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Poletiek, F. H., Monaghan, P., van de Velde, M., & Bocanegra, B. R. (2021). The semantics-syntax interface: Learning grammatical categories and hierarchical syntactic structure through semantics. Journal of Experimental Psychology: Learning, Memory, and Cognition, 47(7), 1141-1155. doi:10.1037/xlm0001044.
Abstract
Language is infinitely productive because syntax defines dependencies between grammatical categories of words and constituents, so there is interchangeability of these words and constituents within syntactic structures. Previous laboratory-based studies of language learning have shown that complex language structures like hierarchical center embeddings (HCE) are very hard to learn, but these studies tend to simplify the language learning task, omitting semantics and focusing either on learning dependencies between individual words or on acquiring the category membership of those words. We tested whether categories of words and dependencies between these categories and between constituents, could be learned simultaneously in an artificial language with HCE’s, when accompanied by scenes illustrating the sentence’s intended meaning. Across four experiments, we showed that participants were able to learn the HCE language varying words across categories and category-dependencies, and constituents across constituents-dependencies. They also were able to generalize the learned structure to novel sentences and novel scenes that they had not previously experienced. This simultaneous learning resulting in a productive complex language system, may be a consequence of grounding complex syntax acquisition in semantics. -
Lai, J., & Poletiek, F. H. (2010). The impact of starting small on the learnability of recursion. In S. Ohlsson, & R. Catrambone (
Eds. ), Proceedings of the 32rd Annual Conference of the Cognitive Science Society (CogSci 2010) (pp. 1387-1392). Austin, TX, USA: Cognitive Science Society. -
Van den Bos, E., & Poletiek, F. H. (2010). Structural selection in implicit learning of artificial grammars. Psychological Research-Psychologische Forschung, 74(2), 138-151. doi:10.1007/s00426-009-0227-1.
Abstract
In the contextual cueing paradigm, Endo and Takeda (in Percept Psychophys 66:293–302, 2004) provided evidence that implicit learning involves selection of the aspect of a structure that is most useful to one’s task. The present study attempted to replicate this finding in artificial grammar learning to investigate whether or not implicit learning commonly involves such a selection. Participants in Experiment 1 were presented with an induction task that could be facilitated by several characteristics of the exemplars. For some participants, those characteristics included a perfectly predictive feature. The results suggested that the aspect of the structure that was most useful to the induction task was selected and learned implicitly. Experiment 2 provided evidence that, although salience affected participants’ awareness of the perfectly predictive feature, selection for implicit learning was mainly based on usefulness.Additional information
Supplementary material -
Poletiek, F. H., & Van Schijndel, T. J. P. (2009). Stimulus set size and statistical coverage of the grammar in artificial grammar learning. Psychonomic Bulletin & Review, 16(6), 1058-1064. doi:10.3758/PBR.16.6.1058.
Abstract
Adults and children acquire knowledge of the structure of their environment on the basis of repeated exposure to samples of structured stimuli. In the study of inductive learning, a straightforward issue is how much sample information is needed to learn the structure. The present study distinguishes between two measures for the amount of information in the sample: set size and the extent to which the set of exemplars statistically covers the underlying structure. In an artificial grammar learning experiment, learning was affected by the sample’s statistical coverage of the grammar, but not by its mere size. Our result suggests an alternative explanation of the set size effects on learning found in previous studies (McAndrews & Moscovitch, 1985; Meulemans & Van der Linden, 1997), because, as we argue, set size was confounded with statistical coverage in these studies. nt]mis|This research was supported by a grant from the Netherlands Organization for Scientific Research. We thank Jarry Porsius for his help with the data analyses. -
Poletiek, F. H. (2009). Popper's Severity of Test as an intuitive probabilistic model of hypothesis testing. Behavioral and Brain Sciences, 32(1), 99-100. doi:10.1017/S0140525X09000454.
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Poletiek, F. H., & Wolters, G. (2009). What is learned about fragments in artificial grammar learning? A transitional probabilities approach. Quarterly Journal of Experimental Psychology, 62(5), 868-876. doi:10.1080/17470210802511188.
Abstract
Learning local regularities in sequentially structured materials is typically assumed to be based on encoding of the frequencies of these regularities. We explore the view that transitional probabilities between elements of chunks, rather than frequencies of chunks, may be the primary factor in artificial grammar learning (AGL). The transitional probability model (TPM) that we propose is argued to provide an adaptive and parsimonious strategy for encoding local regularities in order to induce sequential structure from an input set of exemplars of the grammar. In a variant of the AGL procedure, in which participants estimated the frequencies of bigrams occurring in a set of exemplars they had been exposed to previously, participants were shown to be more sensitive to local transitional probability information than to mere pattern frequencies.
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