The hidden nature of causality is a puzzling, yet critical notion for effective decision-making. Financial markets are characterized by fluctuating interdependencies which seldom give rise to emergent phenomena such as bubbles or crashes. In this paper, we propose a method based on symbolic dynamics, which probes beneath the surface of abstract causality and unveils the nature of causal interactions. Our method allows distinction between positive and negative interdependencies as well as a hybrid form that we refer to as “dark causality.” We propose an algorithm which is validated by models of a priori defined causal interaction. Then, we test our method on asset pairs and on a network of sovereign credit default swaps (CDS). Our findings s...
URL des Documents de travail : http: //ces.univ-paris1.fr/cesdp/cesdp2016.htmlDocuments de travail d...
Causality inference for time series systems has been subject to intensive research across many gene...
In this paper, we present the Difference-Based Causality Learner (DBCL), an algorithm for learning a...
Identifying and describing the dynamics of complex systems is a central challenge in various areas o...
The analysis of time-varying interactions within multivariate systems has seen a great deal of inter...
We propose different approaches to infer causal influences between agents in a network using only ob...
One of the fundamental purposes of causal models is using them to predict the effects of manipulatin...
Traditional approaches to predicting financial market dynamics tend to be linear and stationary, whe...
International audienceCausation between time series is a most important topic in econometrics, finan...
International audienceThis is a preliminary paper describing the concepts and principles for a seque...
Standard causal discovery methods must fit a new model whenever they encounter samples from a new un...
As the total value of the global financial market outgrew the value of the real economy, financial i...
This article investigates the causality structure of financial time series. We concentrate on three ...
The goal of this thesis is to study the two key aspects of complexity of the financial system: inter...
Technological advances have provided scientists with large high-dimensional datasets that describe t...
URL des Documents de travail : http: //ces.univ-paris1.fr/cesdp/cesdp2016.htmlDocuments de travail d...
Causality inference for time series systems has been subject to intensive research across many gene...
In this paper, we present the Difference-Based Causality Learner (DBCL), an algorithm for learning a...
Identifying and describing the dynamics of complex systems is a central challenge in various areas o...
The analysis of time-varying interactions within multivariate systems has seen a great deal of inter...
We propose different approaches to infer causal influences between agents in a network using only ob...
One of the fundamental purposes of causal models is using them to predict the effects of manipulatin...
Traditional approaches to predicting financial market dynamics tend to be linear and stationary, whe...
International audienceCausation between time series is a most important topic in econometrics, finan...
International audienceThis is a preliminary paper describing the concepts and principles for a seque...
Standard causal discovery methods must fit a new model whenever they encounter samples from a new un...
As the total value of the global financial market outgrew the value of the real economy, financial i...
This article investigates the causality structure of financial time series. We concentrate on three ...
The goal of this thesis is to study the two key aspects of complexity of the financial system: inter...
Technological advances have provided scientists with large high-dimensional datasets that describe t...
URL des Documents de travail : http: //ces.univ-paris1.fr/cesdp/cesdp2016.htmlDocuments de travail d...
Causality inference for time series systems has been subject to intensive research across many gene...
In this paper, we present the Difference-Based Causality Learner (DBCL), an algorithm for learning a...