In this paper, we introduce a novel class of graphical models for representing time lag specific causal relationships and independencies of multivariate time series with unobserved confounders. We completely characterize these graphs and show that they constitute proper subsets of the currently employed model classes. As we show, from the novel graphs one can thus draw stronger causal inferences -- without additional assumptions. We further introduce a graphical representation of Markov equivalence classes of the novel graphs. This graphical representation contains more causal knowledge than what current state-of-the-art causal discovery algorithms learn.Comment: 67 pages (including supplement), 16 figures, accepted at The Annals of Stati...
The task of uncovering causal relationships among multivariate time series data stands as an essenti...
Standard causal discovery methods must fit a new model whenever they encounter samples from a new un...
We propose different approaches to infer causal influences between agents in a network using only ob...
Reconstructing the causal relationships behind the phenomena we observe is a fundamental challenge i...
In this talk I will, first, introduce the so-called causal discovery task, that is, the task of lear...
This study addresses the problem of learning a summary causal graph on time series with potentially ...
Consider two stationary time series with heavy-tailed marginal distributions. We aim to detect wheth...
In this paper, we discuss the properties of mixed graphs whichvisualize causal relationships between...
Causal discovery from time series data is a typical problem setting across the sciences. Often, mult...
This study addresses the problem of learning an extended summary causal graph on time series. The al...
Identifying causality in multivariate time-series data is a topic or significant interest due to its...
International audienceThis study addresses the problem of learning an extended summary causal graph ...
Abstract. In time series analysis, inference about cause-effect relation-ships among multiple time s...
Ancestral graphs (AGs) are graphical causal models that can represent uncertainty about the presence...
This paper presents an approach for identifying the root causes of collective anomalies given observ...
The task of uncovering causal relationships among multivariate time series data stands as an essenti...
Standard causal discovery methods must fit a new model whenever they encounter samples from a new un...
We propose different approaches to infer causal influences between agents in a network using only ob...
Reconstructing the causal relationships behind the phenomena we observe is a fundamental challenge i...
In this talk I will, first, introduce the so-called causal discovery task, that is, the task of lear...
This study addresses the problem of learning a summary causal graph on time series with potentially ...
Consider two stationary time series with heavy-tailed marginal distributions. We aim to detect wheth...
In this paper, we discuss the properties of mixed graphs whichvisualize causal relationships between...
Causal discovery from time series data is a typical problem setting across the sciences. Often, mult...
This study addresses the problem of learning an extended summary causal graph on time series. The al...
Identifying causality in multivariate time-series data is a topic or significant interest due to its...
International audienceThis study addresses the problem of learning an extended summary causal graph ...
Abstract. In time series analysis, inference about cause-effect relation-ships among multiple time s...
Ancestral graphs (AGs) are graphical causal models that can represent uncertainty about the presence...
This paper presents an approach for identifying the root causes of collective anomalies given observ...
The task of uncovering causal relationships among multivariate time series data stands as an essenti...
Standard causal discovery methods must fit a new model whenever they encounter samples from a new un...
We propose different approaches to infer causal influences between agents in a network using only ob...