AbstractThis paper addresses the problem of how best to visualize network data grouped into overlapping sets. We address it by evaluating various existing techniques alongside a new technique. Such data arise in many areas, including social network analysis, gene expression data, and crime analysis. We begin by investigating the strengths and weakness of four existing techniques, namely Bubble Sets, EulerView, KelpFusion, and LineSets, using principles from psychology and known layout guides. Using insights gained, we propose a new technique, SetNet, that may overcome limitations of earlier methods. We conducted a comparative crowdsourced user study to evaluate all five techniques based on tasks that require information from both the networ...
This paper presents an empirical evaluation of state-of-the-art visualization techniques that combin...
Networks are often used to model the structure of interactions between parts of a system. One import...
Many applications can be modeled as a graph with additional attributes attached to the nodes. For ex...
This paper addresses the problem of how best to visualize network data grouped into overlapping sets...
This paper addresses the problem of how best to visualize network data grouped into overlapping sets...
Visualizing network data is applicable in domains such as biology, engineering, and social sciences....
Visualizing network data is applicable in domains such as biology, engineering, and social sciences....
Network visualizations have been used for quit long time. Different disciplines use this visualizati...
The world of data has become progressively complex with this explosive growth of the web and social...
Network science has become increasingly popular over the last several years as people have realized ...
We propose a method to visually summarize collections of networks on which a clustering of the verti...
WE PRESENT A NEW TECHNIQUE FOR NETWORK VISUALIZATION AND NETWORK-BASED DATA MINING. STANDARD NETWORK...
Thesis (Ph.D.)--University of Washington, 2016-12Biomedical research increasingly relies on the anal...
Gene expression, signal transduction, protein/chemical interactions, biomedical literature cooccurre...
Large, complex networks are commonly found in many application domains, such as sociology, biology, ...
This paper presents an empirical evaluation of state-of-the-art visualization techniques that combin...
Networks are often used to model the structure of interactions between parts of a system. One import...
Many applications can be modeled as a graph with additional attributes attached to the nodes. For ex...
This paper addresses the problem of how best to visualize network data grouped into overlapping sets...
This paper addresses the problem of how best to visualize network data grouped into overlapping sets...
Visualizing network data is applicable in domains such as biology, engineering, and social sciences....
Visualizing network data is applicable in domains such as biology, engineering, and social sciences....
Network visualizations have been used for quit long time. Different disciplines use this visualizati...
The world of data has become progressively complex with this explosive growth of the web and social...
Network science has become increasingly popular over the last several years as people have realized ...
We propose a method to visually summarize collections of networks on which a clustering of the verti...
WE PRESENT A NEW TECHNIQUE FOR NETWORK VISUALIZATION AND NETWORK-BASED DATA MINING. STANDARD NETWORK...
Thesis (Ph.D.)--University of Washington, 2016-12Biomedical research increasingly relies on the anal...
Gene expression, signal transduction, protein/chemical interactions, biomedical literature cooccurre...
Large, complex networks are commonly found in many application domains, such as sociology, biology, ...
This paper presents an empirical evaluation of state-of-the-art visualization techniques that combin...
Networks are often used to model the structure of interactions between parts of a system. One import...
Many applications can be modeled as a graph with additional attributes attached to the nodes. For ex...