Publication | Open Access
Can neural networks acquire a structural bias from raw linguistic data?
29
Citations
23
References
2020
Year
Structured PredictionLlm Fine-tuningPsycholinguisticsStructural BiasMultilingual PretrainingLinear GeneralizationLanguage LearningRecurrent Neural NetworkNatural Language ProcessingSyntaxComputational LinguisticsGrammarLanguage StudiesNatural LanguageCognitive ScienceNlp TaskLanguage NetworkGrammar InductionStructural GeneralizationInnate BiasesRaw Linguistic DataLinguistics
We evaluate whether BERT, a widely used neural network for sentence processing, acquires an inductive bias towards forming structural generalizations through pretraining on raw data. We conduct four experiments testing its preference for structural vs. linear generalizations in different structure-dependent phenomena. We find that BERT makes a structural generalization in 3 out of 4 empirical domains---subject-auxiliary inversion, reflexive binding, and verb tense detection in embedded clauses---but makes a linear generalization when tested on NPI licensing. We argue that these results are the strongest evidence so far from artificial learners supporting the proposition that a structural bias can be acquired from raw data. If this conclusion is correct, it is tentative evidence that some linguistic universals can be acquired by learners without innate biases. However, the precise implications for human language acquisition are unclear, as humans learn language from significantly less data than BERT.
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