International audienceIn many classification tasks there is a requirement of monotonicity. Concretely, if all else remains constant, increasing (resp. decreasing) the value of one or more features must not decrease (resp. increase) the value of the prediction. Despite comprehensive efforts on learning monotonic classifiers, dedicated approaches for explaining monotonic classifiers are scarce and classifierspecific. This paper describes novel algorithms for the computation of one formal explanation of a (black-box) monotonic classifier. These novel algorithms are polynomial in the run time complexity of the classifier and the number of features. Furthermore, the paper presents a practically efficient model-agnostic algorithm for enumerating ...
textabstractFor classification problems with ordinal attributes very often the class attribute shoul...
Monotonic classification is a kind of special task in machine learning and pattern recognition. Mono...
Abstract. Learning vector quantization neural networks are competitive tools for classification prob...
International audienceIn many classification tasks there is a requirement of monotonicity. Concretel...
We present a systematic method for incorporating prior knowledge (hints) into the learning-from-exam...
textabstractThe monotonicity property is ubiquitous in our lives and it appears in different roles: ...
In many application areas of machine learning, prior knowledge concerning the monotonicity of relati...
This dissertation studies the incorporation of monotonicity constraints as a type of domain knowledg...
A discriminative method is proposed for learning monotonic transformations of the training data join...
In the present paper strong-monotonic, monotonic and weak-monotonic reasoning is studied in the cont...
Machine learning algorithms (learners) are typically expected to produce monotone learning curves, m...
textabstractThe monotonicity constraint is a common side condition imposed on modeling problems as d...
The present paper deals with monotonic and dual monotonic language learning from positive and negati...
Explaining decisions is at the heart of explainable AI. We investigate the computational complexity ...
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
textabstractFor classification problems with ordinal attributes very often the class attribute shoul...
Monotonic classification is a kind of special task in machine learning and pattern recognition. Mono...
Abstract. Learning vector quantization neural networks are competitive tools for classification prob...
International audienceIn many classification tasks there is a requirement of monotonicity. Concretel...
We present a systematic method for incorporating prior knowledge (hints) into the learning-from-exam...
textabstractThe monotonicity property is ubiquitous in our lives and it appears in different roles: ...
In many application areas of machine learning, prior knowledge concerning the monotonicity of relati...
This dissertation studies the incorporation of monotonicity constraints as a type of domain knowledg...
A discriminative method is proposed for learning monotonic transformations of the training data join...
In the present paper strong-monotonic, monotonic and weak-monotonic reasoning is studied in the cont...
Machine learning algorithms (learners) are typically expected to produce monotone learning curves, m...
textabstractThe monotonicity constraint is a common side condition imposed on modeling problems as d...
The present paper deals with monotonic and dual monotonic language learning from positive and negati...
Explaining decisions is at the heart of explainable AI. We investigate the computational complexity ...
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
textabstractFor classification problems with ordinal attributes very often the class attribute shoul...
Monotonic classification is a kind of special task in machine learning and pattern recognition. Mono...
Abstract. Learning vector quantization neural networks are competitive tools for classification prob...