Title
Visual human+machine learning.
Abstract
In this paper we describe a novel method to integrate interactive visual analysis and machine learning to support the insight generation of the user. The suggested approach combines the vast search and processing power of the computer with the superior reasoning and pattern recognition capabilities of the human user. An evolutionary search algorithm has been adapted to assist in the fuzzy logic formalization of hypotheses that aim at explaining features inside multivariate, volumetric data. Up to now, users solely rely on their knowledge and expertise when looking for explanatory theories. However, it often remains unclear whether the selected attribute ranges represent the real explanation for the feature of interest. Other selections hidden in the large number of data variables could potentially lead to similar features. Moreover, as simulation complexity grows, users are confronted with huge multidimensional data sets making it almost impossible to find meaningful hypotheses at all. We propose an interactive cycle of knowledge-based analysis and automatic hypothesis generation. Starting from initial hypotheses, created with linking and brushing, the user steers a heuristic search algorithm to look for alternative or related hypotheses. The results are analyzed in information visualization views that are linked to the volume rendering. Individual properties as well as global aggregates are visually presented to provide insight into the most relevant aspects of the generated hypotheses. This novel approach becomes computationally feasible due to a GPU implementation of the time-critical parts in the algorithm. A thorough evaluation of search times and noise sensitivity as well as a case study on data from the automotive domain substantiate the usefulness of the suggested approach.
Year
DOI
Venue
2009
10.1109/TVCG.2009.199
IEEE Transactions on Visualization and Computer Graphics
Keywords
DocType
Volume
volumetric data,huge multidimensional data,heuristic search algorithm,data variable,human user,search time,evolutionary search algorithm,visual human,machine learning,vast search,novel approach,suggested approach,heuristic search,knowledge base,information visualization,volume rendering,pattern recognition,interactive visualization,search algorithm,fuzzy logic
Journal
15
Issue
ISSN
Citations 
6
1077-2626
8
PageRank 
References 
Authors
0.53
20
3
Name
Order
Citations
PageRank
Raphael Fuchs120210.73
Jürgen Waser2425.63
Meister Eduard Gröller327313.36