Objects or structures that are regular take uniform dimensions. Based on the concepts of regular models, our previous research work has developed a system of a regular ontology that models learning structures in a multiagent system for uniform pre-assessments in a learning environment. This regular ontology has led to the modelling of a classified rules learning algorithm that predicts the actual number of rules needed for inductive learning processes and decision making in a multiagent system. But not all processes or models are regular. Thus this paper presents a system of polynomial equation that can estimate and predict the required number of rules of a non-regular ontology model given some defined parameters
Classifier systems are highly parallel, rule-based learning systems which are designed to continuous...
Due to the vast and rapid increase in the size of data, data mining has been an increasingly importa...
In the field of autonomous driving a lot of tasks which were solved by humans must be solved by algo...
To model support for human learning, rules (i.e. triggering event-conditions-actions) can be classi...
We describe an automatic algorithm able to learn university courses ontologies from experimental dat...
In this paper, we propose a method for learning ontologies used to model a domain in the field of in...
In the field of machine learning, methods for learning from single-table data have received much mor...
Student modelling and agent classified rules learning as applied in the development of the intellig...
Capturing word meaning is one of the challenges of natural language processing (NLP). Formal models ...
International audienceOur work is related to the general problem of constructing predictions for dec...
This paper proposes a unified approach to learning from constraints, which integrates the ability of...
This research project addresses the problem of statistical predicate invention in machine learning. ...
An ontology is a shared conceptualization of some problem domain, usually consisting of concepts, in...
Knowledge available through Semantic Web standards can easily be missing, generally because of the a...
The Web of Data, which is one of the dimensions of the Semantic Web (SW), represents a tremendous so...
Classifier systems are highly parallel, rule-based learning systems which are designed to continuous...
Due to the vast and rapid increase in the size of data, data mining has been an increasingly importa...
In the field of autonomous driving a lot of tasks which were solved by humans must be solved by algo...
To model support for human learning, rules (i.e. triggering event-conditions-actions) can be classi...
We describe an automatic algorithm able to learn university courses ontologies from experimental dat...
In this paper, we propose a method for learning ontologies used to model a domain in the field of in...
In the field of machine learning, methods for learning from single-table data have received much mor...
Student modelling and agent classified rules learning as applied in the development of the intellig...
Capturing word meaning is one of the challenges of natural language processing (NLP). Formal models ...
International audienceOur work is related to the general problem of constructing predictions for dec...
This paper proposes a unified approach to learning from constraints, which integrates the ability of...
This research project addresses the problem of statistical predicate invention in machine learning. ...
An ontology is a shared conceptualization of some problem domain, usually consisting of concepts, in...
Knowledge available through Semantic Web standards can easily be missing, generally because of the a...
The Web of Data, which is one of the dimensions of the Semantic Web (SW), represents a tremendous so...
Classifier systems are highly parallel, rule-based learning systems which are designed to continuous...
Due to the vast and rapid increase in the size of data, data mining has been an increasingly importa...
In the field of autonomous driving a lot of tasks which were solved by humans must be solved by algo...