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Rev. bras. linguist. apl. vol.11 número2

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FIGURE 1 – Development of the weights from cues (definite/indefinite/pronominal/non- (definite/indefinite/pronominal/non-pronominal) to outcomes (NP NP/NP PP) given the instance base summarized in Table 1.
FIGURE 3 – Permutation accuracy importance: the reduction in accuracy for predicting the prepositional object construction when a predictor is randomly permuted, for mixed-effects logistic regression (upper left), a support vector
FIGURE 4 – Distributions of the contributions of the individual verbs (top) and speakers (bottom) to the likelihood of the prepositional object construction, and the
FIGURE 5 – Different measures of collexeme strength and their pairwise correlations (Pearson and Spearman)

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