We propose a general framework to incorporate rst-order logic (FOL) clauses, that are thought of as an abstract and partial representation of the environment, into kernel machines that learn within a semi-supervised scheme. We rely on a multi-task learning scheme where each task is associated with a unary predicate dened on the feature space, while higher level abstract representations consist of FOL clauses made of those predicates. We re-use the kernel machine mathematical apparatus to solve the problem as primal optimization of a function composed of the loss on the supervised examples, the regularization term, and a penalty term deriving from forcing real-valued constraints deriving from the predicates. Unlike for classic kernel machin...
We develop a general theoretical framework for statistical logical learning with kernels based on dy...
In the 1990s, a new type of learning algorithm was developed, based on results from statistical lear...
This thesis studies the problem of supervised learning using a family of machines, namely kernel lea...
We propose a general framework to incorporate rst-order logic (FOL) clauses, that are thought of as ...
In this paper we propose a general framework to integrate supervised and unsupervised examples with ...
This paper presents a general framework to integrate prior knowledge in the form of logic constraint...
The significant evolution of kernel machines in the last few years has opened the doors to a truly n...
We give results about the learnability and required complexity of logical formulae to solve classifi...
This paper proposes a unified approach to learning from constraints, which integrates the ability of...
The mathematical foundations of a new theory for the design of intelligent agents are presented. The...
Machine Learning: A Constraint-Based Approach provides readers with a refreshing look at the basic m...
A key point in the success of machine learning, and in particular deep learning, has been the availa...
The availability of large scale data sets of manually annotated predicate argument structures has re...
Semantic Based Regularization (SBR) is a general framework to integrate semi-supervised learning wit...
We develop a general theoretical framework for statistical logical learning with kernels based on dy...
In the 1990s, a new type of learning algorithm was developed, based on results from statistical lear...
This thesis studies the problem of supervised learning using a family of machines, namely kernel lea...
We propose a general framework to incorporate rst-order logic (FOL) clauses, that are thought of as ...
In this paper we propose a general framework to integrate supervised and unsupervised examples with ...
This paper presents a general framework to integrate prior knowledge in the form of logic constraint...
The significant evolution of kernel machines in the last few years has opened the doors to a truly n...
We give results about the learnability and required complexity of logical formulae to solve classifi...
This paper proposes a unified approach to learning from constraints, which integrates the ability of...
The mathematical foundations of a new theory for the design of intelligent agents are presented. The...
Machine Learning: A Constraint-Based Approach provides readers with a refreshing look at the basic m...
A key point in the success of machine learning, and in particular deep learning, has been the availa...
The availability of large scale data sets of manually annotated predicate argument structures has re...
Semantic Based Regularization (SBR) is a general framework to integrate semi-supervised learning wit...
We develop a general theoretical framework for statistical logical learning with kernels based on dy...
In the 1990s, a new type of learning algorithm was developed, based on results from statistical lear...
This thesis studies the problem of supervised learning using a family of machines, namely kernel lea...