We have recently introduced the ``thermal optimal path'' (TOP) method to investigate the real-time lead-lag structure between two time series. The TOP method consists in searching for a robust noise-averaged optimal path of the distance matrix along which the two time series have the greatest similarity. Here, we generalize the TOP method by introducing a more general definition of distance which takes into account possible regime shifts between positive and negative correlations. This generalization to track possible changes of correlation signs is able to identify possible transitions from one convention (or consensus) to another. Numerical simulations on synthetic time series verify that the new TOP method performs as expected even in th...
This paper proposes an alternative estimation method for cointegration, which allows for variation i...
Cross-correlation between pairs of variables takes multi-time scale characteristic, and it can be to...
Granger-causality in the frequency domain is an emerging tool to analyze the causal relationship be...
We present the symmetric thermal optimal path (TOPS) method to determine the time-dependent lead-lag...
We consider the problem of identifying similarities and causality relationships in a given set of fin...
This dissertation covers the four major parts of my PhD research: i) Modeling instantaneous correlat...
We propose a modified time lag random matrix theory in order to study time-lag cross correlations in...
The paper introduces a novel conditional in- dependence (CI) based method for linear and nonlinear...
In this article, we suggest testing the instability of the co-movement processes in time and frequen...
AbstractA time lag effect cannot be ignored while information spreading in one market or between som...
In order to quantify the long-range cross-correlations between two time series qualitatively, we in...
High frequency data are often observed at irregular intervals, which complicates the analysis of lea...
40 pagesLead/lag relationships are an important stylized fact at high frequency. Some assets follow ...
Identifying approaching bifurcations and regime transitions from observations is an important challe...
This paper adapts the non-parametric Dynamic Time Warping (DTW) technique in an application to exam...
This paper proposes an alternative estimation method for cointegration, which allows for variation i...
Cross-correlation between pairs of variables takes multi-time scale characteristic, and it can be to...
Granger-causality in the frequency domain is an emerging tool to analyze the causal relationship be...
We present the symmetric thermal optimal path (TOPS) method to determine the time-dependent lead-lag...
We consider the problem of identifying similarities and causality relationships in a given set of fin...
This dissertation covers the four major parts of my PhD research: i) Modeling instantaneous correlat...
We propose a modified time lag random matrix theory in order to study time-lag cross correlations in...
The paper introduces a novel conditional in- dependence (CI) based method for linear and nonlinear...
In this article, we suggest testing the instability of the co-movement processes in time and frequen...
AbstractA time lag effect cannot be ignored while information spreading in one market or between som...
In order to quantify the long-range cross-correlations between two time series qualitatively, we in...
High frequency data are often observed at irregular intervals, which complicates the analysis of lea...
40 pagesLead/lag relationships are an important stylized fact at high frequency. Some assets follow ...
Identifying approaching bifurcations and regime transitions from observations is an important challe...
This paper adapts the non-parametric Dynamic Time Warping (DTW) technique in an application to exam...
This paper proposes an alternative estimation method for cointegration, which allows for variation i...
Cross-correlation between pairs of variables takes multi-time scale characteristic, and it can be to...
Granger-causality in the frequency domain is an emerging tool to analyze the causal relationship be...