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Iterative Visual Analytics and its Applications in Bioinformatics

Indiana University-Purdue University Indianapolis (IUPUI) / You, Qian. Ph.D., Purdue University, December, 2010. Iterative Visual Analytics and its Applications in Bioinformatics. Major Professors: Shiaofen Fang and Luo
Si.
Visual Analytics is a new and developing field that addresses the challenges of
knowledge discoveries from the massive amount of available data. It facilitates
humans‘ reasoning capabilities with interactive visual interfaces for exploratory data analysis tasks, where automatic data mining methods fall short due to the lack of the pre-defined objective functions. Analyzing the large volume of data sets for biological discoveries raises similar challenges. The domain knowledge of biologists and bioinformaticians is critical in the hypothesis-driven discovery tasks. Yet developing visual analytics frameworks for bioinformatic applications is
still in its infancy.
In this dissertation, we propose a general visual analytics framework – Iterative Visual Analytics (IVA) – to address some of the challenges in the current research. The framework consists of three progressive steps to explore data sets with the increased complexity: Terrain Surface Multi-dimensional Data
Visualization, a new multi-dimensional technique that highlights the global
patterns from the profile of a large scale network. It can lead users‘ attention to characteristic regions for discovering otherwise hidden knowledge; Correlative Multi-level Terrain Surface Visualization, a new visual platform that provides the overview and boosts the major signals of the numeric correlations among nodes in interconnected networks of different contexts. It enables users to gain
critical insights and perform data analytical tasks in the context of multiple correlated networks; and the Iterative Visual Refinement Model, an innovative process that treats users‘ perceptions as the objective functions, and guides the users to form the optimal hypothesis by improving the desired visual patterns. It is a formalized model for interactive explorations to converge to optimal solutions.
We also showcase our approach with bio-molecular data sets and demonstrate
its effectiveness in several biomarker discovery applications.

Identiferoai:union.ndltd.org:IUPUI/oai:scholarworks.iupui.edu:1805/2783
Date20 March 2012
CreatorsYou, Qian
ContributorsFang, Shiaofen, Si, Luo, Tuceryan, Mihran, Sacks, Elisha
Source SetsIndiana University-Purdue University Indianapolis
Languageen_US
Detected LanguageEnglish

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