Computational models can distinguish the contribution from different mechanisms to familiarity recognition

IF 2.4 3区 医学 Q3 NEUROSCIENCES
Hippocampus Pub Date : 2023-11-20 DOI:10.1002/hipo.23588
John Read, Emma Delhaye, Jacques Sougné
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引用次数: 0

Abstract

Familiarity is the strange feeling of knowing that something has already been seen in our past. Over the past decades, several attempts have been made to model familiarity using artificial neural networks. Recently, two learning algorithms successfully reproduced the functioning of the perirhinal cortex, a key structure involved during familiarity: Hebbian and anti-Hebbian learning. However, performance of these learning rules is very different from one to another thus raising the question of their complementarity. In this work, we designed two distinct computational models that combined Deep Learning and a Hebbian learning rule to reproduce familiarity on natural images, the Hebbian model and the anti-Hebbian model, respectively. We compared the performance of both models during different simulations to highlight the inner functioning of both learning rules. We showed that the anti-Hebbian model fits human behavioral data whereas the Hebbian model fails to fit the data under large training set sizes. Besides, we observed that only our Hebbian model is highly sensitive to homogeneity between images. Taken together, we interpreted these results considering the distinction between absolute and relative familiarity. With our framework, we proposed a novel way to distinguish the contribution of these familiarity mechanisms to the overall feeling of familiarity. By viewing them as complementary, our two models allow us to make new testable predictions that could be of interest to shed light on the familiarity phenomenon.

计算模型可以区分不同机制对熟悉度识别的贡献。
熟悉是一种奇怪的感觉,知道我们过去已经见过的东西。在过去的几十年里,人们尝试用人工神经网络来模拟熟悉度。最近,两种学习算法成功地复制了周围皮层的功能,这是熟悉过程中涉及的关键结构:Hebbian和anti-Hebbian学习。然而,这些学习规则的性能彼此之间非常不同,从而提出了它们的互补性问题。在这项工作中,我们设计了两个不同的计算模型,分别是Hebbian模型和反Hebbian模型,它们结合了深度学习和Hebbian学习规则来重现自然图像上的熟悉度。我们比较了两种模型在不同模拟中的性能,以突出两种学习规则的内部功能。我们证明了反Hebbian模型适合人类行为数据,而Hebbian模型在大的训练集规模下无法拟合数据。此外,我们观察到只有我们的Hebbian模型对图像之间的同质性高度敏感。综上所述,我们考虑到绝对熟悉度和相对熟悉度之间的区别来解释这些结果。通过我们的框架,我们提出了一种新的方法来区分这些熟悉机制对整体熟悉感的贡献。通过将它们看作是互补的,我们的两个模型允许我们做出新的可测试的预测,这些预测可能会对揭示熟悉现象感兴趣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Hippocampus
Hippocampus 医学-神经科学
CiteScore
5.80
自引率
5.70%
发文量
79
审稿时长
3-8 weeks
期刊介绍: Hippocampus provides a forum for the exchange of current information between investigators interested in the neurobiology of the hippocampal formation and related structures. While the relationships of submitted papers to the hippocampal formation will be evaluated liberally, the substance of appropriate papers should deal with the hippocampal formation per se or with the interaction between the hippocampal formation and other brain regions. The scope of Hippocampus is wide: single and multidisciplinary experimental studies from all fields of basic science, theoretical papers, papers dealing with hippocampal preparations as models for understanding the central nervous system, and clinical studies will be considered for publication. The Editor especially encourages the submission of papers that contribute to a functional understanding of the hippocampal formation.
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