Bootstrapping Without the Boot
نویسندگان
چکیده
What: We like minimally supervised learning (bootstrapping). Let’s convert it to unsupervised learning (“strapping”). How: If the supervision is so minimal, let’s just guess it! Lots of guesses lots of classifiers. Try to predict which one looks plausible (!?!). We can learn to make such predictions. Results (on WSD): Performance actually goes up! (Unsupervised WSD for translational senses, English Hansards, 14M words.)
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تاریخ انتشار 2005