In the early days of machine learning (ML), the emphasis was on developi...
PiML (read π-ML, /`pai.`em.`el/) is an integrated and open-access Python...
Gradient-boosted decision trees (GBDT) are widely used and highly effect...
Although neural networks (NNs) with ReLU activation functions have found...
Interpretable machine learning (IML) becomes increasingly important in h...
In recent years, the field of recommendation systems has attracted incre...
The deep neural networks (DNNs) have achieved great success in learning
...
Hyperparameter tuning or optimization plays a central role in the automa...
In machine learning, it is commonly assumed that training and test data ...
Network initialization is the first and critical step for training neura...
Network initialization is the first and critical step for training neura...
Network initialization is the first and critical step for training neura...
The lack of interpretability is an inevitable problem when using neural
...
Iterative Hessian sketch (IHS) is an effective sketching method for mode...
Prediction accuracy and model explainability are the two most important
...
A regularized artificial neural network (RANN) is proposed for
interval-...
In follow-up designs, some additional factors with two or three levels m...
We introduce a new R package, BeSS, for solving the best subset selectio...