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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
41

Expanding the Frontiers of Visual Analytics and Visualization

Dill, J., Earnshaw, Rae A., Kasik, D.J., Vince, J.A., Wong, P.C. January 2012 (has links)
No / This book provides a review of the state of the art in computer graphics, visualization, and visual analytics by researchers and developers who are closely involved in pioneering the latest advances in the field. It is a unique presentation of multi-disciplinary aspects in visualization and visual analytics, architecture and displays, augmented reality, the use of color, user interfaces and cognitive aspects, and technology transfer. It provides readers with insights into the latest developments in areas such as new displays and new display processors, new collaboration technologies, the role of visual, multimedia, and multimodal user interfaces, visual analysis at extreme scale, and adaptive visualization.
42

USING GRAPH MODELING IN SEVERAL VISUAL ANALYTIC TASKS

Huang, Xiaoke 18 July 2016 (has links)
No description available.
43

Visual Representations and Interaction Technologies

Earnshaw, Rae A. January 2005 (has links)
No / This chapter discusses important aspects of visual representations and interaction techniques necessary to support visual analytics. It covers five primary topics. First, it addresses the need for scientific principles for depicting information. Next, it focuses on methods for interacting with visualizations and considers the opportunities available given recent developments in input and display technologies. Third, it addresses the research and technology needed to develop new visual paradigms that support analytical reasoning. Then, it discusses the impact of scale issues on the creation of effective visual representations and interactions. Finally, it considers alternative ways to construct visualization systems more efficiently
44

Bridging Cognitive Gaps Between User and Model in Interactive Dimension Reduction

Wang, Ming 05 May 2020 (has links)
High-dimensional data is prevalent in all domains but is challenging to explore. Analysis and exploration of high-dimensional data are important for people in numerous fields. To help people explore and understand high-dimensional data, Andromeda, an interactive visual analytics tool, has been developed. However, our analysis uncovered several cognitive gaps relating to the Andromeda system: users do not realize the necessity of explicitly highlighting all the relevant data points; users are not clear about the dimensional information in the Andromeda visualization; and the Andromeda model cannot capture user intentions when constructing and deconstructing clusters. In this study, we designed and implemented solutions to address these gaps. Specifically, for the gap in highlighting all the relevant data points, we introduced a foreground and background view and distance lines. Our user study with a group of undergraduate students revealed that the foreground and background views and distance lines could significantly alleviate the highlighting issue. For the gap in understanding visualization dimensions, we implemented a dimension-assist feature. The results of a second user study with students with various backgrounds suggested that the dimension-assist feature could make it easier for users to find the extremum in one dimension and to describe correlations among multiple dimensions; however, the dimension-assist feature had only a small impact on characterizing the data distribution and assisting users in understanding the meanings of the weighted multidimensional scaling (WMDS) plot axes. Regarding the gap in creating and deconstructing clusters, we implemented a solution utilizing random sampling. A quantitative analysis of the random sampling strategy was performed, and the results demonstrated that the strategy improved Andromeda's capabilities in constructing and deconstructing clusters. We also applied the random sampling to two-point manipulations, making the Andromeda system more flexible and adaptable to differing data exploration tasks. Limitations are discussed, and potential future research directions are identified. / Master of Science / High-dimensional data is the dataset with hundreds or thousands of features. The animal dataset, which has been used in this study, is an example of high-dimensional dataset, since animals can be categorized by a lot of features, such as size, furry, behavior and so on. High-dimensional data is prevalent but difficult for people to analyze. For example, it is hard to find out the similarity among dozens of animals, or to find the relationship between different characterizations of animals. To help people with no statistical knowledge to analyze the high-dimensional dataset, our group developed a web-based visualization software called Andromeda, which can display data as points (such as animal data points) on a screen and allow people to interact with these points to express their similarity by dragging points on the screen (e.g., drag "Lion," "Wolf," and "Killer Whale" together because all three are hunters, forming a cluster of three animals). Therefore, it enables people to interactively analyze the hidden pattern of high-dimensional data. However, we identified several cognitive gaps that have negatively limited Andromeda's effectiveness in helping people understand high-dimensional data. Therefore, in this work, we intended to make improvements to the original Andromeda system to bridge these gaps, including designing new visual features to help people better understand how Andromeda processes and interacts with high-dimensional data and improving the underlying algorithm so that the Andromeda system can better understand people's intension during the data exploration process. We extensively evaluated our designs through both qualitative and quantitative analysis (e.g., user study on both undergraduate and graduate students and statistical testing) on our animal dataset, and the results confirmed that the improved Andromeda system outperformed the original version significantly in a series of high-dimensional data understanding tasks. Finally, the limitations and potential future research directions were discussed.
45

