In machine learning, rule models are one of the most popular choices when model interpretability is the primary concern. Ordinary, a single model is obtained by solving an optimization problem, and the resulting model is interpreted as the one that best explains the data. In this study, instead of finding a single rule model, we propose algorithms for enumerating multiple rule models. Model enumeration is useful in practice when (i) users want to choose a model that is particularly suited to their task knowledge, or (ii) users want to obtain several possible mechanisms that could be underlying the data to use as hypotheses for further scientific studies. To this end, we propose two enumeration algorithms: an approximate algorithm and an exa...
Background: Despite the advancement in eXplainable Artificial Intelligence, the explanations provide...
International audienceDiscovering association rules from transaction databases is a well studied dat...
In machine learning, ensembles of models based on Multi-Layer Perceptrons (MLPs) or decision trees a...
Abstract. We introduce ApproxCount, an algorithm that approximates the number of satisfying assignme...
The aim of this work is to contribute to the development of a formal framework for the study of the ...
This report documents the program and the outcomes of Dagstuhl Seminar 18421 "Algorithmic Enumeratio...
Model counting is an important problem in artificial intelligence and is applied in several areas of...
We discuss a procedure which extracts statistical and entropic information from data in order to dis...
Whereas newer machine learning techniques, like artifficial neural net-works and support vector mach...
Various benchmarking studies have shown that artificial neural networks and support vector machines ...
Knowledge acquisition is, needless to say, important, because it is a key to the solution to one of ...
We address the problem of enumerating (producing) all models of a given theory. We show that the enu...
The two dominant schemes for rule-learning, C4.5 and RIPPER, both operate in two stages. First they ...
Machine learning models have many applications, being used for example in pattern analysis, image cl...
Rule learning involves developing machine learning models that can be applied to a set of logical fa...
Background: Despite the advancement in eXplainable Artificial Intelligence, the explanations provide...
International audienceDiscovering association rules from transaction databases is a well studied dat...
In machine learning, ensembles of models based on Multi-Layer Perceptrons (MLPs) or decision trees a...
Abstract. We introduce ApproxCount, an algorithm that approximates the number of satisfying assignme...
The aim of this work is to contribute to the development of a formal framework for the study of the ...
This report documents the program and the outcomes of Dagstuhl Seminar 18421 "Algorithmic Enumeratio...
Model counting is an important problem in artificial intelligence and is applied in several areas of...
We discuss a procedure which extracts statistical and entropic information from data in order to dis...
Whereas newer machine learning techniques, like artifficial neural net-works and support vector mach...
Various benchmarking studies have shown that artificial neural networks and support vector machines ...
Knowledge acquisition is, needless to say, important, because it is a key to the solution to one of ...
We address the problem of enumerating (producing) all models of a given theory. We show that the enu...
The two dominant schemes for rule-learning, C4.5 and RIPPER, both operate in two stages. First they ...
Machine learning models have many applications, being used for example in pattern analysis, image cl...
Rule learning involves developing machine learning models that can be applied to a set of logical fa...
Background: Despite the advancement in eXplainable Artificial Intelligence, the explanations provide...
International audienceDiscovering association rules from transaction databases is a well studied dat...
In machine learning, ensembles of models based on Multi-Layer Perceptrons (MLPs) or decision trees a...