A Unified View of Abstract Visual Reasoning Problems
Miko{\l}aj Ma{\l}ki\'nski, Jacek Ma\'ndziuk

TL;DR
This paper proposes a unified image-based representation for diverse abstract visual reasoning tasks, enabling the development of universal models that outperform specialized methods and facilitate transfer learning.
Contribution
It introduces a unified problem formulation for AVR tasks as single images, allowing for universal models and improved transfer learning capabilities.
Findings
Unified representation challenges state-of-the-art models.
UMAVR outperforms existing methods in single-task learning.
Effective transfer and curriculum learning demonstrated.
Abstract
The field of Abstract Visual Reasoning (AVR) encompasses a wide range of problems, many of which are inspired by human IQ tests. The variety of AVR tasks has resulted in state-of-the-art AVR methods being task-specific approaches. Furthermore, contemporary methods consider each AVR problem instance not as a whole, but in the form of a set of individual panels with particular locations and roles (context vs. answer panels) pre-assigned according to the task-specific arrangements. While these highly specialized approaches have recently led to significant progress in solving particular AVR tasks, considering each task in isolation hinders the development of universal learning systems in this domain. In this paper, we introduce a unified view of AVR tasks, where each problem instance is rendered as a single image, with no a priori assumptions about the number of panels, their location, or…
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Taxonomy
TopicsConstraint Satisfaction and Optimization
MethodsSparse Evolutionary Training
