By their nature, the composition of black box models is opaque. This makes the ability to generate explanations for the response to stimuli challenging. The importance of explaining black box models has become increasingly important given the prevalence of AI and ML systems and the need to build legal and regulatory frameworks around them. Such explanations can also increase trust in these uncertain systems. In our paper we present RICE, a method for generating explanations of the behaviour of black box models by (1) probing a model to extract model output examples using sensitivity analysis; (2) applying CNPInduce, a method for inductive logic program synthesis, to generate logic programs based on critical input-output pairs; and (3) inter...
We introduce and discuss a knowledge-driven distillation approach to explaining black-box models by ...
The importance of explaining the outcome of a machine learning model, especially a black-box model, ...
International audienceThe increasing interest in transparent and fair AI systems has propelled the r...
By their nature, the composition of black box models is opaque. This makes the ability to generate e...
This dissertation seeks to clarify and resolve a number of fundamental issues surrounding algorithmi...
We introduce and discuss a knowledge-driven distillation approach to explaining black-box models by ...
This paper provides empirical concerns about post-hoc explanations of black-box ML models, one of th...
Machine learning enables computers to learn from data and fuels artificial intelligence systems with...
The idea that black box models are unexplainable has been elevated to an axiom. In contrast to expla...
Black box AI systems for automated decision making, often based on machine learning over (big) data,...
We introduce and discuss a knowledge-driven distillation approach to explaining black-box models by ...
The need to understand the inner workings of opaque Machine Learning models has prompted researchers...
In recent years the use of complex machine learning has increased drastically. These complex black b...
The rise of sophisticated machine learning models has brought accurate but obscure decision systems,...
International audienceThis paper provides empirical concerns about post-hoc explanations of black-bo...
We introduce and discuss a knowledge-driven distillation approach to explaining black-box models by ...
The importance of explaining the outcome of a machine learning model, especially a black-box model, ...
International audienceThe increasing interest in transparent and fair AI systems has propelled the r...
By their nature, the composition of black box models is opaque. This makes the ability to generate e...
This dissertation seeks to clarify and resolve a number of fundamental issues surrounding algorithmi...
We introduce and discuss a knowledge-driven distillation approach to explaining black-box models by ...
This paper provides empirical concerns about post-hoc explanations of black-box ML models, one of th...
Machine learning enables computers to learn from data and fuels artificial intelligence systems with...
The idea that black box models are unexplainable has been elevated to an axiom. In contrast to expla...
Black box AI systems for automated decision making, often based on machine learning over (big) data,...
We introduce and discuss a knowledge-driven distillation approach to explaining black-box models by ...
The need to understand the inner workings of opaque Machine Learning models has prompted researchers...
In recent years the use of complex machine learning has increased drastically. These complex black b...
The rise of sophisticated machine learning models has brought accurate but obscure decision systems,...
International audienceThis paper provides empirical concerns about post-hoc explanations of black-bo...
We introduce and discuss a knowledge-driven distillation approach to explaining black-box models by ...
The importance of explaining the outcome of a machine learning model, especially a black-box model, ...
International audienceThe increasing interest in transparent and fair AI systems has propelled the r...