Large, complex networks are commonly found in many application domains, such as sociology, biology, and software engineering. Analyzing such networks can be a non-trivial task, as it often takes many interactions to derive a finding. It is thus beneficial to capture and summarize the important steps in an analysis. This provenance would then effectively support recalling, reusing, reproducing, and sharing the analysis process and results. However, the provenance of analyzing a large, complex network would often be a long interaction record. To automatically compose a concise visual summarization of network analysis provenance, we introduce a ranking model together with a reduction algorithm. The model identifies and orders important interac...
As digital objects become increasingly important in people's lives, people may need to understand th...
Temporal networks are widely used to map phenomena into complex systems in several research discipli...
Abstract—Visualization facilitates the understanding of sci-entific data both through exploration an...
Abstract—Visualization facilitates the understanding of sci-entific data both through exploration an...
Network analysis is an important task in a wide variety of application domains including analysis of...
This paper presents a new interactive platform for visual analytics of large networks and graphs. Th...
Abstract. This paper presents a new interactive platform for visual analytics of large networks and ...
Network visualization deals with all aspects of representing relational structures. The automatic ge...
Visual discovery of network patterns of interaction between attributes in a data set identifies emer...
There is fast-growing literature on provenance-related research, covering aspects such as its theore...
Contagion is a process whereby the collapse of a node in a network leads to the collapse of neighbor...
This paper addresses the problem of how best to visualize network data grouped into overlapping sets...
Contagion is a process whereby the collapse of a node in a network leads to the collapse of neighbor...
We propose a visual representation of bibliographic data based on shared references. Our method empl...
Network science has become increasingly popular over the last several years as people have realized ...
As digital objects become increasingly important in people's lives, people may need to understand th...
Temporal networks are widely used to map phenomena into complex systems in several research discipli...
Abstract—Visualization facilitates the understanding of sci-entific data both through exploration an...
Abstract—Visualization facilitates the understanding of sci-entific data both through exploration an...
Network analysis is an important task in a wide variety of application domains including analysis of...
This paper presents a new interactive platform for visual analytics of large networks and graphs. Th...
Abstract. This paper presents a new interactive platform for visual analytics of large networks and ...
Network visualization deals with all aspects of representing relational structures. The automatic ge...
Visual discovery of network patterns of interaction between attributes in a data set identifies emer...
There is fast-growing literature on provenance-related research, covering aspects such as its theore...
Contagion is a process whereby the collapse of a node in a network leads to the collapse of neighbor...
This paper addresses the problem of how best to visualize network data grouped into overlapping sets...
Contagion is a process whereby the collapse of a node in a network leads to the collapse of neighbor...
We propose a visual representation of bibliographic data based on shared references. Our method empl...
Network science has become increasingly popular over the last several years as people have realized ...
As digital objects become increasingly important in people's lives, people may need to understand th...
Temporal networks are widely used to map phenomena into complex systems in several research discipli...
Abstract—Visualization facilitates the understanding of sci-entific data both through exploration an...