Classifying Wikipedia in a fine-grained hierarchy: what graphs can contribute

21 Jan 2020Tiphaine ViardThomas McLachlanHamidreza GhaderSatoshi Sekine

Wikipedia is a huge opportunity for machine learning, being the largest semi-structured base of knowledge available. Because of this, many works examine its contents, and focus on structuring it in order to make it usable in learning tasks, for example by classifying it into an ontology... (read more)

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