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Natural Language Processing

Dataset used: Twitter codemix data.

  1. Language Modelling:
  • Calculated Trigram, Bigram, Unigram perplexities on codemix data.
  1. CMI vs Perplexity:
  • Calculated Code Mixing Index(CMI) for each tweet and seperated tweets into 10 sets based on the CMI values. For each set we found perplexity, and found the relation between CMI and Perplexity on the data we collected.

  • Each folder has README.md inside describing what we have done.

Contributors:

M R Abhishek and K Vagdevi

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Exploring language modelling concepts with contrastive mutual information versus perplexity analysis.

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