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Generalization in Artificial Language Learning: Modelling the Propensity to Generalize

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Figure

Table 1: Summary of the stimuli used in the de-picted experiments.
Figure 1: Percentage of choices for rule-words andclass-words, in the experiments reported in Pe˜na etal
Figure 2: Three step approach to generalization:(1) memorization of segments, (2) compute prob-ability of new items, and (3) distribute probabilitybetween possible new items.
Figure 3: The Retention&Recognition model. Diagram based on Alhama et al. (2016).
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