This paper investigates the use of linear representations of trees (i.e. mappings from the set of trees into a finite dimensional vector space which are induced by rational series on trees) in the context of structured data learning. We argue that this representation space can be more appealing than the space of trees to handle machine learning problems involving trees. Focusing on a tree series maximization problem, we first analyze its complexity to motivate the use of approximation techniques. We then show how a tree series can be extended to the continuous representation space, we propose an adaptive Metropolis-Hastings algorithm to solve the maximization problem in this space, and we establish convergence guarantees. Finally, we provid...
We propose a general framework for designing machine learning models that deal with constructing com...
Machine learning algorithms are used to learn models capable of predicting on unseen data. In recent...
This paper presents a family of methods for the design of adaptive kernels for tree-structured data ...
Abstract. We generalize a learning algorithm originally devised for deterministic all-accepting weig...
Kernel methods are effective approaches to the modeling of structured objects in learning algorithms...
This paper is concerned with the approximation of high-dimensional functions in a statistical learni...
In computer science, structural (e.g. causal, topological, or hierarchical) relationships between pa...
Abstract — Kernel methods are effective approaches to the modeling of structured objects in learning...
We study the problem of learning a hierarchical tree representation of data from labeled samples, ta...
We extend tree-based methods to the prediction of structured outputs using a kernelization of the al...
Abstract—The problem of learning forest-structured discrete graphical models from i.i.d. samples is ...
We consider multi-class classification where the predictor has a hierarchical structure that allows ...
Abstract. In order to deal efficiently with infinite regular trees (or other pointed graph structure...
We provide a new formulation for the problem of learning the optimal classification tree of a given ...
Decision trees (DT) are considered to be one of the oldest machine learning models which received a ...
We propose a general framework for designing machine learning models that deal with constructing com...
Machine learning algorithms are used to learn models capable of predicting on unseen data. In recent...
This paper presents a family of methods for the design of adaptive kernels for tree-structured data ...
Abstract. We generalize a learning algorithm originally devised for deterministic all-accepting weig...
Kernel methods are effective approaches to the modeling of structured objects in learning algorithms...
This paper is concerned with the approximation of high-dimensional functions in a statistical learni...
In computer science, structural (e.g. causal, topological, or hierarchical) relationships between pa...
Abstract — Kernel methods are effective approaches to the modeling of structured objects in learning...
We study the problem of learning a hierarchical tree representation of data from labeled samples, ta...
We extend tree-based methods to the prediction of structured outputs using a kernelization of the al...
Abstract—The problem of learning forest-structured discrete graphical models from i.i.d. samples is ...
We consider multi-class classification where the predictor has a hierarchical structure that allows ...
Abstract. In order to deal efficiently with infinite regular trees (or other pointed graph structure...
We provide a new formulation for the problem of learning the optimal classification tree of a given ...
Decision trees (DT) are considered to be one of the oldest machine learning models which received a ...
We propose a general framework for designing machine learning models that deal with constructing com...
Machine learning algorithms are used to learn models capable of predicting on unseen data. In recent...
This paper presents a family of methods for the design of adaptive kernels for tree-structured data ...