@inproceedings{liu2014topicpanorama, author = {Liu, Shixia and Wang, Xiting and Liu, Junlin and Chen, Jianfei and Zhu, Jun and Guo, Baining}, title = {TopicPanorama: a Full Picture of Relevant Topics}, booktitle = {IEEE Conference on Visual Analytics Science and Technology (IEEE VAST)}, year = {2014}, month = {October}, abstract = {This paper presents a visual analytics approach to analyzing a full picture of relevant topics discussed in multiple sources, such as news, blogs, or micro-blogs. The full picture consists of a number of common topics covered by multiple sources, as well as distinctive topics from each source. Our approach models each textual corpus as a topic graph. These graphs are then matched using a consistent graph matching method. Next, we develop a level-of-detail (LOD) visualization that balances both readability and stability. Accordingly, the resulting visualization enhances the ability of users to understand and analyze the matched graph from multiple perspectives. By incorporating metric learning and feature selection into the graph matching algorithm, we allow users to interactively modify the graph matching result based on their information needs. We have applied our approach to various types of data, including news articles, tweets, and blog data. Quantitative evaluation and real-world case studies demonstrate the promise of our approach, especially in support of examining a topic-graph-based full picture at different levels of detail.}, publisher = {IEEE}, url = {http://approjects.co.za/?big=en-us/research/publication/topicpanorama-a-full-picture-of-relevant-topics/}, }