The primary aim of this paper is to show how graphical models can be used as a mathematical language for integrating statistical and subject-matter information. In par-ticular, the paper develops a principled, nonparametric framework for causal inference, in which diagrams are queried to determine if the assumptions available are sufficient for identifying causal effects from nonexperimental data. If so the diagrams can be queried to produce mathematical expressions for causal effects in terms of observed distributions; otherwise, the diagrams can be queried to suggest additional observations or auxiliary experiments from which the desired inferences can be obtained
This paper reviews recent advances in the foundations of causal inference and introduces a systemati...
Causal inference is a science with multi-disciplinary evolution and applications. On the one hand, i...
This article (which is mainly expository) sets up graphical models for causation, having a bit less ...
The primary aim of this paper is to show how graphical models can be used as a mathematical language...
The primary aim of this paper is to show how graphical models can be used as a mathematical language...
Abstract: From their inception, causal systems models (more commonly known as structural-equations m...
A graphical model is a graph that represents a set of conditional independence relations among the v...
abstract. The development of macro-econometrics has been per-sistently fraught with a tension betwee...
Graphical models are a powerful tool for causal model specification. Besides al-lowing for a hierarc...
Abstract: "We unify two contemporary theoretical frameworks for representing causal dependencies. Di...
Researchers tasked with understanding the effects of educational technology innovations face the cha...
We describe an approach to learning causal models that leverages temporal information. We posit the ...
This paper highlights several areas where graphical techniques can be harnessed to address the probl...
Scientists aim to design experiments and analyze evidence to obtain maximum knowledge. Although scie...
A variety of questions in causal inference can be represented as probability distributions over hypo...
This paper reviews recent advances in the foundations of causal inference and introduces a systemati...
Causal inference is a science with multi-disciplinary evolution and applications. On the one hand, i...
This article (which is mainly expository) sets up graphical models for causation, having a bit less ...
The primary aim of this paper is to show how graphical models can be used as a mathematical language...
The primary aim of this paper is to show how graphical models can be used as a mathematical language...
Abstract: From their inception, causal systems models (more commonly known as structural-equations m...
A graphical model is a graph that represents a set of conditional independence relations among the v...
abstract. The development of macro-econometrics has been per-sistently fraught with a tension betwee...
Graphical models are a powerful tool for causal model specification. Besides al-lowing for a hierarc...
Abstract: "We unify two contemporary theoretical frameworks for representing causal dependencies. Di...
Researchers tasked with understanding the effects of educational technology innovations face the cha...
We describe an approach to learning causal models that leverages temporal information. We posit the ...
This paper highlights several areas where graphical techniques can be harnessed to address the probl...
Scientists aim to design experiments and analyze evidence to obtain maximum knowledge. Although scie...
A variety of questions in causal inference can be represented as probability distributions over hypo...
This paper reviews recent advances in the foundations of causal inference and introduces a systemati...
Causal inference is a science with multi-disciplinary evolution and applications. On the one hand, i...
This article (which is mainly expository) sets up graphical models for causation, having a bit less ...