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Advancing Generalization Across a Variety of Abstract Visual Reasoning Tasks

19 May 2025
Mikołaj Małkiński
Jacek Mańdziuk
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Abstract

The abstract visual reasoning (AVR) domain presents a diverse suite of analogy-based tasks devoted to studying model generalization. Recent years have brought dynamic progress in the field, particularly in i.i.d. scenarios, in which models are trained and evaluated on the same data distributions. Nevertheless, o.o.d. setups that assess model generalization to new test distributions remain challenging even for the most recent models. To advance generalization in AVR tasks, we present the Pathways of Normalized Group Convolution model (PoNG), a novel neural architecture that features group convolution, normalization, and a parallel design. We consider a wide set of AVR benchmarks, including Raven's Progressive Matrices and visual analogy problems with both synthetic and real-world images. The experiments demonstrate strong generalization capabilities of the proposed model, which in several settings outperforms the existing literature methods.

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@article{małkiński2025_2505.13391,
  title={ Advancing Generalization Across a Variety of Abstract Visual Reasoning Tasks },
  author={ Mikołaj Małkiński and Jacek Mańdziuk },
  journal={arXiv preprint arXiv:2505.13391},
  year={ 2025 }
}
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