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Automatically Tailoring Unsupervised Morphological Segmentation to the Language

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Figure

Table 1: Grammar Representations. Compound = Upper level representation of the word as a sequence of compounds;Morph = Affix/Morph representation as a sequence of morphs
Figure 1: Grammar trees for the word replayings: (a) PrStSu+SM, (b) PrStSu2a+SM
Table 4: Classification features
Table 6: Adaptor-grammar results (Emma F-scores) for theStandard and Cascaded setups for Arabic

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