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40
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Course Description

Natural language processing (NLP) is a field of computer science, artificial intelligence, and computational linguistics concerned with the interactions between computers and human (natural) languages

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Course Syllabus
  • Mod-01 Lec-01 Introduction
  • Mod-01 Lec-02 Stages of NLP
  • Mod-01 Lec-03 Stages of NLP Continue...
  • Mod-01 Lec-04 Two approaches to NLP
  • Mod-01 Lec-05 Sequence Labelling and Noisy Channel
  • Mod-01 Lec-06 Noisy Channel: Argmax Based Computation
  • Mod-01 Lec-07 Argmax Based Computation
  • Mod-01 Lec-08 Noisy Channel Application to NLP
  • Mod-01 Lec-09 Brief on Probabilistic Parsing & Start of Part of Speech Tagging
  • Mod-01 Lec-10 Part of Speech Tagging
  • Mod-01 Lec-11 Part of Speech Tagging counted...
  • Mod-01 Lec-12 Part of Speech Tagging counted... & Indian Language in Focus; Morphology Analysis
  • Mod-01 Lec-13 PoS Tagging contd... , Indian Language Consideration; Accuracy Measure
  • Mod-01 Lec-14 PoS Tagging; Fundamental Principle; Why Challenging; accuracy
  • Mod-01 Lec-15 PoS Tagging; Accuracy Measurement; Word categories
  • Mod-01 Lec-16 AI and Probability; HMM
  • Mod-01 Lec-17 HMM
  • Mod-01 Lec-18 HMM, Viterbi, Forward Backward Algorithm
  • Mod-01 Lec-19 HMM, Viterbi, Forward Backward Algorithm Contd..9
  • Mod-01 Lec-20 HMM, Forward Backward Algorithms, Baum Welch Algorithm
  • Mod-01 Lec-21 HMM, Forward Backward Algorithms, Baum Welch Algorithm Contd...
  • Mod-01 Lec-22 Natural Language Processing and Informational Retrieval
  • Mod-01 Lec-23 CLIA; IR Basics
  • Mod-01 Lec-24 IR Models: Boolean Vector
  • Mod-01 Lec-25 IR Models: NLP and IR Relationship
  • Mod-01 Lec-26 NLP and IR: How NLP has used IR, Toward Latent Semantic
  • Mod-01 Lec-27 Least Square Method; Recap of PCA; Towards Latent Semantic Indexing(LSI)
  • Mod-01 Lec-28 PCA; SVD; Towards Latent Semantic Indexing(LSI)
  • Mod-01 Lec-29 Wordnet and Word Sense Disambiguation
  • Mod-01 Lec-30 Wordnet and Word Sense Disambiguation(contd...)
  • Mod-01 Lec-31 Wordnet; Metonymy and Word Sense Disambiguation
  • Mod-01 Lec-32 Word Sense Disambiguation
  • Mod-01 Lec-33 Word Sense Disambiguation; Overlap Based Method; Supervised Method
  • Mod-01 Lec-34 Word Sense Disambiguation: Supervised and Unsupervised methods
  • Mod-01 Lec-35 Word Sense Disambiguation: Semi - Supervised and Unsupervisedmethod
  • Mod-01 Lec-36 Resource Constrained WSD; Parsin
  • Mod-01 Lec-37 Parsin
  • Mod-01 Lec-38 Parsing Algorithm
  • Mod-01 Lec-39 Parsing Ambiguous Sentences; Probabilistic Parsing
  • Mod-01 Lec-40 Probabilistic Parsing Algorithms
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