AbstractIn this article I present a dynamic clustering algorithm applied on financial time series data. The algorithm is inspired from the Gustafson-Kessel (GK) Clustering method in the sense that it identifies clusters of time series in the form of hyper-ellipsoids. The novelty of the algorithm resides in the dynamic search for clusters, depending on the analyzed data, without prior specification of a possible number of clusters. Also, there is no specification of a fixed distance from the cluster centers for points that do not belong to any cluster (noise points). The algorithm was applied to daily stock return data with the scope of establishing how well this technique would identify systemic events in the market that cannot usually be o...
The current ability to produce massive amounts of data and the impossibility in storing it motivated...
International audienceNowadays, a huge amount of applications exist that natively adopt a data-strea...
Time-series prediction has been a very well researched topic in recent studies. Some popular approac...
AbstractIn this article I present a dynamic clustering algorithm applied on financial time series da...
Time series clustering is heavily based on choosing a proper dissimilarity measure between a pair of...
National audienceNowadays, a huge amount of applications exist that natively adopt a data-streaming ...
The final publication is available at Springer via DOI 10.1007/s10614-012-9327-x with the title: A G...
In the paper, we propose an amplitude-based time series data clustering method. When we analyze the ...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
In this work we discuss the clustering procedure of time series of financial returns in groups being...
International audienceResearchers have used from 30 days to several years of daily returns as source...
Data clustering is one of the most popular unsupervised machine learning approaches. Clustering dat...
Time series clustering and anomaly detection provide researches with useful domain insights but are ...
The problem of rapid and automated detection of distinct market regimes is a topic of great interest...
Time series data poses a significant variation to the traditional segmentation techniques of data mi...
The current ability to produce massive amounts of data and the impossibility in storing it motivated...
International audienceNowadays, a huge amount of applications exist that natively adopt a data-strea...
Time-series prediction has been a very well researched topic in recent studies. Some popular approac...
AbstractIn this article I present a dynamic clustering algorithm applied on financial time series da...
Time series clustering is heavily based on choosing a proper dissimilarity measure between a pair of...
National audienceNowadays, a huge amount of applications exist that natively adopt a data-streaming ...
The final publication is available at Springer via DOI 10.1007/s10614-012-9327-x with the title: A G...
In the paper, we propose an amplitude-based time series data clustering method. When we analyze the ...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
In this work we discuss the clustering procedure of time series of financial returns in groups being...
International audienceResearchers have used from 30 days to several years of daily returns as source...
Data clustering is one of the most popular unsupervised machine learning approaches. Clustering dat...
Time series clustering and anomaly detection provide researches with useful domain insights but are ...
The problem of rapid and automated detection of distinct market regimes is a topic of great interest...
Time series data poses a significant variation to the traditional segmentation techniques of data mi...
The current ability to produce massive amounts of data and the impossibility in storing it motivated...
International audienceNowadays, a huge amount of applications exist that natively adopt a data-strea...
Time-series prediction has been a very well researched topic in recent studies. Some popular approac...