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Nlp Important question papers, Exams of Natural Language Processing (NLP)

Nlp question papers unit 1st and 2nd

Typology: Exams

2021/2022
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Uploaded on 03/29/2022

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ASSIGNMENT NO.I
1.What is natural language processing(NLP)? Discuss various stages involved in NLP process
with suitable example.
2.Explain levels of NLP.
3.what do you mean by ambiguity in natural language? Explain with suitable example.
4. what do you mean by lexical ambiguity and syntactical ambiguity in natural language?
5. Explain various applications of NLP.
6.Explain challenges of NLP.
ASSIGNMENT NO.II
1. What is Morphology?what do we need to do morphology analysis?
2. Explain derivational and inflectional analysis with suitable example.
3.Explain finite automata with example.
4. finite state transducers (FST).
5. what is N-gram language model. Explain in detail.
6.Explain FST Porter stemmer algorithm.
7. Explain POS tagging.
8. Explain Rule based POS tagging.
9. Explain Stochastic POS tagging.
10. Explain different issues in tagging.
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ASSIGNMENT NO.I

1.What is natural language processing(NLP)? Discuss various stages involved in NLP process with suitable example. 2.Explain levels of NLP. 3.what do you mean by ambiguity in natural language? Explain with suitable example.

  1. what do you mean by lexical ambiguity and syntactical ambiguity in natural language?
  2. Explain various applications of NLP. 6.Explain challenges of NLP. ASSIGNMENT NO.II
  3. What is Morphology?what do we need to do morphology analysis?
  4. Explain derivational and inflectional analysis with suitable example. 3.Explain finite automata with example.
  5. finite state transducers (FST).
  6. what is N-gram language model. Explain in detail. 6.Explain FST Porter stemmer algorithm.
  7. Explain POS tagging.
  8. Explain Rule based POS tagging.
  9. Explain Stochastic POS tagging.
  10. Explain different issues in tagging.