Graphical Analysis on Text Mining Unstructured Data Using D-Matrix

Main Article Content

Sneha P. Mendhe, Kapil N. Hande

Abstract

Fault dependency (D-matrix) is used as a diagnostic model that identifies the fault system data and its causal relationship at the hierarchical system-level. It consists of dependencies and relationship between identified failure modes and symptoms related to a system. Constructing such D-matrix fault detection model is time overwhelming task .A system is proposed that describes associate ontology based text mining on unstructured data using D-matrix for automatically constructing D-matrix by mining many repair verbatim text data (typically written in unstructured text) collected throughout the identification process. And also graphical model generation for each generated D-matrix. Initially we construct fault diagnosis ontology and then text mining techniques are applied to spot dependencies among failure modes and identified symptom. D-matrix is represented in graph so analysis gets easier and faulty parts becomes simply detectable. The proposed methodology are implemented as a prototype tool and validated by using real-life information collected from the automobile domain.

Article Details

How to Cite
, S. P. M. K. N. H. (2017). Graphical Analysis on Text Mining Unstructured Data Using D-Matrix. International Journal on Recent and Innovation Trends in Computing and Communication, 5(6), 1412 –. https://doi.org/10.17762/ijritcc.v5i6.965
Section
Articles