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  1. Evaluating the Relative Importance of Wordhood Cues Using Statistical Learning.Elizabeth Pankratz, Simon Kirby & Jennifer Culbertson - 2024 - Cognitive Science 48 (3):e13429.
    Identifying wordlike units in language is typically done by applying a battery of criteria, though how to weight these criteria with respect to one another is currently unknown. We address this question by investigating whether certain criteria are also used as cues for learning an artificial language—if they are, then perhaps they can be relied on more as trustworthy top‐down diagnostics. The two criteria for grammatical wordhood that we consider are a unit's free mobility and its internal immutability. These criteria (...)
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  • Afterword: Tough Questions; Hard Problems; Incremental Progress.Kim Sterelny - 2020 - Topics in Cognitive Science 12 (2):766-783.
    In his profound discussion, Sterelny draws out common themes in the contributions to this topic: selective drivers in the coevolution of cognition and culture, the role of language in it, characteristics of cumulative cultural evolution, and issues of testability. He highlights the growing body of evidence for positive feedback mechanisms in cultural evolution, but also notes that progress is piecemeal, calling for more cross‐border work between cognitive science and research on cultural evolution.
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  • Input Complexity Affects Long-Term Retention of Statistically Learned Regularities in an Artificial Language Learning Task.Ethan Jost, Katherine Brill-Schuetz, Kara Morgan-Short & Morten H. Christiansen - 2019 - Frontiers in Human Neuroscience 13:478698.
    Statistical learning (SL) involving sensitivity to distributional regularities in the environment has been suggested to be an important factor in many aspects of cognition, including language. However, the degree to which statistically-learned information is retained over time is not well understood. To establish whether or not learners are able to preserve such regularities over time, we examined performance on an artificial second language learning task both immediately after training and also at a follow-up session 2 weeks later. Participants were exposed (...)
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  • From One Bilingual to the Next: An Iterated Learning Study on Language Evolution in Bilingual Societies.Pauline Palma, Sarah Lee, Vegas Hodgins & Debra Titone - 2023 - Cognitive Science 47 (5):e13289.
    Studies of language evolution in the lab have used the iterated learning paradigm to show how linguistic structure emerges through cultural transmission—repeated cycles of learning and use across generations of speakers. However, agent-based simulations suggest that prior biases crucially impact the outcome of cultural transmission. Here, we explored this notion through an iterated learning study of English-French bilingual adults (mostly sequential bilinguals dominant in English). Each participant learned two unstructured artificial languages in a counterbalanced fashion, one resembling English, another resembling (...)
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  • A Single Paradigm for Implicit and Statistical Learning.Padraic Monaghan, Christine Schoetensack & Patrick Rebuschat - 2019 - Topics in Cognitive Science 11 (3):536-554.
    This article focuses on the implicit statistical learning of words and syntax. Monaghan, Schoetensack and Rebuschat introduce a novel paradigm that combines theoretical and methodological insights from the two research traditions, implicit learning and statistical learning. Their cross‐situational learning paradigm has been used in the statistical learning literature, while their measures of awareness have widely been used in implicit learning research. They illustrate how the two literatures can be conjoined in a single paradigm to explore implicit statistical learning.
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  • Editors’ Review and Introduction: The Cultural Evolution of Cognition.Sieghard Beller, Andrea Bender & Fiona Jordan - 2020 - Topics in Cognitive Science 12 (2):644-653.
    Beller, Bender, & Jordan [Intro]. Which factors have triggered, constrained, or shaped the course of cognitive evolution is a question of key interest to cognitive science. The topic introduced here highlights the relevance of culture as a driving force in this process. It provides an overview of current empirical and theoretical work leading this field, and it investigates the potential for integrating multiple perspectives across several timescales and levels of analysis.
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  • The Role of Culture and Evolution for Human Cognition.Andrea Bender - 2020 - Topics in Cognitive Science 12 (4):1403-1420.
    Since the emergence of our species at least, natural selection based on genetic variation has been replaced by culture as the major driving force in human evolution. It has made us what we are today, by ratcheting up cultural innovations, promoting new cognitive skills, rewiring brain networks, and even shifting gene distributions. Adopting an evolutionary perspective can therefore be highly informative for cognitive science in several ways: It encourages us to ask grand questions about the origins and ramifications of our (...)
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