TY - GEN
T1 - Probabilistic AND-OR attribute grouping for zero-shot learning
AU - Atzmon, Yuval
AU - Chechik, Gal
N1 - Publisher Copyright: © 2018 by Association For Uncertainty in Artificial Intelligence (AUAI) All rights reserved.
PY - 2018
Y1 - 2018
N2 - In zero-shot learning (ZSL), a classifier is trained to recognize visual classes without any image samples. Instead, it is given semantic information about the class, like a textual description or a set of attributes. Learning from attributes could benefit from explicitly modeling structure of the attribute space. Unfortunately, learning of general structure from empirical samples is hard with typical dataset sizes. Here we describe LAGO 1 , a probabilistic model designed to capture natural soft and-or relations across groups of attributes. We show how this model can be learned end-to-end with a deep attribute-detection model. The soft group structure can be learned from data jointly as part of the model, and can also readily incorporate prior knowledge about groups if available. The soft and-or structure succeeds to capture meaningful and predictive structures, improving the accuracy of zero-shot learning on two of three benchmarks. Finally, LAGO reveals a unified formulation over two ZSL approaches: DAP (Lampert et al, 2009) and ESZSL (Romera-Paredes & Torr, 2015). Interestingly, taking only one singleton group for each attribute, introduces a new soft-relaxation of DAP, that outperforms DAP by-40%.
AB - In zero-shot learning (ZSL), a classifier is trained to recognize visual classes without any image samples. Instead, it is given semantic information about the class, like a textual description or a set of attributes. Learning from attributes could benefit from explicitly modeling structure of the attribute space. Unfortunately, learning of general structure from empirical samples is hard with typical dataset sizes. Here we describe LAGO 1 , a probabilistic model designed to capture natural soft and-or relations across groups of attributes. We show how this model can be learned end-to-end with a deep attribute-detection model. The soft group structure can be learned from data jointly as part of the model, and can also readily incorporate prior knowledge about groups if available. The soft and-or structure succeeds to capture meaningful and predictive structures, improving the accuracy of zero-shot learning on two of three benchmarks. Finally, LAGO reveals a unified formulation over two ZSL approaches: DAP (Lampert et al, 2009) and ESZSL (Romera-Paredes & Torr, 2015). Interestingly, taking only one singleton group for each attribute, introduces a new soft-relaxation of DAP, that outperforms DAP by-40%.
UR - http://www.scopus.com/inward/record.url?scp=85059413279&partnerID=8YFLogxK
M3 - منشور من مؤتمر
T3 - 34th Conference on Uncertainty in Artificial Intelligence 2018, UAI 2018
SP - 382
EP - 392
BT - 34th Conference on Uncertainty in Artificial Intelligence 2018, UAI 2018
A2 - Globerson, Amir
A2 - Silva, Ricardo
PB - Association For Uncertainty in Artificial Intelligence (AUAI)
T2 - 34th Conference on Uncertainty in Artificial Intelligence 2018, UAI 2018
Y2 - 6 August 2018 through 10 August 2018
ER -