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Joint Information Extraction and Reasoning: A Scalable Statistical Relational Learning Approach

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Figure

Table 1: A simple program in ProPPR. See text forexplanation.
Figure 1: A partial proof graph for the query about(a,Z). The upper right shows the link structure betweendocuments a , b , c , and d , and some of the words in the documents
Figure 2: The data generation example as described in subsection 3.2.
Table 2: The ProPPR template and clauses for joint structure learning and information extraction.
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