For decades, statistical methods, many based upon the “general linear model,” have been used to do estimation and test hypotheses in the social and natural sciences, in medicine, and in the private sector. These tools have become increasingly sophisticated and are often paired with powerful open source data analytic software. We now regularly see mathematical/statistical output combined with data visualizations that are truly mindboggling and, once in a while, thought provoking. But an increasing number of papers and studies appear to have little statistical validity, in which the line between causality and correlation is often non-existent. This is a danger sign not only in science and medicine but also to companies who unwittingly rely on...
Providing a thorough treatment on statistical causality, this resource presents a broad collection o...
The age old quest for the golden grail of causal answers has been at the heart of science for centur...
Written by a group of well-known experts, Statistics and Causality: Methods for Applied Empirical Re...
A shared problem across the sciences is to make sense of correlational data coming from observations...
Abstract A shared problem across the sciences is to make sense of correlational data coming from obs...
There is a deep and well-regarded tradition in economics and other social sciences as well as in the...
There is a need for integrated thinking about causality, probability and mechanisms in scientific me...
Applied econometric work takes a superficial approach to causality. Understanding economic affairs, ...
Social scientists often estimate models from correlational data, where the independent variable has ...
Correlation is not causation is one of the mantras of the sciences—a cautionary warning especially t...
Correlation is not causation is one of the mantras of the sciences—a cautionary warning especially t...
One of the more common techniques for measuring relationships between variables is the well-known Pe...
Time series models are used to determine relationships, spot patterns, and detect abnormalities and ...
A state of the art volume on statistical causality Causality: Statistical Perspectives and Applicati...
Machine learning has traditionally been focused on prediction. Given observations that have been gen...
Providing a thorough treatment on statistical causality, this resource presents a broad collection o...
The age old quest for the golden grail of causal answers has been at the heart of science for centur...
Written by a group of well-known experts, Statistics and Causality: Methods for Applied Empirical Re...
A shared problem across the sciences is to make sense of correlational data coming from observations...
Abstract A shared problem across the sciences is to make sense of correlational data coming from obs...
There is a deep and well-regarded tradition in economics and other social sciences as well as in the...
There is a need for integrated thinking about causality, probability and mechanisms in scientific me...
Applied econometric work takes a superficial approach to causality. Understanding economic affairs, ...
Social scientists often estimate models from correlational data, where the independent variable has ...
Correlation is not causation is one of the mantras of the sciences—a cautionary warning especially t...
Correlation is not causation is one of the mantras of the sciences—a cautionary warning especially t...
One of the more common techniques for measuring relationships between variables is the well-known Pe...
Time series models are used to determine relationships, spot patterns, and detect abnormalities and ...
A state of the art volume on statistical causality Causality: Statistical Perspectives and Applicati...
Machine learning has traditionally been focused on prediction. Given observations that have been gen...
Providing a thorough treatment on statistical causality, this resource presents a broad collection o...
The age old quest for the golden grail of causal answers has been at the heart of science for centur...
Written by a group of well-known experts, Statistics and Causality: Methods for Applied Empirical Re...