Mathematics (Mar 2023)

Attributes Reduction on SE-ISI Concept Lattice for an Incomplete Context Using Object Ranking

  • B. Srirekha,
  • Shakeela Sathish,
  • R. Narmada Devi,
  • Miroslav Mahdal,
  • Robert Cep,
  • K. Elavarasan

DOI
https://doi.org/10.3390/math11071585
Journal volume & issue
Vol. 11, no. 7
p. 1585

Abstract

Read online

The formal concept of lattice plays a vital role in knowledge discovery. Reduction of the attribute has many applications in machine learning technology and data mining fields. In this paper, we introduce an object ranking concept to define a consistency set and the reduction of the attributes by structural features. An incomplete information system works on the three-way concepts using the SE-ISI Context. The granular was emphasized with join (meet) irreducible sets using the object ranking concepts. A dual operator is defined based on the object ranking concepts and its properties and conditions are verified. Hence, this elaborates on the four kinds of reduction of the attributes. The ordered pairs give the knowledge of the attributes that deal with the interval set of both the approximation of rough set theory concerning the objects. Therefore, the relationship between four kinds of reduction of the attribute was appropriate to access the consistency set using the object ranking concepts by some of the theorems and examples.

Keywords