Conventional rule learning algorithms aim at finding a set of simple rules, where each rule covers as many examples as possible. In this paper, we argue that the rules found in this way may not be the optimal explanations for each of the examples they cover. Instead, we propose an efficient algorithm that aims at finding the best rule covering each training example in a greedy optimization consisting of one specialization and one generalization loop. These locally optimal rules are collected and then filtered for a final rule set, which is much larger than the sets learned by conventional rule learning algorithms. A new example is classified by selecting the best among the rules that cover this example. In our experiments on small to very l...
Learning easily understandable decision rules from examples is one of the classic problems in machin...
To fill the increasing demand for explanations of decisions made by automated prediction systems, ma...
Inductive rule learning is arguably among the most traditional paradigms in machine learning. Althou...
Achieving at least some level of explainability requires complex analyses for many machine learning ...
Machine learning has been studied intensively during the past two decades. One motivation has been t...
Separate-and-conquer or covering rule learning algorithms may be viewed as a technique for using loc...
Large language models (LLMs) have shown incredible performance in completing various real-world task...
This paper analyses the complexity of rule selection for supervised learning in distributed scenario...
The two dominant schemes for rule-learning, C4.5 and RIPPER, both operate in two stages. First they ...
Automated prediction systems based on machine learning (ML) are employed in practical applications w...
AbstractKnowledge representation and extraction are very important tasks in data mining. In this wor...
wcohenresearchattcom Many existing rule learning systems are computationally expensive on large nois...
In this article we show that there is a strong connection between decision tree learning and local p...
Today's rule mining algorithms all use greedy approaches to generate rules representing the kno...
Achieving at least some level of explainability requires complex analyses for many machine learning ...
Learning easily understandable decision rules from examples is one of the classic problems in machin...
To fill the increasing demand for explanations of decisions made by automated prediction systems, ma...
Inductive rule learning is arguably among the most traditional paradigms in machine learning. Althou...
Achieving at least some level of explainability requires complex analyses for many machine learning ...
Machine learning has been studied intensively during the past two decades. One motivation has been t...
Separate-and-conquer or covering rule learning algorithms may be viewed as a technique for using loc...
Large language models (LLMs) have shown incredible performance in completing various real-world task...
This paper analyses the complexity of rule selection for supervised learning in distributed scenario...
The two dominant schemes for rule-learning, C4.5 and RIPPER, both operate in two stages. First they ...
Automated prediction systems based on machine learning (ML) are employed in practical applications w...
AbstractKnowledge representation and extraction are very important tasks in data mining. In this wor...
wcohenresearchattcom Many existing rule learning systems are computationally expensive on large nois...
In this article we show that there is a strong connection between decision tree learning and local p...
Today's rule mining algorithms all use greedy approaches to generate rules representing the kno...
Achieving at least some level of explainability requires complex analyses for many machine learning ...
Learning easily understandable decision rules from examples is one of the classic problems in machin...
To fill the increasing demand for explanations of decisions made by automated prediction systems, ma...
Inductive rule learning is arguably among the most traditional paradigms in machine learning. Althou...