Dynamic Behavior Visualizer: A Dynamic Visual Analytics Framework for Understanding Complex Networked Models

Maloo, Akshay 04 February 2014 (has links)
Dynamic Behavior Visualizer (DBV) is a visual analytics environment to visualize the spatial and temporal movements and behavioral changes of an individual or a group, e.g. family within a realistic urban environment. DBV is specifically designed to visualize the adaptive behavioral changes, as they pertain to the interactions with multiple inter-dependent infrastructures, in the aftermath of a large crisis, e.g. hurricane or the detonation of an improvised nuclear device. DBV is web-enabled and thus is easily accessible to any user with access to a web browser. A novel aspect of the system is its scale and fidelity. The goal of DBV is to synthesize information and derive insight from it; detect the expected and discover the unexpected; provide timely and easily understandable assessment and the ability to piece together all this information. / Master of Science
46

Designing and Evaluating Object-Level Interaction to Support Human-Model Communication in Data Analysis

Self, Jessica Zeitz 09 May 2016 (has links)
High-dimensional data appear in all domains and it is challenging to explore. As the number of dimensions in datasets increases, the harder it becomes to discover patterns and develop insights. Data analysis and exploration is an important skill given the amount of data collection in every field of work. However, learning this skill without an understanding of high-dimensional data is challenging. Users naturally tend to characterize data in simplistic one-dimensional terms using metrics such as mean, median, mode. Real-world data is more complex. To gain the most insight from data, users need to recognize and create high-dimensional arguments. Data exploration methods can encourage thinking beyond traditional one-dimensional insights. Dimension reduction algorithms, such as multidimensional scaling, support data explorations by reducing datasets to two dimensions for visualization. Because these algorithms rely on underlying parameterizations, they may be manipulated to assess the data from multiple perspectives. Manipulating can be difficult for users without a strong knowledge of the underlying algorithms. Visual analytics tools that afford object-level interaction (OLI) allow for generation of more complex insights, despite inexperience with multivariate data or the underlying algorithm. The goal of this research is to develop and test variations on types of interactions for interactive visual analytic systems that enable users to tweak model parameters directly or indirectly so that they may explore high-dimensional data. To study interactive data analysis, we present an interface, Andromeda, that enables non-experts of statistical models to explore domain-specific, high-dimensional data. This application implements interactive weighted multidimensional scaling (WMDS) and allows for both parametric and observation-level interaction to provide in-depth data exploration. We performed multiple user studies to answer how parametric and object-level interaction aid in data analysis. With each study, we found usability issues and then designed solutions for the next study. With each critique we uncovered design principles of effective, interactive, visual analytic tools. The final part of this research presents these principles supported by the results of our multiple informal and formal usability studies. The established design principles focus on human-centered usability for developing interactive visual analytic systems that enable users to analyze high-dimensional data through object-level interaction. / Ph. D.
47

Towards Support of Visual Analytics for Synthetic Information

Agashe, Aditya Vidyanand 15 September 2015 (has links)
This thesis describes a scalable system for visualizing and exploring global synthetic populations. The implementation described in this thesis addresses the following existing limitations of the Syn- thetic Information Viewer (SIV): (i) it adds ability to support synthetic populations for the entire globe by resolving data inconsistencies, (ii) introduces opportunities to explore and find patterns in the data, and (iii) allows the addition of new synthetic population centers with minimal effort. We propose the following extensions to the system: (i) Data Registry: an abstraction layer for handling heterogeneity of data across countries, and adding new population centers for visualizations, and (ii) Visual Query Interface: for exploring and analyzing patterns to gain insights. With these additions, our system is capable of visual exploration and querying of heterogeneous, temporal, spatial and social data for 14 countries with a total population of 830 million. Work in this thesis takes a step towards providing visual analytics capability for synthetic information. This system will assist urban planners, public health analysts, and, any individuals interested in socially-coupled systems, by empowering them to make informed decisions through exploration of synthetic information. / Master of Science
48

