Daniel A . Woods CS 229 Final Project
نویسنده
چکیده
1 Current methods model RNA sequence and secondary structure as stochastic context-free grammars, and then use a generative learning model to find the most likely parse (and, therefore, the most likely structure). As we learned in class, discriminative models generally enjoy higher performance than generative learning models. This implies that performance may increase if discriminative learning were implied on top of the same stochastic context free grammar model of RNA sequence and secondary structure.
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