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Weakly Supervised Attention Networks for Fine Grained Opinion Mining and Public Health

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Figure

Figure 2: MIL-based hierarchical models.
Figure 1 and assign a mix of positive and negative
Table 1: Label statistics for the SPOT datasets. “WR(in a review with label(x)” is the witness rate, meaning the proportion of seg-ments with label x in a review with label x
Table 3 reports
+2

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