Ontology learning refers to extracting conceptual knowledge from several sources and building an ontology from scratch, enriching,
or adapting an existing ontology. It uses methods from a diverse spectrum of fields such as Natural Language Processing, Artificial
Intelligence and Machine learning. However, a crucial challenging issue is to quantitatively evaluate the usefulness and accuracy
of both techniques and combinations of techniques, when applied to ontology learning. It is an interesting problem because
there are no published comparative studies. We are developing a flexible framework for ontology learning from text which provides
a cyclical process that involves the successive application of various NLP techniques and learning algorithms for concept
extraction and ontology modelling. The framework provides support to evaluate the usefulness and accuracy of different techniques
and possible combinations of techniques into specific processes, to deal with the above challenge. We show our framework’s
efficacy as a workbench for testing and evaluating concept identification. Our initial experiment supports our assumption
about the usefulness of our approach.