This paper introduces an automatic procedure to assist on the interpretation of a large dataset when a similarity metric is available. We propose a visualization approach based on a graph layout methodology that uses a Quadratic Assignment Problem (QAP) formulation. The methodology is presented using as testbed a time series dataset of the Standard & Poor's 100, one the leading stock market indicators in the United States. A weighted graph is created with the stocks represented by the nodes and the edges' weights are related to the correlation between the stocks' time series. A heuristic for clustering is then proposed; it is based on the graph partition into disconnected subgraphs allowing the identification of clusters of highly-correlate...
Background: The visualization of large volumes of data is a computationally challenging task that of...
We present a new approach for the visual analysis of state transition graphs. We deal with multivari...
Abstract: We [5, 6] have recently investigated several families of clustering algorithms. In this pa...
Abstract. This paper introduces an automatic procedure to assist on the interpretation of a large da...
In this paper, we present a system for the interactive visualization and exploration of graphs with ...
In this paper, we present a system for the interactive visualization and exploration of graphs with ...
Financial markets are a fruitful area for data exploration, but the overwhelming size and dimension ...
This paper applies Multidimensional scaling techniques for visualizing possible time-varying correla...
The core of stock portfolio diversification is to pick stocks from different correlation clusters wh...
Stock investment decisions are often made based on current events of the global economy and the anal...
With this work in progress we propose a visualization system for stock market charts. Insight into s...
We propose a graphical method to visualize possible time-varying correlations between fifteen stock...
Graph visualization plays an increasingly important role in software engineering and information sys...
Analysts need to effectively assess large amounts of data. Often, their focus is on two types of dat...
Analysts need to effectively assess large amounts of data. Often, their focus is on two types of dat...
Background: The visualization of large volumes of data is a computationally challenging task that of...
We present a new approach for the visual analysis of state transition graphs. We deal with multivari...
Abstract: We [5, 6] have recently investigated several families of clustering algorithms. In this pa...
Abstract. This paper introduces an automatic procedure to assist on the interpretation of a large da...
In this paper, we present a system for the interactive visualization and exploration of graphs with ...
In this paper, we present a system for the interactive visualization and exploration of graphs with ...
Financial markets are a fruitful area for data exploration, but the overwhelming size and dimension ...
This paper applies Multidimensional scaling techniques for visualizing possible time-varying correla...
The core of stock portfolio diversification is to pick stocks from different correlation clusters wh...
Stock investment decisions are often made based on current events of the global economy and the anal...
With this work in progress we propose a visualization system for stock market charts. Insight into s...
We propose a graphical method to visualize possible time-varying correlations between fifteen stock...
Graph visualization plays an increasingly important role in software engineering and information sys...
Analysts need to effectively assess large amounts of data. Often, their focus is on two types of dat...
Analysts need to effectively assess large amounts of data. Often, their focus is on two types of dat...
Background: The visualization of large volumes of data is a computationally challenging task that of...
We present a new approach for the visual analysis of state transition graphs. We deal with multivari...
Abstract: We [5, 6] have recently investigated several families of clustering algorithms. In this pa...