COL772: Difference between revisions
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Prashantt492 (talk | contribs) Creating course page via bot |
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| credits = 4 | | credits = 4 | ||
| credit_structure = 3-0-2 | | credit_structure = 3-0-2 | ||
| pre_requisites = COL106 OR Equivalent | | pre_requisites = [[COL106]] OR Equivalent | ||
| overlaps = MTL785 | | overlaps = [[MTL785]] | ||
}} | }} | ||
== COL772 : Natural Language processing == | == COL772 : Natural Language processing == | ||
NLP concepts: Tokenization, lemmatization, part of speech tagging, noun phrase chunking, named entity recognition, co-reference resolution, parsing, information extraction, sentiment analysis, question answering, text classification, document clustering, document summarization, discourse, machine translation. Machine learning concepts: Naïve Bayes, Hidden Markov Models, EM, Conditional Random Fields, MaxEnt Classifiers, Probabilistic Context Free Grammars. | NLP concepts: Tokenization, lemmatization, part of speech tagging, noun phrase chunking, named entity recognition, co-reference resolution, parsing, information extraction, sentiment analysis, question answering, text classification, document clustering, document summarization, discourse, machine translation. Machine learning concepts: Naïve Bayes, Hidden Markov Models, EM, Conditional Random Fields, MaxEnt Classifiers, Probabilistic Context Free Grammars. | ||
Latest revision as of 16:26, 14 April 2026
| COL772 | |
|---|---|
| Natural Language processing | |
| Credits | 4 |
| Structure | 3-0-2 |
| Pre-requisites | COL106 OR Equivalent |
| Overlaps | MTL785 |
COL772 : Natural Language processing
NLP concepts: Tokenization, lemmatization, part of speech tagging, noun phrase chunking, named entity recognition, co-reference resolution, parsing, information extraction, sentiment analysis, question answering, text classification, document clustering, document summarization, discourse, machine translation. Machine learning concepts: Naïve Bayes, Hidden Markov Models, EM, Conditional Random Fields, MaxEnt Classifiers, Probabilistic Context Free Grammars.