Automatic Selection of Reference Pages in Wikipedia for Improving Targeted Entities Disambiguation
نویسنده
چکیده
A 59 A Knowledge-based Representation for Cross-Language Document Retrieval and Categorization Marc Franco-Salvador, Paolo Rosso and Roberto Navigli A 10170 A Probabilistic Approach to Persian Ezafe Recognition Habibollah Asghari, Heshaam Faili and Jalal Maleki A 10137 Acquiring a Dictionary of Emotion-Provoking Events Hoa Trong Vu, Graham Neubig, Sakriani Sakti, Tomoki Toda and Satoshi Nakamura A 47 Acquisition of Noncontiguous Class Attributes from Web Search Queries Marius Pasca
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