Research on Knowledge Transfer in Software Engineering by Concept Lattice Isomorphic

Concept lattice has many applications, e.g., software engineering, knowledge discovery. And isomorphic judgment of concept lattice is important in various fields, for instance, ontology similarity measure. In this paper, we apply the isomorphic judgment algorithm of concept lattice in software engineering to transfer knowledge in different domains after analyzed the foundation of transfer learning. Followed, an example of transfer knowledge in software engineering was introduced, and it shows the efficiency of our method.

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