More-efficient “kernel methods” dramatically reduce training time for natural-language-understanding systems

Machine learning systems often act on “features” extracted from input data. In a natural-language-understanding system, for instance, the features might include words’ parts of speech, as assessed by an automatic syntactic parser, or whether a sentence is in the active or passive voice.Read More