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What can we learn from Semantic Tagging?

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Figure

Figure 1: Our three multi-task learning settings: (A) fully shared networks, (B) partially shared networks,and (C) Learning What to Share
Figure 2: Normalized semantic tag frequencies for all six sets of sentences. X - Y denotes the set ofsentences correctly classified by model X but misclassified by model Y.
Figure 3: The three MTL settings for each task. Layers dimensions are displayed in brackets.
Table 2: Examples of the entailment problems from SNLI which are incorrectly classified by the ST modelbut correctly classified by the LWS model

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