TY - GEN
T1 - Hierarchical learning of grids of microtopics
AU - Jojic, Nebojsa
AU - Perina, Alessandro
AU - Kim, Dongwoo
PY - 2016
Y1 - 2016
N2 - The counting grid is a grid of microtopics, sparse word/feature distributions. The generativemodel associated with the grid does not use these microtopics individually, but in predefined groups which can only be (ad)mixed as such. Each allowed group corresponds to one of all possible overlapping rectangular windows into the grid. The capacity of the model is controlled by the ratio of the grid size and the window size. 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.
AB - The counting grid is a grid of microtopics, sparse word/feature distributions. The generativemodel associated with the grid does not use these microtopics individually, but in predefined groups which can only be (ad)mixed as such. Each allowed group corresponds to one of all possible overlapping rectangular windows into the grid. The capacity of the model is controlled by the ratio of the grid size and the window size. 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.
UR - http://www.scopus.com/inward/record.url?scp=85001908087&partnerID=8YFLogxK
M3 - Conference contribution
T3 - 32nd Conference on Uncertainty in Artificial Intelligence 2016, UAI 2016
SP - 299
EP - 308
BT - 32nd Conference on Uncertainty in Artificial Intelligence 2016, UAI 2016
A2 - Janzing, Dominik
A2 - Ihler, Alexander
PB - Association For Uncertainty in Artificial Intelligence (AUAI)
T2 - 32nd Conference on Uncertainty in Artificial Intelligence 2016, UAI 2016
Y2 - 25 June 2016 through 29 June 2016
ER -