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Derivation of Document Vectors from Adaptation of LSTM Language Model

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Figure

Figure 1: The LSTM network chosen to derive ourdocument vectors. (The recurrency of LSTM cellsis not shown)
Table 2: The dimension of various feature vectors.

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