Visualizing Conceptual Lattice of Textual Data Using ToscanaJ
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Abstract
Clustering is a technique which divides the data into objects of similar type. The term
cluster analysis encompasses a number of different algorithms and methods for grouping
objects of similar kind into respective categories. Cluster analysis is an exploratory data
analysis tool which aims at sorting different objects into groups in a way that the degree
of association between two objects is maximal if they belong to the same group and
minimal otherwise. Clustering can be done on the basis of data or concepts. Concepts are
necessary for representing human knowledge therefore it is beneficial to use Conceptual
Clustering. Conceptual clustering is based on the concept that is it clusters the data on the
basis of concept and formal context. It is distinguished from ordinary data clustering by
generating a concept description. A system that store, process and present information
using concept-oriented representation is called Conceptual Information system. Formal
concept analysis uses the CIS for conceptual clustering. Formal Concept Analysis (FCA)
is a technique that explains how the document clusters are clustered conceptually. FCA
was introduced for modeling the concept in terms of lattice theory. It is a method for data
analysis, knowledge representation and information management, representing the data in
form of concept lattice after clustering. ToscanJ, a Java based package for creating CIS
and viewing the different concept lattice is the tool used for implementing FCA.
