A soft tree is an actively studied variant of a decision tree that updates splitting rules using the gradient method. Although it can have various tree architectures, the theoretical properties of their impact are not well known. In this paper, we formulate and analyze the Neural Tangent Kernel (NTK) induced by soft tree ensembles for arbitrary tree architectures. This kernel leads to the remarkable finding that only the number of leaves at each depth is relevant for the tree architecture in ensemble learning with infinitely many trees. In other words, if the number of leaves at each depth is fixed, the training behavior in function space and the generalization performance are exactly the same across different tree architectures, even if th...
International audienceState-of-the-art neural networks are heavily over-parameterized, making the op...
Recently, neural tangent kernel (NTK) has been used to explain the dynamics of learning parameters o...
Kernel methods are effective approaches to the modeling of structured objects in learning algorithms...
In the recent years, Deep Neural Networks (DNNs) have managed to succeed at tasks that previously ap...
The Neural Tangent Kernel (NTK) has emerged as a powerful tool to provide memorization, optimization...
Neural Tangent Kernel (NTK) is widely used to analyze overparametrized neural networks due to the fa...
The Neural Tangent Kernel is a new way to understand the gradient descent in deep neural networks, c...
International audienceState-of-the-art neural networks are heavily over-parameterized, making the op...
How well does a classic deep net architecture like AlexNet or VGG19 classify on a standard dataset s...
The decision tree is one of the earliest predictive models in machine learning. In the soft decision...
The decision tree is one of the earliest predictive models in machine learning. In the soft decision...
A recent line of work has analyzed the theoretical properties of deep neural networks via the Neural...
Multi-kernel learning methods are essential kernel learning methods. Still, the base kernel function...
We discuss a novel decision tree architecture with soft decisions at the internal nodes where we cho...
Tree ensembles can be interpreted as implicit kernel generators, where the ensuing proximity matrix ...
International audienceState-of-the-art neural networks are heavily over-parameterized, making the op...
Recently, neural tangent kernel (NTK) has been used to explain the dynamics of learning parameters o...
Kernel methods are effective approaches to the modeling of structured objects in learning algorithms...
In the recent years, Deep Neural Networks (DNNs) have managed to succeed at tasks that previously ap...
The Neural Tangent Kernel (NTK) has emerged as a powerful tool to provide memorization, optimization...
Neural Tangent Kernel (NTK) is widely used to analyze overparametrized neural networks due to the fa...
The Neural Tangent Kernel is a new way to understand the gradient descent in deep neural networks, c...
International audienceState-of-the-art neural networks are heavily over-parameterized, making the op...
How well does a classic deep net architecture like AlexNet or VGG19 classify on a standard dataset s...
The decision tree is one of the earliest predictive models in machine learning. In the soft decision...
The decision tree is one of the earliest predictive models in machine learning. In the soft decision...
A recent line of work has analyzed the theoretical properties of deep neural networks via the Neural...
Multi-kernel learning methods are essential kernel learning methods. Still, the base kernel function...
We discuss a novel decision tree architecture with soft decisions at the internal nodes where we cho...
Tree ensembles can be interpreted as implicit kernel generators, where the ensuing proximity matrix ...
International audienceState-of-the-art neural networks are heavily over-parameterized, making the op...
Recently, neural tangent kernel (NTK) has been used to explain the dynamics of learning parameters o...
Kernel methods are effective approaches to the modeling of structured objects in learning algorithms...