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Deep Automated Multi task Learning

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Academic year: 2020

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Figure

Figure 1: MRNN (a) and CRNN (b) model
Table 1: Dataset statistics. (*character count)
Table 2: Experimental results. (*trained on exter-nal unlabeled dataset)
Figure 2: Hashtag prediction in Twitter.

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