CLOSURE: Assessing Systematic Generalization of CLEVR Models

12/12/2019
by   Dzmitry Bahdanau, et al.
5

The CLEVR dataset of natural-looking questions about 3D-rendered scenes has recently received much attention from the research community. A number of models have been proposed for this task, many of which achieved very high accuracies of around 97-99 generalization of such models is, that is to which extent they are capable of handling novel combinations of known linguistic constructs. To this end, we test models' understanding of referring expressions based on matching object properties (such as e.g. "the object that is the same size as the red ball") in novel contexts. Our experiments on the thereby constructed CLOSURE benchmark show that state-of-the-art models often do not exhibit systematicity after being trained on CLEVR. Surprisingly, we find that an explicitly compositional Neural Module Network model also generalizes badly on CLOSURE, even when it has access to the ground-truth programs at test time. We improve the NMN's systematic generalization by developing a novel Vector-NMN module architecture with vector-valued inputs and outputs. Lastly, we investigate the extent to which few-shot transfer learning can help models that are pretrained on CLEVR to adapt to CLOSURE. Our few-shot learning experiments contrast the adaptation behavior of the models with intermediate discrete programs with that of the end-to-end continuous models.

READ FULL TEXT

page 1

page 7

research
07/01/2020

Latent Compositional Representations Improve Systematic Generalization in Grounded Question Answering

Answering questions that involve multi-step reasoning requires decomposi...
research
01/27/2022

Transformer Module Networks for Systematic Generalization in Visual Question Answering

Transformer-based models achieve great performance on Visual Question An...
research
11/30/2018

Systematic Generalization: What Is Required and Can It Be Learned?

Numerous models for grounded language understanding have been recently p...
research
05/03/2021

Iterated learning for emergent systematicity in VQA

Although neural module networks have an architectural bias towards compo...
research
02/08/2023

Gestalt-Guided Image Understanding for Few-Shot Learning

Due to the scarcity of available data, deep learning does not perform we...
research
01/03/2019

CLEVR-Ref+: Diagnosing Visual Reasoning with Referring Expressions

Referring object detection and referring image segmentation are importan...
research
07/04/2023

On Conditional and Compositional Language Model Differentiable Prompting

Prompts have been shown to be an effective method to adapt a frozen Pret...

Please sign up or login with your details

Forgot password? Click here to reset