as soon as is submitted to ZB.
Building, reusing, and generalizing abstract representations from concrete sequences.
In: (13th International Conference on Learning Representations Iclr 2025, 24 - 28 April 2025, Singapur). 2025. 95534-95557 (13th International Conference on Learning Representations Iclr 2025)
Humans excel at learning abstract patterns across different sequences, filtering out irrelevant details, and transferring these generalized concepts to new sequences. In contrast, many sequence learning models lack the ability to abstract, which leads to memory inefficiency and poor transfer. We introduce a non-parametric hierarchical variable learning model (HVM) that learns chunks from sequences and abstracts contextually similar chunks as variables. HVM efficiently organizes memory while uncovering abstractions, leading to compact sequence representations. When learning on language datasets such as babyLM, HVM learns a more efficient dictionary than standard compression algorithms such as Lempel-Ziv. In a sequence recall task requiring the acquisition and transfer of variables embedded in sequences, we demonstrate HVM's sequence likelihood correlates with human recall times. In contrast, large language models (LLMs) struggle to transfer abstract variables as effectively as humans. From HVM's adjustable layer of abstraction, we demonstrate that the model realizes a precise trade-off between compression and generalization. Our work offers a cognitive model that captures the learning and transfer of abstract representations in human cognition and differentiates itself from LLMs.
Annotations
Special Publikation
Hide on homepage
Publication type
Article: Conference contribution
Language
english
Publication Year
2025
HGF-reported in Year
2025
ISSN (print) / ISBN
[9798331320850]
Conference Title
13th International Conference on Learning Representations Iclr 2025
Conference Date
24 - 28 April 2025
Conference Location
Singapur
Quellenangaben
Pages: 95534-95557
POF-Topic(s)
30205 - Bioengineering and Digital Health
Research field(s)
Enabling and Novel Technologies
PSP Element(s)
G-540011-001
G-530008-001
G-530008-001
Scopus ID
105010243227
Erfassungsdatum
2025-07-17