This paper argues that machine learning (ML) and epidemiology are on collision course over causation. The discipline of epidemiology lays great emphasis on causation, while ML research does not. Some epidemiologists have proposed imposing what amounts to a causal constraint on ML in epidemiology, requiring it either to engage in causal inference or restrict itself to mere projection. We whittle down the issues to the question of whether causal knowledge is necessary for underwriting predictions about the outcomes of public health interventions. While there is great plausibility to the idea that it is, conviction that something is impossible does not by itself motivate a constraint to forbid trying. We disambiguate the possible motivations f...
Recent advances in causal machine learning leverage observational data to estimate heterogeneous tre...
This chapter explores the idea that causal inference is warranted if and only if the mechanism under...
The popularity of machine learning in both academia and industry has experienced unparalleled growth...
We explore relationships between machine learning (ML) and causal inference. We focus on improvement...
“Causal inference,” in 21st c CE epidemiology, has notably come to stand for a specific approach, on...
Causal inference based on a restricted version of the potential outcomes approach reasoning is assum...
In this paper I untangle a recent debate in the philosophy of epidemiology, focusing in particular o...
There has been much debate about the relative emphasis of the field of epidemiology on causal infere...
peer reviewedMachine learning (ML) methodology used in the social and health sciences needs to fit t...
Causal inference -- the process of drawing a conclusion about the impact of an exposure on an outcom...
In recent years, there has been a widespread cross-fertilization between Medical Statistics and Mach...
Drawing conclusions about real-world relationships of cause and effect from data collected without r...
Resting on our experience of computational epidemiology in practice and of industrial projects on a...
Artificial intelligence-based (AI) technologies such as machine learning (ML) systems are playing an...
According to the Russo-Williamson Thesis, causal claims in the health sciences need to be supported ...
Recent advances in causal machine learning leverage observational data to estimate heterogeneous tre...
This chapter explores the idea that causal inference is warranted if and only if the mechanism under...
The popularity of machine learning in both academia and industry has experienced unparalleled growth...
We explore relationships between machine learning (ML) and causal inference. We focus on improvement...
“Causal inference,” in 21st c CE epidemiology, has notably come to stand for a specific approach, on...
Causal inference based on a restricted version of the potential outcomes approach reasoning is assum...
In this paper I untangle a recent debate in the philosophy of epidemiology, focusing in particular o...
There has been much debate about the relative emphasis of the field of epidemiology on causal infere...
peer reviewedMachine learning (ML) methodology used in the social and health sciences needs to fit t...
Causal inference -- the process of drawing a conclusion about the impact of an exposure on an outcom...
In recent years, there has been a widespread cross-fertilization between Medical Statistics and Mach...
Drawing conclusions about real-world relationships of cause and effect from data collected without r...
Resting on our experience of computational epidemiology in practice and of industrial projects on a...
Artificial intelligence-based (AI) technologies such as machine learning (ML) systems are playing an...
According to the Russo-Williamson Thesis, causal claims in the health sciences need to be supported ...
Recent advances in causal machine learning leverage observational data to estimate heterogeneous tre...
This chapter explores the idea that causal inference is warranted if and only if the mechanism under...
The popularity of machine learning in both academia and industry has experienced unparalleled growth...