With the increase in community-contributed data availability, citizens and analysts are interested in identifying patterns, trends and correlation within these datasets. Various levels of aggregation are often applied to interpret such large data schemes. Identifying the proper scales of aggregation is a non-trivial task in this exploratory data analysis process. In this paper, we present an integrated visual analytics environment that facilitates the exploration of multivariate categorical spatiotemporal data at multiple spatial scales of aggregation, focusing on citizen-contributed data. We propose a compact visual correlation representation by embedding various statistical measures across different spatial regions to enable users to expl...
As data sources become larger and more complex, the ability to effectively explore and analyze patte...
We introduce a series of geographically weighted (GW) interactive graphics, or geowigs , and use ...
To support analysis and modelling of large amounts of spatio-temporal data having the form of spatia...
Comparing multiple variables to select those that effectively characterize complex entities is impor...
As data sources become larger and more complex, the ability to effectively explore and analyze patte...
Spatial datasets (i.e., location-based social media, crime incident reports, and demographic data) o...
Spatial datasets (i.e., location-based social media, crime incident reports, and demographic data) o...
Abstract-Our research investigates the sensitivities and complexities of visualizing multivariate da...
Comparing multiple variables to select those that effectively characterize complex entities is impor...
The increasing availability of digital data provide both opportunities and challenges to analysts an...
As data sources become larger and more complex, the ability to effectively explore and analyze patte...
The complex nature of social and scientific spatial-temporal multivariate data calls for highly inte...
Georeferenced user-generated datasets like those extracted from Twitter are increasingly gaining the...
The visual analysis of geographically referenced datasets with a large number of attributes is chall...
International audienceWe present Bristle Map, a novel method for the aggregation, abstraction, and s...
As data sources become larger and more complex, the ability to effectively explore and analyze patte...
We introduce a series of geographically weighted (GW) interactive graphics, or geowigs , and use ...
To support analysis and modelling of large amounts of spatio-temporal data having the form of spatia...
Comparing multiple variables to select those that effectively characterize complex entities is impor...
As data sources become larger and more complex, the ability to effectively explore and analyze patte...
Spatial datasets (i.e., location-based social media, crime incident reports, and demographic data) o...
Spatial datasets (i.e., location-based social media, crime incident reports, and demographic data) o...
Abstract-Our research investigates the sensitivities and complexities of visualizing multivariate da...
Comparing multiple variables to select those that effectively characterize complex entities is impor...
The increasing availability of digital data provide both opportunities and challenges to analysts an...
As data sources become larger and more complex, the ability to effectively explore and analyze patte...
The complex nature of social and scientific spatial-temporal multivariate data calls for highly inte...
Georeferenced user-generated datasets like those extracted from Twitter are increasingly gaining the...
The visual analysis of geographically referenced datasets with a large number of attributes is chall...
International audienceWe present Bristle Map, a novel method for the aggregation, abstraction, and s...
As data sources become larger and more complex, the ability to effectively explore and analyze patte...
We introduce a series of geographically weighted (GW) interactive graphics, or geowigs , and use ...
To support analysis and modelling of large amounts of spatio-temporal data having the form of spatia...