| Literature DB >> 18974802 |
Antoine Naud1, Shiro Usui, Naonori Ueda, Tatsuki Taniguchi.
Abstract
A new interactive visualization tool is proposed for mining text data from various fields of neuroscience. Applications to several text datasets are presented to demonstrate the capability of the proposed interactive tool to visualize complex relationships between pairs of lexical entities (with some semantic contents) such as terms, keywords, posters, or papers' abstracts. Implemented as a Java applet, this tool is based on the spherical embedding (SE) algorithm, which was designed for the visualization of bipartite graphs. Items such as words and documents are linked on the basis of occurrence relationships, which can be represented in a bipartite graph. These items are visualized by embedding the vertices of the bipartite graph on spheres in a three-dimensional (3-D) space. The main advantage of the proposed visualization tool is that 3-D layouts can convey more information than planar or linear displays of items or graphs. Different kinds of information extracted from texts, such as keywords, indexing terms, or topics are visualized, allowing interactive browsing of various fields of research featured by keywords, topics, or research teams. A typical use of the 3D-SE viewer is quick browsing of topics displayed on a sphere, then selecting one or several item(s) displays links to related terms on another sphere representing, e.g., documents or abstracts, and provides direct online access to the document source in a database, such as the Visiome Platform or the SfN Annual Meeting. Developed as a Java applet, it operates as a tool on top of existing resources.Entities:
Keywords: 3D-SE viewer; bipartite graph; data visualization; keyword extraction; neuroinformatics; text mining
Year: 2007 PMID: 18974802 PMCID: PMC2525997 DOI: 10.3389/neuro.11.007.2007
Source DB: PubMed Journal: Front Neuroinform ISSN: 1662-5196 Impact factor: 4.081
Figure 1Visualization process: from the binary .
Basic figures of the three datasets used in the application of the 3D-SE viewer.
| 3D-SE viewer bipartite graph | Inner sphere | | Outer sphere | | Origin of links | | Sparseness ratio (%) |
|---|---|---|---|---|
| BSI-Team Map | Teams 53 | Keywords 175 | Answers to a questionnaire 2823 | 69.56 |
| Visiome Platform keywords | Indexing keywords 432 | Contents 3002 | By authors of contents 9946 | 99.23 |
| SfN'06 poster sessions | Sessions 650 | Terms 2164 | Occurrences (20/session) 13 000 | 99.08 |
Figure 2BSI-Team Map: 3D-SE viewer-based visualization of RIKEN BSI research teams. The nodes are colored according to the five team units listed in the left panel. It can be seen that nodes with the same color appear in the neighboring regions on the outer sphere.
Figure 3Visualization of Visiome Platform index keywords and contents. The searched term retina found in the index keywords list is selected, showing simultaneously all the links to related contents.
Figure 4Society for Neuroscience 2006 Annual Meeting: a view of 650 poster sessions (outer sphere) and 2164 extracted terms (inner sphere). The nodes on the outer sphere are colored according to the session's dominant theme. It can be seen that the nodes form some clusters according to their theme.