Corpus ID: 15422931

PhD Depth Examination.ppt

@inproceedings{Liu2004PhDDE,
  title={PhD Depth Examination.ppt},
  author={Yudong Liu},
  year={2004}
}
  • Yudong Liu
  • Published 2004
  • Statistical parsing algorithms are useful in structure predictions, ranging from NLP to biological sequence analysis. Currently, there are a variety of efficient parsing algorithms available for different grammar formalisms. Conventionally, different parsing descriptions are needed for different tasks; a fair amount of work is required to construct for each one. Semiring parsing is proposed to provide a generalized and modularized framework to unify all these different parsing algorithms into a… CONTINUE READING
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