Data analysis usually aims to identify a particular signal, such as an intervention effect. Conventional analyses often assume a specific data generation process, which implies a theoretical model that best fits the data. Machine learning techniques do not make such an assumption. In fact, they encourage multiple models to compete on the same data. Applying logistic regression and machine learning algorithms to real and simulated datasets with different features of noise and signal, we demonstrate that no single model dominates others under all circumstances. By showing when different models shine or struggle, we argue that it is important to conduct predictive analyses using cross-validation for better evidence that informs decision making
Where should better learning technology (such as machine learning or AI) improve decisions? I develo...
An increasing number of publications present the joint application of Design of Experiments (DOE) an...
Many machine learning techniques remain ''black boxes'' because, despite their high predictive perfo...
Data analysis usually aims to identify a particular signal, such as an intervention effect. Conventi...
Data analysis usually aims to identify a particular signal, such as an intervention effect. Conventi...
Developing state-of-the-art approaches for specific tasks is a major driving force in our research c...
Machine Learning is a powerful tool to reveal and exploit correlations in a multi-dimensional parame...
This paper presents MMM and MMC, two methods for combining knowledge from a variety of prediction mo...
The model selection procedure is usually a single-criterion decision making in which we select the m...
Summary in EnglishNowadays human activities produce massive amounts of data everyday. It is estimate...
Machine learning is largely an experimental science, of which the evaluation of predictive models is...
Recent controversies about the level of replicability of behavioral research analyzed using statisti...
Applying machine learning to real problems is non-trivial because many important steps are needed to...
We formalize a framework for quantitatively assessing agreement between two datasets that are assume...
Wide-ranging digitalization has made it possible to capture increasingly larger amounts of data. In ...
Where should better learning technology (such as machine learning or AI) improve decisions? I develo...
An increasing number of publications present the joint application of Design of Experiments (DOE) an...
Many machine learning techniques remain ''black boxes'' because, despite their high predictive perfo...
Data analysis usually aims to identify a particular signal, such as an intervention effect. Conventi...
Data analysis usually aims to identify a particular signal, such as an intervention effect. Conventi...
Developing state-of-the-art approaches for specific tasks is a major driving force in our research c...
Machine Learning is a powerful tool to reveal and exploit correlations in a multi-dimensional parame...
This paper presents MMM and MMC, two methods for combining knowledge from a variety of prediction mo...
The model selection procedure is usually a single-criterion decision making in which we select the m...
Summary in EnglishNowadays human activities produce massive amounts of data everyday. It is estimate...
Machine learning is largely an experimental science, of which the evaluation of predictive models is...
Recent controversies about the level of replicability of behavioral research analyzed using statisti...
Applying machine learning to real problems is non-trivial because many important steps are needed to...
We formalize a framework for quantitatively assessing agreement between two datasets that are assume...
Wide-ranging digitalization has made it possible to capture increasingly larger amounts of data. In ...
Where should better learning technology (such as machine learning or AI) improve decisions? I develo...
An increasing number of publications present the joint application of Design of Experiments (DOE) an...
Many machine learning techniques remain ''black boxes'' because, despite their high predictive perfo...