Title
Probabilistic Neural-symbolic Models for Interpretable Visual Question Answering.
Abstract
We propose a new class of probabilistic neural-symbolic models, that have symbolic functional programs as a latent, stochastic variable. Instantiated in the context of visual question answering, our probabilistic formulation offers two key conceptual advantages over prior neural-symbolic models for VQA. Firstly, the programs generated by our model are more understandable while requiring lesser number of teaching examples. Secondly, we show that one can pose counterfactual scenarios to the model, to probe its beliefs on the programs that could lead to a specified answer given an image. Our results on the CLEVR and SHAPES datasets verify our hypotheses, showing that the model gets better program (and answer) prediction accuracy even in the low data regime, and allows one to probe the coherence and consistency of reasoning performed.
Year
Venue
Field
2019
arXiv: Learning
Question answering,Computer science,Artificial intelligence,Natural language processing,Probabilistic logic,Machine learning
DocType
Volume
Citations 
Journal
abs/1902.07864
1
PageRank 
References 
Authors
0.34
33
6
Name
Order
Citations
PageRank
Ramakrishna Vedantam151820.31
Karan Desai210.68
Stefan Lee323119.88
Marcus Rohrbach412.03
Dhruv Batra52142104.81
Devi Parikh62929132.01