This project studies and implements the clustering methods introduced by Fenn et al. to detect correlations in the foreign exchange market. To deal with the potentially non linear nature of currency time series dependance, we propose two alternative similarity metrics to use instead of the Pearson linear correlation. We observe how each of them responds over several years of currency exchange data and find significant differences in the resulting clusters
Many systems studied in the biological, physical, and social sciences are composed of multiple inter...
This paper analyzes correlations in patterns of trading of different members of the London Stock Exc...
We decompose the exchange rates returns of 41 currencies (incl. gold) into their sign and amplitude ...
This project studies and implements the clustering methods introduced by Fenn et al. to detect corre...
This paper proposes an improvement to the method for clustering exchange rates given by D. J. Fenn e...
We use techniques from network science to study correlations in the foreign exchange (FX) market dur...
We use techniques from network science to study correlations in the foreign exchange (FX) market ove...
The forex market is a complex, evolving, and a non-linear dynamical system, and its forecast is diff...
The forex market is a complex, evolving, and a non-linear dynamical system, and its forecast is diff...
Cluster analysis is used to identify dissimilar subgroups of objects out of a set of objects based o...
By analyzing the foreign exchange market data of various currencies, we derive a hierarchical taxono...
Based on a time-varying copula approach and the minimum spanning tree (MST) method, we propose a tim...
This paper analyses a correlation network of world currency exchange rate. We examine the network to...
We study the cluster dynamics of multichannel (multivariate) time series by representing their corre...
A currency exchange rate is the price of one country's currency in terms of another country's curren...
Many systems studied in the biological, physical, and social sciences are composed of multiple inter...
This paper analyzes correlations in patterns of trading of different members of the London Stock Exc...
We decompose the exchange rates returns of 41 currencies (incl. gold) into their sign and amplitude ...
This project studies and implements the clustering methods introduced by Fenn et al. to detect corre...
This paper proposes an improvement to the method for clustering exchange rates given by D. J. Fenn e...
We use techniques from network science to study correlations in the foreign exchange (FX) market dur...
We use techniques from network science to study correlations in the foreign exchange (FX) market ove...
The forex market is a complex, evolving, and a non-linear dynamical system, and its forecast is diff...
The forex market is a complex, evolving, and a non-linear dynamical system, and its forecast is diff...
Cluster analysis is used to identify dissimilar subgroups of objects out of a set of objects based o...
By analyzing the foreign exchange market data of various currencies, we derive a hierarchical taxono...
Based on a time-varying copula approach and the minimum spanning tree (MST) method, we propose a tim...
This paper analyses a correlation network of world currency exchange rate. We examine the network to...
We study the cluster dynamics of multichannel (multivariate) time series by representing their corre...
A currency exchange rate is the price of one country's currency in terms of another country's curren...
Many systems studied in the biological, physical, and social sciences are composed of multiple inter...
This paper analyzes correlations in patterns of trading of different members of the London Stock Exc...
We decompose the exchange rates returns of 41 currencies (incl. gold) into their sign and amplitude ...