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Featureless Domain Specific Term Extraction with Minimal Labelled Data

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Figure

Figure 1:Co-training Network ArchitectureOverview: Solid lines indicate the training pro-cess, dashed lines indicate prediction and labellingprocesses.
Figure 2: Convolutional Model
Figure 4: Relationships in TP, TN, FP, and FN forTerm Extraction.
Table 2: Evaluation Results
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