Entity Linking by Means of Explicit Semantic Contexts
نویسندگان
چکیده
(a) David Cameron could refer to the British politician, the English actor or any other namesake. “The Ford Motor Company, founded in 1903 by Henry Ford, is one of the largest auto makers in the world. During a time of crisis throughout the auto industry in recent years, Ford emerged as the sole American automaker in a position to survive the steepest sales downturn in decades without a government bailout.”
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