SEM13 at the NTCIR-11 IMINE Task: Subtopic Mining and Document Ranking Subtasks

In this paper, we describe our participation in the English Subtopic Mining and Document Ranking subtasks of the NTCIR-11 IMINE Task. In the Subtopic Mining subtask, we mine subtopics from query suggestions, query dimensions, and Freebase entities of a given query, rank them based on

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