Publications

Displaying 1 - 7 of 7
  • Poletiek, F. H., & Lai, J. (2012). How semantic biases in simple adjacencies affect learning a complex structure with non-adjacencies in AGL: A statistical account. Philosophical Transactions of the Royal Society of London. Series B, Biological Sciences, 367, 2046 -2054. doi:10.1098/rstb.2012.0100.

    Abstract

    A major theoretical debate in language acquisition research regards the learnability of hierarchical structures. The artificial grammar learning methodology is increasingly influential in approaching this question. Studies using an artificial centre-embedded AnBn grammar without semantics draw conflicting conclusions. This study investigates the facilitating effect of distributional biases in simple AB adjacencies in the input sample—caused in natural languages, among others, by semantic biases—on learning a centre-embedded structure. A mathematical simulation of the linguistic input and the learning, comparing various distributional biases in AB pairs, suggests that strong distributional biases might help us to grasp the complex AnBn hierarchical structure in a later stage. This theoretical investigation might contribute to our understanding of how distributional features of the input—including those caused by semantic variation—help learning complex structures in natural languages.
  • Poletiek, F. H. (2008). Het probleem van escalerende beschuldigingen [Boekbespreking van Kindermishandeling door H. Crombag en den Hartog]. Maandblad voor Geestelijke Volksgezondheid, (2), 163-166.
  • Van den Bos, E., & Poletiek, F. H. (2008). Effects of grammar complexity on artificial grammar learning. Memory & Cognition, 36(6), 1122-1131. doi:10.3758/MC.36.6.1122.

    Abstract

    The present study identified two aspects of complexity that have been manipulated in the implicit learning literature and investigated how they affect implicit and explicit learning of artificial grammars. Ten finite state grammars were used to vary complexity. The results indicated that dependency length is more relevant to the complexity of a structure than is the number of associations that have to be learned. Although implicit learning led to better performance on a grammaticality judgment test than did explicit learning, it was negatively affected by increasing complexity: Performance decreased as there was an increase in the number of previous letters that had to be taken into account to determine whether or not the next letter was a grammatical continuation. In particular, the results suggested that implicit learning of higher order dependencies is hampered by the presence of longer dependencies. Knowledge of first-order dependencies was acquired regardless of complexity and learning mode.
  • Van den Bos, E., & Poletiek, F. H. (2008). Intentional artificial grammar learning: When does it work? European Journal of Cognitive Psychology, 20(4), 793-806. doi:10.1080/09541440701554474.

    Abstract

    Actively searching for the rules of an artificial grammar has often been shown to produce no more knowledge than memorising exemplars without knowing that they have been generated by a grammar. The present study investigated whether this ineffectiveness of intentional learning could be overcome by removing dual task demands and providing participants with more specific instructions. The results only showed a positive effect of learning intentionally for participants specifically instructed to find out which letters are allowed to follow each other. These participants were also unaffected by a salient feature. In contrast, for participants who did not know what kind of structure to expect, intentional learning was not more effective than incidental learning and knowledge acquisition was guided by salience.
  • Wolters, G., & Poletiek, F. H. (2008). Beslissen over aangiftes van seksueel misbruik bij kinderen. De Psycholoog, 43, 29-29.
  • Poletiek, F. H. (2000). De beoordelaar dobbelt niet - denkt hij. Nederlands Tijdschrift voor de Psychologie en haar Grensgebieden, 55(5), 246-249.
  • Poletiek, F. H., & Berndsen, M. (2000). Hypothesis testing as risk behaviour with regard to beliefs. Journal of Behavioral Decision Making, 13(1), 107-123. doi:10.1002/(SICI)1099-0771(200001/03)13:1<107:AID-BDM349>3.0.CO;2-P.

    Abstract

    In this paper hypothesis‐testing behaviour is compared to risk‐taking behaviour. It is proposed that choosing a suitable test for a given hypothesis requires making a preposterior analysis of two aspects of such a test: the probability of obtaining supporting evidence and the evidential value of this evidence. This consideration resembles the one a gambler makes when choosing among bets, each having a probability of winning and an amount to be won. A confirmatory testing strategy can be defined within this framework as a strategy directed at maximizing either the probability or the value of a confirming outcome. Previous theories on testing behaviour have focused on the human tendency to maximize the probability of a confirming outcome. In this paper, two experiments are presented in which participants tend to maximize the confirming value of the test outcome. Motivational factors enhance this tendency dependent on the context of the testing situation. Both this result and the framework are discussed in relation to other studies in the field of testing behaviour.

Share this page