Abstract
Recent work has used artificial language experiments to argue that hierarchical representations drive learners’ expectations about word order in complex noun phrases like these two green cars (Culbertson & Adger 2014; Martin, Ratitamkul, et al. 2019). When trained on a novel language in which individual modifiers come after the Noun, English speakers overwhelmingly assume that multiple nominal modifiers should be ordered such that Adjectives come closest to the Noun, then Numerals, then Demonstratives (i.e., N-Adj-Num-Dem or some subset thereof). This order transparently reflects a constituent structure in which Adjectives combine with Nouns to the exclusion of Numerals and Demonstratives, and Numerals combine with Noun+Adjective units to the exclusion of Demonstratives. This structure has also been claimed to derive frequency asymmetries in complex noun phrase order across languages (e.g., Cinque 2005). However, we show that features of the methodology used in these experiments potentially encourage participants to use a particular metalinguistic strategy that could yield this outcome without implicating constituency structure. Here, we use a more naturalistic artificial language learning task to investigate whether the preference for hierarchy-respecting orders is still found when participants do not use this strategy. We find that the preference still holds, and, moreover, as Culbertson & Adger (2014) speculate, that its strength reflects structural distance between modifiers. It is strongest when ordering Adjectives relative to Demonstratives, and weaker when ordering Numerals relative to Adjectives or Demonstratives relative to Numerals. Our results provide the strongest evidence yet for the psychological influence of hierarchical structure on word order preferences during learning.
Highlights
It has long been argued that hierarchical structure is a key feature of human language (e.g., Chomsky 1965; Gleitman & Newport 1995)
In the noun phrase, such representations have been argued to have a universal form, in which Adjectives are structurally closest to the Noun, Numerals, Demonstratives (Cinque 2005; Abels & Neeleman 2012)
Building on previous research using artificial language learning experiments, here we aimed to provide robust experimental evidence that human learners are biased in favour of such transparent mappings
Summary
It has long been argued that hierarchical structure is a key feature of human language (e.g., Chomsky 1965; Gleitman & Newport 1995). It was shown that when the input under-determines the word order of a language, learners generalise in a way that conforms to a hierarchical representation of the noun phrase rather than the linear order of their native language. Those experiments, suffer from a potentially serious methodological issue. We turn a critical eye on those previous results, resolving a problematic feature of the design of those experiments, and providing new evidence for the relationship between hierarchical structure, meaning, and linear order in the noun phrase
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