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Unsupervised Learning of the Morphology of a Natural Language

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Academic year: 2020

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Figure

Figure 1 Naive description length.
Figure 2 A sample morphology. This morphology covers the words:
figure of merit in a large proportion of cases. In any given case, we will accept a modification to our analysis just in case the description length decreases, and we will suggest that this strategy coincides with traditional linguistic judgment in all clear
Table 2 Top 81 signatures from Tom Sawyer.
+7

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