从对话智能体到搜索查询,自然语言理解(NLP)是当今许多最令人兴奋的技术的基础。如何建立这些模型来高效、可靠地理解语言?如果你还没有那么清楚的话,是否会找个课程来听呢

<斯坦福NLP课程>
├<1>
│  └1 - 1 - Course Introduction - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
├<10>
│  ├._10 - 1 - What is Relation Extraction- Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  ├._10 - 2 - Using Patterns to Extract Relations - Stanford NLP - Professor Dan Jurafsky & Chris Mann
│  ├._10 - 3 - Supervised Relation Extraction - Stanford NLP - Professor Dan Jurafsky & Chris Manning.m
│  ├._10 - 4 - Semi-Supervised and Unsupervised Relation Extraction-Dan Jurafsky & Chris Manning.mp4
│  ├10 - 1 - What is Relation Extraction- Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  ├10 - 2 - Using Patterns to Extract Relations - Stanford NLP - Professor Dan Jurafsky & Chris Mannin
│  ├10 - 3 - Supervised Relation Extraction - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  └10 - 4 - Semi-Supervised and Unsupervised Relation Extraction-Dan Jurafsky & Chris Manning.mp4
├<11>
│  ├._11 - 1 - The Maximum Entropy Model Presentation-NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._11 - 2 - Feature Overlap_Feature Interaction-Stanford NLP-Professor Dan Jurafsky & Chris Manning
│  ├._11 - 3 - Conditional Maxent Models for Classification--NLP-Dan Jurafsky & Chris Manning.mp4
│  ├._11 - 4 - Smoothing_Regularization_Priors for Maxent Models-NLP-Dan Jurafsky & Chris Manning - You
│  ├11 - 1 - The Maximum Entropy Model Presentation-NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├11 - 2 - Feature Overlap_Feature Interaction-Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  ├11 - 3 - Conditional Maxent Models for Classification--NLP-Dan Jurafsky & Chris Manning.mp4
│  └11 - 4 - Smoothing_Regularization_Priors for Maxent Models-NLP-Dan Jurafsky & Chris Manning - YouTu
├<12>
│  ├._12 - 1 - An Intro to Parts of Speech and POS Tagging -NLP-Dan Jurafsky & Chris Manning.mp4
│  ├._12 - 2 - Some Methods and Results on Sequence Models for POS Tagging -Dan Jurafsky Chris Manning
│  ├12 - 1 - An Intro to Parts of Speech and POS Tagging -NLP-Dan Jurafsky & Chris Manning.mp4
│  └12 - 2 - Some Methods and Results on Sequence Models for POS Tagging -Dan Jurafsky Chris Manning -
├<13>
│  ├._13 - 1 - Syntactic Structure_ Constituency vs Dependency -NLP-Dan Jurafsky & Chris Manning - YouT
│  ├._13 - 2 - Empirical_Data-Driven Approach to Parsing-NLP-Dan Jurafsky & Chris Manning.mp4
│  ├._13 - 3   The Exponential Problem in Parsing-NLP-Dan Jurafsky & Chris Manning.mp4
│  ├13 - 1 - Syntactic Structure_ Constituency vs Dependency -NLP-Dan Jurafsky & Chris Manning - YouTub
│  ├13 - 2 - Empirical_Data-Driven Approach to Parsing-NLP-Dan Jurafsky & Chris Manning.mp4
│  └13 - 3   The Exponential Problem in Parsing-NLP-Dan Jurafsky & Chris Manning.mp4
├<14>
│  └14 -1-Instructor Chat --NLP-Dan Jurafsky & Chris Manning.mp4
├<15>
│  ├._15 - 1 - CFGs and PCFGs -Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._15 - 2 - Grammar Transforms-Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._15 - 3 - CKY Parsing -Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._15 - 4 - CKY Example-Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  ├._15 - 5 - Constituency Parser Evaluation -Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  ├15 - 1 - CFGs and PCFGs -Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├15 - 2 - Grammar Transforms-Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├15 - 3 - CKY Parsing -Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├15 - 4 - CKY Example-Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  └15 - 5 - Constituency Parser Evaluation -Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
├<16>
│  ├._16 - 1 - Lexicalization of PCFGs-Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._16 - 2 - Charniak's Model-Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  ├._16 - 3 - PCFG Independence Assumptions-Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouT
│  ├._16 - 4 - The Return of Unlexicalized PCFGs-Stanford NLP-Professor Dan Jurafsky & Chris Manning -
│  ├._16 - 5 - Latent Variable PCFGs-Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  ├16 - 1 - Lexicalization of PCFGs-Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├16 - 2 - Charniak's Model-Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  ├16 - 3 - PCFG Independence Assumptions-Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTub
│  ├16 - 4 - The Return of Unlexicalized PCFGs-Stanford NLP-Professor Dan Jurafsky & Chris Manning - Yo
│  └16 - 5 - Latent Variable PCFGs-Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
├<17>
│  ├._17 - 1 - Dependency Parsing Introduction-Stanford NLP-Professor Dan Jurafsky & Chris Manning - Yo
│  ├._17 - 2 - Greedy Transition-Based Parsing-Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  ├._17 - 3 - Dependencies Encode Relational Structure-Stanford NLP-Dan Jurafsky & Chris Manning - You
│  ├17 - 1 - Dependency Parsing Introduction-Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouT
│  ├17 - 2 - Greedy Transition-Based Parsing-Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  └17 - 3 - Dependencies Encode Relational Structure-Stanford NLP-Dan Jurafsky & Chris Manning - YouTu
├<18>
│  ├._18 - 1 - Introduction to Information Retrieval-Stanford NLP-Professor Dan Jurafsky & Chris Mannin
│  ├._18 - 2 - Term-Document Incidence Matrices -Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  ├._18 - 3 - The Inverted Index-Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._18 - 4 - Query Processing with the Inverted Index-Stanford NLP-Dan Jurafsky & Chris Manning - You
