The paper presents and evaluates an approach based on Rough Set Theory, and some variants and extensions of this theory, to analyze phenomena related to Information Disorder. The main concepts and constructs of Rough Set Theory, such as lower and upper approximations of a target set, indiscernibility and neighborhood binary relations, are used to model and reason on groups of social media users and sets of information that circulate in the social media. Information theoretic measures, such as roughness and entropy, are used to evaluate two concepts, Complexity and Milestone, that have been borrowed by system theory and contextualized for Information Disorder. The novelty of the results presented in this paper relates to the adoption of Roug...
Abstract -Knowledge acquisition under uncertainty using rough set theory was first stated as a conce...
Rough set theory provides a useful mathematical foundation for developing automated computational sy...
Motivation Many real applications such as businesses and health generate large categorical datasets ...
The paper presents and evaluates an approach based on Rough Set Theory, and some variants and extens...
Searching for relevant information on the World Wide Web is often a laborious and frustrating task f...
AbstractRough set theory is a relatively new mathematical tool for use in computer applications in c...
Abstract—Rough set theory is a popular and powerful machine learning tool. It is especially suitable...
on the complement behavior of information gain, a new definition of information entropy is proposed ...
World Wide Web has become the largest pool of knowledge in terms of volume, but web users still cont...
The original rough set theory deals with precise and complete data, while real applications frequent...
Rough set theory is an effective approach to imprecision, vagueness, and uncertainty. This theory ov...
Rough set theory is a new method that deals with vagueness and uncertainty emphasized in decision ma...
Abstract: The rough set theory, which originated in the early 1980s, provides an alternative approac...
Abstract A class of more extensive information system which is said to be the generalized informatio...
Rough set philosophy is a significant methodology in the knowledge discovery of databases. In the pr...
Abstract -Knowledge acquisition under uncertainty using rough set theory was first stated as a conce...
Rough set theory provides a useful mathematical foundation for developing automated computational sy...
Motivation Many real applications such as businesses and health generate large categorical datasets ...
The paper presents and evaluates an approach based on Rough Set Theory, and some variants and extens...
Searching for relevant information on the World Wide Web is often a laborious and frustrating task f...
AbstractRough set theory is a relatively new mathematical tool for use in computer applications in c...
Abstract—Rough set theory is a popular and powerful machine learning tool. It is especially suitable...
on the complement behavior of information gain, a new definition of information entropy is proposed ...
World Wide Web has become the largest pool of knowledge in terms of volume, but web users still cont...
The original rough set theory deals with precise and complete data, while real applications frequent...
Rough set theory is an effective approach to imprecision, vagueness, and uncertainty. This theory ov...
Rough set theory is a new method that deals with vagueness and uncertainty emphasized in decision ma...
Abstract: The rough set theory, which originated in the early 1980s, provides an alternative approac...
Abstract A class of more extensive information system which is said to be the generalized informatio...
Rough set philosophy is a significant methodology in the knowledge discovery of databases. In the pr...
Abstract -Knowledge acquisition under uncertainty using rough set theory was first stated as a conce...
Rough set theory provides a useful mathematical foundation for developing automated computational sy...
Motivation Many real applications such as businesses and health generate large categorical datasets ...