Tracking changes in language

@article{Grothendieck2005TrackingCI,
  title={Tracking changes in language},
  author={John Grothendieck},
  journal={IEEE Transactions on Speech and Audio Processing},
  year={2005},
  volume={13},
  pages={700-711}
}
  • John Grothendieck
  • Published 2005
  • Computer Science
  • IEEE Transactions on Speech and Audio Processing
One problem that has arisen in recent years is the extraction of useful information from changes in a data stream including natural language. Statistical tests on single word occurrences can reveal many apparent differences. Understanding the reasons behind such changes in the data requires methods for discovering structure within the entire set of individual changed items. This work presents a methodology for understanding how a language model has altered based on utterance clustering and… Expand
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