A Cost-Effective Semi-Automated Approach for Comprehensive Event Extraction

Saraf, Parang 26 April 2018 (has links)
Automated event extraction from free text remains an open problem, particularly when the goal is to identify all relevant events. Manual extraction is currently the only alternative for comprehensive and reliable extraction. Therefore, it is required to have a system that can comprehensively extract events reported in news articles (high recall) and is also scalable enough to handle a large number of articles. In this dissertation, we explore various methods to develop an event extraction system that can mitigate these challenges. We primarily investigate three major problems related to event extraction as follows. (i) What are the strengths and weaknesses of the automated event extractors? A thorough understanding of what can be automated with high success and what leads to common pitfalls is crucial before we could develop a superior event extraction system. (ii) How can we build a hybrid event extraction system that can bridge the gap between manual and automated event extraction? Hybrid extraction is a semi-automated approach that uses an ecosystem of machine learning models along with a carefully designed user interface for extracting events. Since this method is semi-automated it also requires a meticulous understanding of user behavior in order to identify tasks that humans can perform with ease while diverting the more tedious task to the machine learning methods (iii) Finally, we explore methods for displaying extracted events that could simplify the analytical and inference generation processes for an analyst. We particularly aim to develop visualizations that would allow analysts can perform macro and micro level analysis of significant societal events. / Ph. D.
49

Algorithmes automatiques pour la fouille visuelle de données et la visualisation de règles d’association : application aux données aéronautiques / Automatic algorithms for visual data mining and association rules visualization : application to aeronautical data

Bothorel, Gwenael 18 November 2014 (has links)
Depuis quelques années, nous assistons à une véritable explosion de la production de données dans de nombreux domaines, comme les réseaux sociaux ou le commerce en ligne. Ce phénomène récent est renforcé par la généralisation des périphériques connectés, dont l'utilisation est devenue aujourd'hui quasi-permanente. Le domaine aéronautique n'échappe pas à cette tendance. En effet, le besoin croissant de données, dicté par l'évolution des systèmes de gestion du trafic aérien et par les événements, donne lieu à une prise de conscience sur leur importance et sur une nouvelle manière de les appréhender, qu'il s'agisse de stockage, de mise à disposition et de valorisation. Les capacités d'hébergement ont été adaptées, et ne constituent pas une difficulté majeure. Celle-ci réside plutôt dans le traitement de l'information et dans l'extraction de connaissances. Dans le cadre du Visual Analytics, discipline émergente née des conséquences des attentats de 2001, cette extraction combine des approches algorithmiques et visuelles, afin de bénéficier simultanément de la flexibilité, de la créativité et de la connaissance humaine, et des capacités de calculs des systèmes informatiques. Ce travail de thèse a porté sur la réalisation de cette combinaison, en laissant à l'homme une position centrale et décisionnelle. D'une part, l'exploration visuelle des données, par l'utilisateur, pilote la génération des règles d'association, qui établissent des relations entre elles. D'autre part, ces règles sont exploitées en configurant automatiquement la visualisation des données concernées par celles-ci, afin de les mettre en valeur. Pour cela, ce processus bidirectionnel entre les données et les règles a été formalisé, puis illustré, à l'aide d'enregistrements de trafic aérien récent, sur la plate-forme Videam que nous avons développée. Celle-ci intègre, dans un environnement modulaire et évolutif, plusieurs briques IHM et algorithmiques, permettant l'exploration interactive des données et des règles d'association, tout en laissant à l'utilisateur la maîtrise globale du processus, notamment en paramétrant et en pilotant les algorithmes. / In the past few years, we have seen a large scale data production in many areas, such as social networks and e-business. This recent phenomenon is enhanced by the widespread use of devices, which are permanently connected. The aeronautical field is also involved in this trend. Indeed, its growing need for data, which is driven by air trafic management systems evolution and by events, leads to a widescale focus on its key role and on new ways to manage it. It deals with storage, availability and exploitation. Data hosting capacity, that has been adapted, is not a major challenge. The issue is now in data processing and knowledge extraction from it. Visual Analytics is an emerging field, stemming from the September 2001 events. It combines automatic and visual approaches, in order to benefit simultaneously from human flexibility, creativity and knowledge, and also from processing capacities of computers. This PhD thesis has focused on this combination, by giving to the operator a centered and decisionmaking role. On the one hand, the visual data exploration drives association rules extraction. They correspond to links between the data. On the other hand, these rules are exploited by automatically con_gurating the visualization of the concerned data, in order to highlight it. To achieve this, a bidirectional process has been formalized, between data and rules. It has been illustrated by air trafic recordings, thanks to the Videam platform, that we have developed. By integrating several HMI and algorithmic applications in a modular and upgradeable environment, it allows interactive exploration of both data and association rules. This is done by giving to human the mastering of the global process, especially by setting and driving algorithms.
50

LEVIA’18: Leipzig Symposium on Visualization in Applications 2018

Jänicke, Stefan, Hotz, Ingrid, Liu, Shixia 25 January 2019 (has links)
No description available.

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