A Maximum Likelihood Framework for Integrating Taxonomies
Source:
20th Conference on Artificial Intelligence (AAAI) (2005)
Abstract:
Many approaches have been proposed for the problem of mapping classes
from a source taxonomy to classes in a master taxonomy. Most of these
techniques however ignore the hierarchical structure of the
taxonomies. Our approach exploits this structure to obtain a more
natural mapping between the classes. Furthermore, unlike previous
work, our technique also inserts source classes into appropriate
places of the master hierarchy creating new categories if needed. In
this paper, we propose a Maximum Likelihood based framework to
integrate classes from a source taxonomy into a master hierarchy.
We evaluate our approach on text and hyperspectral datasets.