Prediction and causal explanation are fundamentally distinct tasks of data analysis. In health applications, this difference can be understood in terms of the difference between prognosis (prediction) and prevention/treatment (causal explanation). Nevertheless, these two concepts are often conflated in practice. We use the framework of generalized linear models (GLMs) to illustrate that predictive and causal queries require distinct processes for their application and subsequent interpretation of results. In particular, we identify five primary ways in which GLMs for prediction differ from GLMs for causal inference: (i) the covariates that should be considered for inclusion in (and possibly exclusion from) the model; (ii) how a suitable set...
Etiological research aims to uncover causal effects, whilst prediction research aims to forecast an ...
Despite the increasing relevance of forecasting methods, the causal implications of these algorithms...
Etiological research aims to uncover causal effects, whilst prediction research aims to forecast an ...
Prediction and causal explanation are fundamentally distinct tasks of data analysis. In health appli...
n recent years, there has been a widespread cross-fertilization between Medical Statistics and Machi...
We explore relationships between machine learning (ML) and causal inference. We focus on improvement...
Machine learning (ML) methodology used in the social and health sciences needs to fit the intended r...
In this paper we study approaches for dealing with treatment when developing a clinical prediction m...
Bayesian modeling provides a principled approach to quantifying uncertainty in model parameters and ...
This paper argues that machine learning (ML) and epidemiology are on collision course over causation...
Purpose: Despite the potential of machine learning models, the lack of generalizability has hindered...
Recent advances in causal machine learning leverage observational data to estimate heterogeneous tre...
In this study, we aimed to develop and compare models to predict individuals with suicidal ideation ...
A connection between the general linear model (GLM) with frequentist statistical testing and machin...
90% of the world’s data have been generated in the last five years [1]. A small fraction of these d...
Etiological research aims to uncover causal effects, whilst prediction research aims to forecast an ...
Despite the increasing relevance of forecasting methods, the causal implications of these algorithms...
Etiological research aims to uncover causal effects, whilst prediction research aims to forecast an ...
Prediction and causal explanation are fundamentally distinct tasks of data analysis. In health appli...
n recent years, there has been a widespread cross-fertilization between Medical Statistics and Machi...
We explore relationships between machine learning (ML) and causal inference. We focus on improvement...
Machine learning (ML) methodology used in the social and health sciences needs to fit the intended r...
In this paper we study approaches for dealing with treatment when developing a clinical prediction m...
Bayesian modeling provides a principled approach to quantifying uncertainty in model parameters and ...
This paper argues that machine learning (ML) and epidemiology are on collision course over causation...
Purpose: Despite the potential of machine learning models, the lack of generalizability has hindered...
Recent advances in causal machine learning leverage observational data to estimate heterogeneous tre...
In this study, we aimed to develop and compare models to predict individuals with suicidal ideation ...
A connection between the general linear model (GLM) with frequentist statistical testing and machin...
90% of the world’s data have been generated in the last five years [1]. A small fraction of these d...
Etiological research aims to uncover causal effects, whilst prediction research aims to forecast an ...
Despite the increasing relevance of forecasting methods, the causal implications of these algorithms...
Etiological research aims to uncover causal effects, whilst prediction research aims to forecast an ...