1 research outputs found
Hierarchical learning of grids of microtopics
The counting grid is a grid of microtopics, sparse word/feature
distributions. The generative model associated with the grid does not use these
microtopics individually. Rather, it groups them in overlapping rectangular
windows and uses these grouped microtopics as either mixture or admixture
components. This paper builds upon the basic counting grid model and it shows
that hierarchical reasoning helps avoid bad local minima, produces better
classification accuracy and, most interestingly, allows for extraction of large
numbers of coherent microtopics even from small datasets. We evaluate this in
terms of consistency, diversity and clarity of the indexed content, as well as
in a user study on word intrusion tasks. We demonstrate that these models work
well as a technique for embedding raw images and discuss interesting parallels
between hierarchical CG models and other deep architectures.Comment: To Appear in Uncertainty in Artificial Intelligence - UAI 201