In view of the tremendous production of computer data worldwide, there is a strong need for new powerful tools that can automatically generate useful knowledge from a variety of data, and present it in human-oriented forms. In efforts to satisfy this need, researchers have been exploring ideas and methods developed in machine learning, statistical data analysis, data mining, text mining, data visualization, pattern recognition, etc. The first part of this paper is a compendium of ideas on the applicability of symbolic machine learning and logical data analysis methods toward this goal. The second part outlines a multistrategy methodology for an emerging research direction, called knowledge mining, by which we mean the derivation of high-lev...
International audienceIt is a well known fact that the data mining process can generate thousands of...
Knowledge representation and reasoning (KR) stems from a deep tradition in logic. In particular, it ...
In the last years, the class of machine learning algorithms were extended with new techniques as for...
An enormous proliferation of databases in almost every area of human endeavor has created a great de...
There are many approaches to data mining and knowledge discovery (DM&KD), including neural networks,...
The development of knowledge engineering and, within its framework, of data mining or knowledge mini...
International audienceKnowledge Discovery in Databases (KDD) and especially pattern mining can be in...
Introduction The purpose of this research was to produce a machine learning system that can take ad...
This study investigates an approach of knowledge discovery and data mining in insufficient databases...
A common practice in modern explainable AI is to post-hoc explain black-box machine learning (ML) pr...
The progress of data mining technology and large public popularity establish a need for a comprehens...
For centuries, the process of formulating new knowledge from observations has driven scientific disc...
Abstract: In this overview paper, I will attempt to identify and describe some of the common threads...
AbstractData mining is defined as the computational process of analyzing large amounts of data in or...
53 pages ; Kay R. Amel is the pen name of the working group “Apprentissage et Raisonnement” of the G...
International audienceIt is a well known fact that the data mining process can generate thousands of...
Knowledge representation and reasoning (KR) stems from a deep tradition in logic. In particular, it ...
In the last years, the class of machine learning algorithms were extended with new techniques as for...
An enormous proliferation of databases in almost every area of human endeavor has created a great de...
There are many approaches to data mining and knowledge discovery (DM&KD), including neural networks,...
The development of knowledge engineering and, within its framework, of data mining or knowledge mini...
International audienceKnowledge Discovery in Databases (KDD) and especially pattern mining can be in...
Introduction The purpose of this research was to produce a machine learning system that can take ad...
This study investigates an approach of knowledge discovery and data mining in insufficient databases...
A common practice in modern explainable AI is to post-hoc explain black-box machine learning (ML) pr...
The progress of data mining technology and large public popularity establish a need for a comprehens...
For centuries, the process of formulating new knowledge from observations has driven scientific disc...
Abstract: In this overview paper, I will attempt to identify and describe some of the common threads...
AbstractData mining is defined as the computational process of analyzing large amounts of data in or...
53 pages ; Kay R. Amel is the pen name of the working group “Apprentissage et Raisonnement” of the G...
International audienceIt is a well known fact that the data mining process can generate thousands of...
Knowledge representation and reasoning (KR) stems from a deep tradition in logic. In particular, it ...
In the last years, the class of machine learning algorithms were extended with new techniques as for...