In econophysics, the achievements of information filtering methods over the past 20 years, such as the minimal spanning tree (MST) by Mantegna and the planar maximally filtered graph (PMFG) by Tumminello et al., should be celebrated. Here, we show how one can systematically improve upon this paradigm along two separate directions. First, we used topological data analysis (TDA) to extend the notions of nodes and links in networks to faces, tetrahedrons, or k-simplices in simplicial complexes. Second, we used the Ollivier-Ricci curvature (ORC) to acquire geometric information that cannot be provided by simple information filtering. In this sense, MSTs and PMFGs are but first steps to revealing the topological backbones of financial networks. ...
Quantifying the systemic risk and fragility of financial systems is of vital importance in analyzing...
This dissertation covers the two major parts of my Ph.D. research: i) developing a theoretical frame...
This paper investigates the dynamics of stocks in the S&P500 index for the last 30 years. Using a st...
In econophysics, the achievements of information filtering methods over the past 20 years, such as t...
The aim of this thesis was to 1) give an exposition of how topological data analysis (TDA) can be us...
In recent years, persistent homology (PH) and topological data analysis (TDA) have gained increasing...
Topological Data Analysis (TDA) is an emerging field of Applied Mathematics which combines the work ...
We find numerical and empirical evidence for dynamical, structural and topological phase transitions...
Correlation network based on similarity is the common approach in financial network analyses where t...
Networks of companies can be constructed by using return correlations. A crucial issue in this appro...
Financial markets can be represented as complex networks of agents connected by different intensitie...
In this paper, networks of S&P 500 stocks are constructed based on the correlation matrices of daily...
Two kinds of filtered networks: minimum spanning trees (MSTs) and planar maximally filtered graphs (...
This thesis discusses how properties of complex network theory can be used to study financial time s...
Policy makings and regulations of financial markets rely on a good understanding of the complexity o...
Quantifying the systemic risk and fragility of financial systems is of vital importance in analyzing...
This dissertation covers the two major parts of my Ph.D. research: i) developing a theoretical frame...
This paper investigates the dynamics of stocks in the S&P500 index for the last 30 years. Using a st...
In econophysics, the achievements of information filtering methods over the past 20 years, such as t...
The aim of this thesis was to 1) give an exposition of how topological data analysis (TDA) can be us...
In recent years, persistent homology (PH) and topological data analysis (TDA) have gained increasing...
Topological Data Analysis (TDA) is an emerging field of Applied Mathematics which combines the work ...
We find numerical and empirical evidence for dynamical, structural and topological phase transitions...
Correlation network based on similarity is the common approach in financial network analyses where t...
Networks of companies can be constructed by using return correlations. A crucial issue in this appro...
Financial markets can be represented as complex networks of agents connected by different intensitie...
In this paper, networks of S&P 500 stocks are constructed based on the correlation matrices of daily...
Two kinds of filtered networks: minimum spanning trees (MSTs) and planar maximally filtered graphs (...
This thesis discusses how properties of complex network theory can be used to study financial time s...
Policy makings and regulations of financial markets rely on a good understanding of the complexity o...
Quantifying the systemic risk and fragility of financial systems is of vital importance in analyzing...
This dissertation covers the two major parts of my Ph.D. research: i) developing a theoretical frame...
This paper investigates the dynamics of stocks in the S&P500 index for the last 30 years. Using a st...