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Multi grained Attention Network for Aspect Level Sentiment Classification

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Figure

Figure 1: The architecture of the proposed multi-grained attention network.
Table 1: The statistics of the datasets.
Table 2: The performance comparisons of different methods on the three datasets, where the results of baselinemethods are retrieved from published papers
Figure 2: The attention visualizations on aspect “resolution” and “fonts”. The above two bars are from the C-Aspect2Context attention mechanism, and the two bars at bottom are from the C-Aspect2Context attention mech-anism with the constraint of aspect alignment loss.

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