5siHigh-stakes applications require AI-generated models to be interpretable. Current algorithms for the synthesis of potentially interpretable models rely on objectives or regularization terms that represent interpretability only coarsely (e.g., model size) and are not designed for a specific user. Yet, interpretability is intrinsically subjective. In this paper, we propose an approach for the synthesis of models that are tailored to the user by enabling the user to steer the model synthesis process according to her or his preferences. We use a bi-objective evolutionary algorithm to synthesize models with trade-offs between accuracy and a user-specific notion of interpretability. The latter is estimated by a neural network that is trained c...
Interprctability of representations in both deep generative and discriminative models is highly desi...
Machine-learning models have demonstrated great success in learning complex patterns that enable the...
The recent surge in highly successful, but opaque, machine-learning models has given rise to a dire ...
High-stakes applications require AI-generated models to be interpretable. Current algorithms for the...
4siMany risk-sensitive applications require Machine Learning (ML) models to be interpretable. Attemp...
Abstract. Data of different levels of complexity and of ever growing diversity of characteristics ar...
Interpretability of representations in both deep generative and discriminative models is highly desi...
Interpretable classification models are built with the purpose of providing a comprehensible descrip...
Machine learning enables computers to learn from data and fuels artificial intelligence systems with...
10 pages, 22 figures, submitted to ICLR 2023A wide variety of model explanation approaches have been...
We look at a specific aspect of model interpretability: models often need to be constrained in size ...
Deep neural networks have achieved near-human accuracy levels in various types of classification and...
© 2018 Curran Associates Inc.All rights reserved. Most recent work on interpretability of complex ma...
The interpretability of an intelligent model automatically derived from data is a property that can ...
A salient approach to interpretable machine learning is to restrict modeling to simple models. In th...
Interprctability of representations in both deep generative and discriminative models is highly desi...
Machine-learning models have demonstrated great success in learning complex patterns that enable the...
The recent surge in highly successful, but opaque, machine-learning models has given rise to a dire ...
High-stakes applications require AI-generated models to be interpretable. Current algorithms for the...
4siMany risk-sensitive applications require Machine Learning (ML) models to be interpretable. Attemp...
Abstract. Data of different levels of complexity and of ever growing diversity of characteristics ar...
Interpretability of representations in both deep generative and discriminative models is highly desi...
Interpretable classification models are built with the purpose of providing a comprehensible descrip...
Machine learning enables computers to learn from data and fuels artificial intelligence systems with...
10 pages, 22 figures, submitted to ICLR 2023A wide variety of model explanation approaches have been...
We look at a specific aspect of model interpretability: models often need to be constrained in size ...
Deep neural networks have achieved near-human accuracy levels in various types of classification and...
© 2018 Curran Associates Inc.All rights reserved. Most recent work on interpretability of complex ma...
The interpretability of an intelligent model automatically derived from data is a property that can ...
A salient approach to interpretable machine learning is to restrict modeling to simple models. In th...
Interprctability of representations in both deep generative and discriminative models is highly desi...
Machine-learning models have demonstrated great success in learning complex patterns that enable the...
The recent surge in highly successful, but opaque, machine-learning models has given rise to a dire ...