Abstract
The visual exploration of large and complex network structures remains a challenge for many application fields. Moreover, a growing number of real-world networks is multivariate and often interconnected with each other. Entities in a network may have relationships with elements of other related datasets, which do not necessarily have to be networks themselves, and these relationships may be defined by attributes that can vary greatly. In this work, we propose a comprehensive visual analytics approach that supports researchers to specify and subsequently explore attribute-based relationships across networks, text documents and derived secondary data. Our approach provides an individual search functionality based on keywords and semantically similar terms over the entire text corpus to find related network nodes. For examining these nodes in the interconnected network views, we introduce a new interaction technique, called Hub2Go, which facilitates the navigation by guiding the user to the information of interest. To showcase our system, we use a large text corpus collected from research papers listed in the visualization publication dataset that consists of 2752 documents over a period of 25 years. Here, we analyze relationships between various heterogeneous networks, a bag-of-words index and a word similarity matrix, all derived from the initial corpus and metadata.
Originalsprache | Englisch |
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Aufsatznummer | 11 |
Seitenumfang | 20 |
Fachzeitschrift | Informatics |
Jahrgang | 4 |
Ausgabenummer | 2 |
DOIs | |
Publikationsstatus | Veröffentlicht - Juni 2017 |
Schlagwörter
- heterogeneous networks
- interaction
- graph drawing
- multivariate datasets
- NLP
- text analysis
- visualization
- visual analytics