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0:03:02
GeoLinter: A linting framework for choropleth maps
0:06:40
MolSieve: A Progressive Visual Analytics System for Molecular Dynamics Simulations
0:05:23
GeoExplainer A Visual Analytics Framework for Spatial Modeling Contextualization & Report Generation
0:13:33
FairRankVis: A Visual Analytics Framework for Exploring Algorithmic Fairness in Graph Mining Models
0:11:49
IEEE VIS CGA 2021 'Exploring the Design Space of Sankey Diagrams for the Food-Energy-Water Nexus'
0:04:44
A Visual Analytics Framework for Conservation Planning Optimization
0:02:48
Transactions on GiS Presentation 'Exploring Geographic Hotspots Using Topological Data Analysis'
0:05:56
FairRankVis: A Visual Analytics Framework for Exploring Algorithmic Fairness in Graph Mining Models
0:48:07
ACM SIGSPATIAL 2020 Keynote 'Exploring Spatial Phenomenon with Geovisual Analytics'
0:11:26
IEEE VIS 2020 Presentation 'Localized Topological Simplification of Scalar Data'
0:16:17
IEEE LDAV 2020 “Cinema Darkroom: A Deferred Rendering Framework for Large-Scale Datasets”
0:11:21
IEEE VIS 2020 Presentation 'Visual Analysis of Class Separations with Locally Linear Segments'
0:12:55
IEEE VIS 2020 Presentation 'Auditing the Sensitivity of Graph-based Ranking with Visual Analytics'
0:12:13
VIS 2020 'A Visual Analytics Framework for Explaining and Diagnosing Transfer Learning Processes'
0:43:03
Visualization, Artificial Intelligence and Decision Making
0:44:20
ISVC 2020 Keynote: Having Fun in the Data Deluge
0:06:26
Auditing the Sensitivity of Graph-based Ranking with Visual Analytics
0:07:26
Visual Analysis of Class Separations with Locally Linear Segments
0:05:26
A Visual Analytics Framework for Explaining and Diagnosing Transfer Learning Processes
0:15:43
An introduction to the VADER lab
0:00:44
A Visual Analytics System for Oil Spill Response and Recovery
0:13:09
Dynamic Nested Tracking Graphs
0:04:59
Explaining Vulnerabilities to Adversarial Machine Learning through Visual Analytics
0:07:53
Exploring the Sensitivity of Choropleths under Attribute Uncertainty
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