Scholarly Collaboration On The Academic Social Web He, Daqing / Jeng, Wei Morgan & Claypool Publishers |
Database Anonymization: Privacy Models, Data Utility, And Microaggregation-Based Domingo-Ferrer, Josep / Sánchez, David / Soria-Comas, Jordi Morgan & Claypool Publishers |
Dynamic Information Retrieval Modeling Hui Yang, Grace / Sloan, Marc / Wang, Jun Morgan & Claypool Publishers |
Learning From Multiple Social Networks Nie, Liqiang / Song, Xuemeng / Chua, Tat-Seng Morgan & Claypool Publishers |
Trustworthy Policies For Distributed Repositories W. Moore, Reagan / Xu, Hao / Conway, Mike / Rajasekar, Arcot Morgan & Claypool Publishers |
Notion Of Relevance In Information Science, The: Eveybody Knows What Relevance I Saracevic, Tefko Morgan & Claypool Publishers |
Implementing And Assessing Use-Driven Acquiitions: A Practical Guide For Librari Carrico, Steven / Leonard, Michelle / Gallagher, Erin Rowman & Littlefield Publisher Inc |
Título: Semantic Interaction For Visual Analytics: Inferring Analytical Reasoning For Mo | ||
Autor: Endert, Alex | Precio: $1000.00 | |
Editorial: Morgan & Claypool Publishers | Año: 2016 | |
Tema: Informacion | Edición: 1ª | |
Sinopsis | ISBN: 9781627054713 | |
This book discusses semantic interaction, a user interaction methodology for visual analytic applications that more closely couples the visual reasoning processes of people with the computation. This methodology affords user interaction on visual data representations that are native to the domain of the data. User interaction in visual analytics systems is critical to enabling visual data exploration. Interaction transforms people from mere viewers to active participants in the process of analyzing and understanding data. This discourse between people and data enables people to understand aspects of their data, such as structure, patterns, trends, outliers, and other properties that ultimately result in insight. Through interacting with visualizations, users engage in sensemaking, a process of developing and understanding relationships within datasets through foraging and synthesis. The book provides a description of the principles of semantic interaction, providing design guidelines for the integration of semantic interaction into visual analytics, examples of existing technologies that leverage semantic interaction, and a discussion of how to evaluate these technologies. Semantic interaction has the potential to increase the effectiveness of visual analytic technologies and opens possibilities for a fundamentally new design space for user interaction in visual analytics systems |