What Artificial Neural Networks Can Tell Us About Human Language Acquisition
Alex Warstadt, Samuel R. Bowman

TL;DR
This paper discusses how neural network models can shed light on human language acquisition by addressing differences in learning environments and proposing methods to make models more comparable to human learners.
Contribution
It highlights the importance of developing neural models trained under human-like conditions to better understand language learning and test theories about innate knowledge.
Findings
Current neural models outperform humans due to data advantages.
Models deprived of unfair advantages show sub-human grammatical abilities.
Multimodal and multi-agent inputs may improve model learning efficiency.
Abstract
Rapid progress in machine learning for natural language processing has the potential to transform debates about how humans learn language. However, the learning environments and biases of current artificial learners and humans diverge in ways that weaken the impact of the evidence obtained from learning simulations. For example, today's most effective neural language models are trained on roughly one thousand times the amount of linguistic data available to a typical child. To increase the relevance of learnability results from computational models, we need to train model learners without significant advantages over humans. If an appropriate model successfully acquires some target linguistic knowledge, it can provide a proof of concept that the target is learnable in a hypothesized human learning scenario. Plausible model learners will enable us to carry out experimental manipulations…
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Taxonomy
TopicsNatural Language Processing Techniques · Topic Modeling · Speech and dialogue systems
MethodsTest
