Can we effectively learn a nonlinear representation in time comparable to linear learning? We describe a new algorithm that explicitly and adaptively expands higher-order interaction features over base linear representations. The algorithm is designed for extreme computational efficiency, and an extensive experimental study shows that its computation/prediction tradeoff ability compares very favorably against strong baselines.
This paper revisits building machine learning algorithms that involve interactions between entities...
Artificial neural networks are an area of research that has been explored extensively. With the for...
Many complex systems of great interest-ecologies, economies, immune systems, etc.-can be described a...
Nonlinear, local and highly parallel algorithms can perform several simple but important visual co...
In practical applications, machine learning algorithms are often needed to learn classifiers that op...
A method of combining learning algorithms is described that preserves attribute efficiency. It yield...
A class of fast, supervised learning algorithms is presented. They use lo-cal representations, hashi...
Various factorization-based methods have been proposed to leverage second-order, or higher-order cro...
We present a method for learning higher-order polynomial functions from examples using linear regres...
We propose an unprecedented approach to post-hoc interpretable machine learning. Facing a complex ph...
In this paper we examine a perceptron learning task. The task is realizable since it is provided by ...
Abstract. It is well known that the adaptive algorithm is simple and easy to program but the results...
We propose a new abstraction refinement procedure based on machine learning to improve the performan...
Dictionary learning has been extensively studied in sparse representations. However, existing dictio...
International audienceLearning from interpretation transition (LFIT) automatically constructs a mode...
This paper revisits building machine learning algorithms that involve interactions between entities...
Artificial neural networks are an area of research that has been explored extensively. With the for...
Many complex systems of great interest-ecologies, economies, immune systems, etc.-can be described a...
Nonlinear, local and highly parallel algorithms can perform several simple but important visual co...
In practical applications, machine learning algorithms are often needed to learn classifiers that op...
A method of combining learning algorithms is described that preserves attribute efficiency. It yield...
A class of fast, supervised learning algorithms is presented. They use lo-cal representations, hashi...
Various factorization-based methods have been proposed to leverage second-order, or higher-order cro...
We present a method for learning higher-order polynomial functions from examples using linear regres...
We propose an unprecedented approach to post-hoc interpretable machine learning. Facing a complex ph...
In this paper we examine a perceptron learning task. The task is realizable since it is provided by ...
Abstract. It is well known that the adaptive algorithm is simple and easy to program but the results...
We propose a new abstraction refinement procedure based on machine learning to improve the performan...
Dictionary learning has been extensively studied in sparse representations. However, existing dictio...
International audienceLearning from interpretation transition (LFIT) automatically constructs a mode...
This paper revisits building machine learning algorithms that involve interactions between entities...
Artificial neural networks are an area of research that has been explored extensively. With the for...
Many complex systems of great interest-ecologies, economies, immune systems, etc.-can be described a...