Abstract:
Indexing plays a vital role in Information Retrieval. With the availability of huge
volume of information, it has become necessary to index the information in such
a way to make easier for the end users to nd the information they want e -
ciently and accurately. Keyword-based indexing uses words as indexing terms. It
is not capable of capturing the implicit relation among terms or the semantics of
the words in the document. To eliminate this limitation, ontology-based indexing
came into existence, which allows semantic based indexing to solve complex and
indirect user queries. Ontologies are used for document indexing which allows
semantic based information retrieval. Existing ontologies or the ones constructed
from scratch are used presently for indexing. Constructing ontologies from scratch
is a labor-intensive task and requires extensive domain knowledge whereas use of an
existing ontology may leave some important concepts in documents un-annotated.
Using multiple ontologies can overcome the problem of missing out concepts to
a great extent, but it is di cult to manage (changes in ontologies over time by
their developers) multiple ontologies and ontology heterogeneity also arises due to
ontologies constructed by di erent ontology developers. One possible solution to
managing multiple ontologies and build from scratch is to use modular ontologies
for indexing. Modular ontologies are built in modular manner by combining modules
from multiple relevant ontologies. Ontology heterogeneity also arises during
modular ontology construction because multiple ontologies are being dealt with,
during this process. Ontologies need to be aligned before using them for modular
ontology construction. The existing approaches for ontology alignment compare
all the concepts of each ontology to be aligned, hence not optimized in terms of
time and search space utilization. A new indexing technique is proposed based on
modular ontology. An e cient ontology alignment technique is proposed to solve
the heterogeneity problem during the construction of modular ontology. Results
are satisfactory as Precision and Recall are improved by (8%) and (10%) respectively.
The value of Pearsons Correlation Coe cient for degree of similarity, time,
search space requirement, precision and recall are close to 1 which shows that
the results are signi cant. Further research can be carried out for using modular
ontology based indexing technique for Multimedia Information Retrieval and
Bio-Medical information retrieval.