The problem of visualizing huge amounts of data is well known in Infor- mation Visualization. Dealing with a large number of items forces almost any kind of Infovis technique to reveal its limits in terms of expressivity and scalability. In this paper we focus on 2D scatter plots, proposing a "feature preservation" approach, based on the idea of modeling the visu- alization in a virtual space in order to analyze its features (e.g, absolute density, relative density, etc.). In this way we provide a formal framework to measure the visual overlapping, obtaining precise quality metrics about the visualization degradation and devising automatic sampling strategies able to improve the overall image quality. Metrics and algorithms have been improv...
Projecfing multidimensional data to a lower-dimensional visual displayas a scatter-plot-llke visuali...
The result of a visualization process depends on the user’s decisions along it. With the intention o...
Extracting meaningful information out of vast amounts of high-dimensional data is very difficult. Pr...
Dealing with visualizations containing large data set is a challenging issue and, in the field of In...
One of the main visual analytics characteristics is the tight integration between automatic computat...
Density differences are one of the main features users perceive in 2D scatter plots. However, becaus...
Density differences are one of the main features users perceive in 2D scatter plots. However, becaus...
Clutter affects almost any kind of visual technique and can obscure the structure present in the dat...
In this paper we present a novel, hybrid, and automatic strategy whose goal is to reduce the 2D scat...
Scatter plots are one of the most powerful and most widely used techniques for visual data explorati...
Abstract—We introduce Splatterplots, a novel presentation of scattered data that enables visualizati...
Information visualisation systems often have to cope with presenting large amounts of data. In this ...
Within our physical world lies a digital world populated with an ever increasing number of sizeable ...
We live in a big data and data analytics era. The volume, velocity, and variety of data generated to...
Density maps allow for visually rendering density differences, usually mapping density values to a g...
Projecfing multidimensional data to a lower-dimensional visual displayas a scatter-plot-llke visuali...
The result of a visualization process depends on the user’s decisions along it. With the intention o...
Extracting meaningful information out of vast amounts of high-dimensional data is very difficult. Pr...
Dealing with visualizations containing large data set is a challenging issue and, in the field of In...
One of the main visual analytics characteristics is the tight integration between automatic computat...
Density differences are one of the main features users perceive in 2D scatter plots. However, becaus...
Density differences are one of the main features users perceive in 2D scatter plots. However, becaus...
Clutter affects almost any kind of visual technique and can obscure the structure present in the dat...
In this paper we present a novel, hybrid, and automatic strategy whose goal is to reduce the 2D scat...
Scatter plots are one of the most powerful and most widely used techniques for visual data explorati...
Abstract—We introduce Splatterplots, a novel presentation of scattered data that enables visualizati...
Information visualisation systems often have to cope with presenting large amounts of data. In this ...
Within our physical world lies a digital world populated with an ever increasing number of sizeable ...
We live in a big data and data analytics era. The volume, velocity, and variety of data generated to...
Density maps allow for visually rendering density differences, usually mapping density values to a g...
Projecfing multidimensional data to a lower-dimensional visual displayas a scatter-plot-llke visuali...
The result of a visualization process depends on the user’s decisions along it. With the intention o...
Extracting meaningful information out of vast amounts of high-dimensional data is very difficult. Pr...