org: A Metadata Collection About IEEE Visualization (VIS) Publications

Petra Isenberg; Florian Heimerl; Steffen Koch; Tobias Isenberg; Panpan Xu; Charles D. Stolper; Michael Sedlmair; Jian Chen; Torsten Möller; John T. Stasko

We have created and made available to all a dataset with information about every paper that has appeared at the IEEE Visualization (VIS) set of conferences: InfoVis, SciVis, VAST, and Vis. The information about each paper includes its title, abstract, authors, and citations to other papers in the conference series, among many other attributes. This article describes the motivation for creating the dataset, as well as our process of coalescing and cleaning the data, and a set of three visualizations we created to facilitate exploration of the data. This data is meant to be useful to the broad data visualization community to help understand the evolution of the field and as an example document collection for text data visualization research.


visual analytics science and technology | 2014

VisIRR: Visual analytics for information retrieval and recommendation with large-scale document data

Jaegul Choo; Changhyun Lee; Hannah Kim; Hanseung Lee; Zhicheng Liu; Ramakrishnan Kannan; Charles D. Stolper; John T. Stasko; Barry L. Drake; Haesun Park

We present VisIRR, an interactive visual information retrieval and recommendation system for large-scale document data. Starting with a query, VisIRR visualizes the retrieved documents in a scatter plot along with their topic summary. Next, based on interactive personalized preference feedback on the documents, VisIRR collects and visualizes potentially relevant documents out of the entire corpus so that an integrated analysis of both retrieved and recommended documents can be performed seamlessly.


human factors in computing systems | 2014

GLOs: graph-level operations for exploratory network visualization

Charles D. Stolper; Florian Foerster; Minsuk Kahng; Zhiyuan Lin; Aakash Goel; John T. Stasko; Duen Horng Chau

There is a wealth of visualization techniques available for graph and network visualization. However, each of these techniques was designed for a specific task. Many graph visualization techniques and the transitions between them can be specified using a set of operations on the visualization elements such as positioning or resizing nodes, showing or hiding edges, or showing or hiding axes. We term these operations Graph-Level Operations or GLOs. Our goal is to identify and provide a comprehensive set of these operations in order to better support the broadest range of graph and network analysis tasks. Here we present early results of our work, including a preliminary set of operations and an example application of GLOs in transitioning between familiar graph visualization techniques. \


Computer Graphics Forum | 2018

State of the Art of Sports Data Visualization

Charles Perin; Romain Vuillemot; Charles D. Stolper; John T. Stasko; Jo Wood; Sheelagh Carpendale

In this report, we organize and reflect on recent advances and challenges in the field of sports data visualization. The exponentially‐growing body of visualization research based on sports data is a prime indication of the importance and timeliness of this report. Sports data visualization research encompasses the breadth of visualization tasks and goals: exploring the design of new visualization techniques; adapting existing visualizations to a novel domain; and conducting design studies and evaluations in close collaboration with experts, including practitioners, enthusiasts, and journalists. Frequently this research has impact beyond sports in both academia and in industry because it is i) grounded in realistic, highly heterogeneous data, ii) applied to real‐world problems, and iii) designed in close collaboration with domain experts. In this report, we analyze current research contributions through the lens of three categories of sports data: box score data (data containing statistical summaries of a sport event such as a game), tracking data (data about in‐game actions and trajectories), and meta‐data (data about the sport and its participants but not necessarily a given game). We conclude this report with a high‐level discussion of sports visualization research informed by our analysis—identifying critical research gaps and valuable opportunities for the visualization community. More information is available at the STARs website: https://sportsdataviz.github.io/.


ACM Transactions on Knowledge Discovery From Data | 2018

VisIRR: A Visual Analytics System for Information Retrieval and Recommendation for Large-Scale Document Data

Jaegul Choo; Hannah Kim; Edward Clarkson; Zhicheng Liu; Changhyun Lee; Fuxin Li; Hanseung Lee; Ramakrishnan Kannan; Charles D. Stolper; John T. Stasko; Haesun Park

In this article, we present an interactive visual information retrieval and recommendation system, called VisIRR, for large-scale document discovery. VisIRR effectively combines the paradigms of (1) a passive pull through query processes for retrieval and (2) an active push that recommends items of potential interest to users based on their preferences. Equipped with an efficient dynamic query interface against a large-scale corpus, VisIRR organizes the retrieved documents into high-level topics and visualizes them in a 2D space, representing the relationships among the topics along with their keyword summary. In addition, based on interactive personalized preference feedback with regard to documents, VisIRR provides document recommendations from the entire corpus, which are beyond the retrieved sets. Such recommended documents are visualized in the same space as the retrieved documents, so that users can seamlessly analyze both existing and newly recommended ones. This article presents novel computational methods, which make these integrated representations and fast interactions possible for a large-scale document corpus. We illustrate how the system works by providing detailed usage scenarios. Additionally, we present preliminary user study results for evaluating the effectiveness of the system.


Archive | 2016

Emerging and Recurring Data-Driven Storytelling Techniques: Analysis of a Curated Collection of Recent Stories

Charles D. Stolper; Bongshin Lee; Nathalie Henry Riche; John T. Stasko


Archive | 2013

VisIRR: Interactive Visual Information Retrieval and Recommendation for Large-scale Document Data

Jaegul Choo; Changhyun Lee; Edward Clarkson; Zhicheng Liu; Hanseung Lee; Duen Horng Chau; Fuxin Li; Ramakrishnan Kannan; Charles D. Stolper; David Inouye; Nishant A. Mehta; Hua Ouyang; Subhojit Som; Alexander G. Gray; John T. Stasko; Haesun Park

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John T. Stasko

Georgia Institute of Technology

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Changhyun Lee

Georgia Institute of Technology

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Duen Horng Chau

Georgia Institute of Technology

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Hanseung Lee

Georgia Institute of Technology

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Ramakrishnan Kannan

Oak Ridge National Laboratory

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Aakash Goel

Georgia Institute of Technology

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Edward Clarkson

Georgia Institute of Technology

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Florian Foerster

Georgia Institute of Technology

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Fuxin Li

Georgia Institute of Technology

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