从人机学习中的统计模式匹配中分离抽象。

IF 4.3 2区 生物学
PLoS Computational Biology Pub Date : 2023-08-25 eCollection Date: 2023-08-01 DOI:10.1371/journal.pcbi.1011316
Sreejan Kumar, Ishita Dasgupta, Nathaniel D Daw, Jonathan D Cohen, Thomas L Griffiths
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引用次数: 0

摘要

获得抽象知识的能力是人类智力的标志,许多人认为这是人类与神经网络模型之间的核心区别之一。通过元学习,可以赋予代理对抽象的归纳偏见,在元学习中,他们被训练在共享一些可以学习和应用的抽象结构的任务分布上。然而,由于神经网络很难解释,因此很难判断代理是否已经学习了底层抽象,或者学习了该抽象的统计模式。在这项工作中,我们比较了人类和智能体在元强化学习范式中的表现,在该范式中,任务是从抽象规则生成的。我们定义了一种新的方法来构建“任务元模型”,该方法与抽象任务的统计数据密切匹配,但使用不同的底层生成过程,并评估抽象任务和元模型任务的性能。我们发现,人类在抽象任务上的表现比元模型任务好,而常见的神经网络架构在抽象任务中的表现通常比匹配的元模型差。这项工作为表征人类和机器学习之间的差异提供了基础,可用于未来开发具有更类似人类行为的机器的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Disentangling Abstraction from Statistical Pattern Matching in Human and Machine Learning.

Disentangling Abstraction from Statistical Pattern Matching in Human and Machine Learning.

Disentangling Abstraction from Statistical Pattern Matching in Human and Machine Learning.

Disentangling Abstraction from Statistical Pattern Matching in Human and Machine Learning.

The ability to acquire abstract knowledge is a hallmark of human intelligence and is believed by many to be one of the core differences between humans and neural network models. Agents can be endowed with an inductive bias towards abstraction through meta-learning, where they are trained on a distribution of tasks that share some abstract structure that can be learned and applied. However, because neural networks are hard to interpret, it can be difficult to tell whether agents have learned the underlying abstraction, or alternatively statistical patterns that are characteristic of that abstraction. In this work, we compare the performance of humans and agents in a meta-reinforcement learning paradigm in which tasks are generated from abstract rules. We define a novel methodology for building "task metamers" that closely match the statistics of the abstract tasks but use a different underlying generative process, and evaluate performance on both abstract and metamer tasks. We find that humans perform better at abstract tasks than metamer tasks whereas common neural network architectures typically perform worse on the abstract tasks than the matched metamers. This work provides a foundation for characterizing differences between humans and machine learning that can be used in future work towards developing machines with more human-like behavior.

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来源期刊
PLoS Computational Biology
PLoS Computational Biology 生物-生化研究方法
CiteScore
7.10
自引率
4.70%
发文量
820
期刊介绍: PLOS Computational Biology features works of exceptional significance that further our understanding of living systems at all scales—from molecules and cells, to patient populations and ecosystems—through the application of computational methods. Readers include life and computational scientists, who can take the important findings presented here to the next level of discovery. Research articles must be declared as belonging to a relevant section. More information about the sections can be found in the submission guidelines. Research articles should model aspects of biological systems, demonstrate both methodological and scientific novelty, and provide profound new biological insights. Generally, reliability and significance of biological discovery through computation should be validated and enriched by experimental studies. Inclusion of experimental validation is not required for publication, but should be referenced where possible. Inclusion of experimental validation of a modest biological discovery through computation does not render a manuscript suitable for PLOS Computational Biology. Research articles specifically designated as Methods papers should describe outstanding methods of exceptional importance that have been shown, or have the promise to provide new biological insights. The method must already be widely adopted, or have the promise of wide adoption by a broad community of users. Enhancements to existing published methods will only be considered if those enhancements bring exceptional new capabilities.
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