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Attention based LSTM Network for Cross Lingual Sentiment Classification

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Figure

Figure 1: The LSTM architecture. The image is adopted from(Jozefowicz et al., 2015).
Table 2: Cross-lingual sentiment prediction accuracy of ourmethods and the comparison approaches.
Figure 4: Performance with different vector sizes

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