Neural sequence models trained with maximum likelihood estimation have led to breakthroughs in many tasks, where success is defined by the gap between training and test performance. However, their ability to achieve stronger forms of generalization remains unclear. We consider the problem of symbolic mathematical integration, as it requires generalizing systematically beyond the training set. We develop a methodology for evaluating generalization that takes advantage of the problem domain's structure and access to a verifier. Despite promising in-distribution performance of sequence-to-sequence models in this domain, we demonstrate challenges in achieving robustness, compositionality, and out-of-distribution generalization, through both car...
This paper presents a novel approach to generate data-driven regression models that not only give re...
Reliable generalization lies at the heart of safe ML and AI. However, understanding when and how neu...
Symbolic regression is a data-based machine learning approach that creates interpretable prediction ...
This paper develops a novel methodology to simultaneously learn a neural network and extract general...
Model complexity has a close relationship with the generalization ability and the interpretability o...
Symbolic regression (SR) is a function identification process, the task of which is to identify and ...
Logical reasoning tasks over symbols, such as learning arithmetic operations and computer program ev...
Neural networks need to be able to guarantee their intrinsic generalisation abilities if they are to...
This thesis presents a new theory of generalization in neural network types of learning machines. Th...
Abstract. Expression Inference is a parsimonious, comprehensible alternative to semi-parametric and ...
We present a critical review of computational models of generalization of simple grammar-like rules,...
Despite the tremendous success, existing machine learning models still fall short of human-like syst...
Genetic programming (GP) is one of the best approaches today to discover symbolic regression models....
By making assumptions on the probability distribution of the potentials in a feed-forward neural net...
Flexible neural sequence models outperform grammar- and automaton-based counterparts on a variety of...
This paper presents a novel approach to generate data-driven regression models that not only give re...
Reliable generalization lies at the heart of safe ML and AI. However, understanding when and how neu...
Symbolic regression is a data-based machine learning approach that creates interpretable prediction ...
This paper develops a novel methodology to simultaneously learn a neural network and extract general...
Model complexity has a close relationship with the generalization ability and the interpretability o...
Symbolic regression (SR) is a function identification process, the task of which is to identify and ...
Logical reasoning tasks over symbols, such as learning arithmetic operations and computer program ev...
Neural networks need to be able to guarantee their intrinsic generalisation abilities if they are to...
This thesis presents a new theory of generalization in neural network types of learning machines. Th...
Abstract. Expression Inference is a parsimonious, comprehensible alternative to semi-parametric and ...
We present a critical review of computational models of generalization of simple grammar-like rules,...
Despite the tremendous success, existing machine learning models still fall short of human-like syst...
Genetic programming (GP) is one of the best approaches today to discover symbolic regression models....
By making assumptions on the probability distribution of the potentials in a feed-forward neural net...
Flexible neural sequence models outperform grammar- and automaton-based counterparts on a variety of...
This paper presents a novel approach to generate data-driven regression models that not only give re...
Reliable generalization lies at the heart of safe ML and AI. However, understanding when and how neu...
Symbolic regression is a data-based machine learning approach that creates interpretable prediction ...