│  ├._18 - 5 - Phrase Queries and Positional Indexes-Stanford NLP-Professor Dan Jurafsky & Chris Mannin
│  ├18 - 1 - Introduction to Information Retrieval-Stanford NLP-Professor Dan Jurafsky & Chris Manning
│  ├18 - 2 - Term-Document Incidence Matrices -Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  ├18 - 3 - The Inverted Index-Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├18 - 4 - Query Processing with the Inverted Index-Stanford NLP-Dan Jurafsky & Chris Manning - YouTu
│  └18 - 5 - Phrase Queries and Positional Indexes-Stanford NLP-Professor Dan Jurafsky & Chris Manning
├<19>
│  ├._19 - 1 - Introducing Ranked Retrieval-Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTu
│  ├._19 - 2 - Scoring with the Jaccard Coefficient-Stanford NLP-Professor Dan Jurafsky & Chris Manning
│  ├._19 - 3 - Term Frequency Weighting-Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  ├._19 - 4 - Inverse Document Frequency Weighting-Stanford NLP-Professor Dan Jurafsky & Chris Manning
│  ├._19 - 5 - TF-IDF Weighting-Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._19 - 6 - The Vector Space Model -Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  ├._19 - 7 - Calculating TF-IDF Cosine Scores-Stanford NLP-Professor Dan Jurafsky & Chris Manning - Y
│  ├._19 - 8 - Evaluating Search Engines -Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  ├19 - 1 - Introducing Ranked Retrieval-Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTube
│  ├19 - 2 - Scoring with the Jaccard Coefficient-Stanford NLP-Professor Dan Jurafsky & Chris Manning.m
│  ├19 - 3 - Term Frequency Weighting-Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  ├19 - 4 - Inverse Document Frequency Weighting-Stanford NLP-Professor Dan Jurafsky & Chris Manning -
│  ├19 - 5 - TF-IDF Weighting-Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├19 - 6 - The Vector Space Model -Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
│  ├19 - 7 - Calculating TF-IDF Cosine Scores-Stanford NLP-Professor Dan Jurafsky & Chris Manning - You
│  └19 - 8 - Evaluating Search Engines -Stanford NLP-Professor Dan Jurafsky & Chris Manning.mp4
├<2>
│  ├._2 - 1 - Regular Expressions - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  ├._2 - 2 - Regular Expressions in Practical NLP - Stanford NLP - Professor Dan Jurafsky & Chris Mann
│  ├._2 - 3 - Word Tokenization- Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  ├._2 - 4 - Word Normalization and Stemming - Stanford NLP - Professor Dan Jurafsky & Chris Manning.m
│  ├._2 - 5 - Sentence Segmentation - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube.m
│  ├2 - 1 - Regular Expressions - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  ├2 - 2 - Regular Expressions in Practical NLP - Stanford NLP - Professor Dan Jurafsky & Chris Mannin
│  ├2 - 3 - Word Tokenization- Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  ├2 - 4 - Word Normalization and Stemming - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  └2 - 5 - Sentence Segmentation - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube.mp4
├<20>
│  ├._20 - 1 - Word Senses and Word Relations-NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._20 - 2 - WordNet and Other Online Thesauri -NLP-Dan Jurafsky & Chris Manning.mp4
│  ├._20 - 3 - Word Similarity and Thesaurus Methods -NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._20 - 4 - Word Similarity_ Distributional Similarity I --NLP-Dan Jurafsky & Chris Manning - YouTub
│  ├._20 - 5 - Word Similarity_ Distributional Similarity II -NLP-Dan Jurafsky & Chris Manning.mp4
│  ├20 - 1 - Word Senses and Word Relations-NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├20 - 2 - WordNet and Other Online Thesauri -NLP-Dan Jurafsky & Chris Manning.mp4
│  ├20 - 3 - Word Similarity and Thesaurus Methods -NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├20 - 4 - Word Similarity_ Distributional Similarity I --NLP-Dan Jurafsky & Chris Manning - YouTube
│  └20 - 5 - Word Similarity_ Distributional Similarity II -NLP-Dan Jurafsky & Chris Manning.mp4
├<21>
│  ├._21 - 1 - What is Question Answering-NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._21 - 2 - Answer Types and Query Formulation-NLP-Dan Jurafsky & Chris Manning.mp4
│  ├._21 - 3 - Passage Retrieval and Answer Extraction-NLP-Dan Jurafsky & Chris Manning.mp4
│  ├._21 - 4 - Using Knowledge in QA -NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._21 - 5 - Advanced_ Answering Complex Questions-NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├21 - 1 - What is Question Answering-NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├21 - 2 - Answer Types and Query Formulation-NLP-Dan Jurafsky & Chris Manning.mp4
│  ├21 - 3 - Passage Retrieval and Answer Extraction-NLP-Dan Jurafsky & Chris Manning.mp4
│  ├21 - 4 - Using Knowledge in QA -NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
│  └21 - 5 - Advanced_ Answering Complex Questions-NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
├<22>
│  ├._22 - 1 - Introduction to Summarization-NLP-Dan Jurafsky & Chris Manning.mp4
│  ├._22 - 2 - Generating Snippets-NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._22 - 3 - Evaluating Summaries_ ROUGE-NLP-Dan Jurafsky & Chris Manning.mp4
│  ├._22 - 4 - Summarizing Multiple Documents-NLP-Dan Jurafsky & Chris Manning.mp4
│  ├22 - 1 - Introduction to Summarization-NLP-Dan Jurafsky & Chris Manning.mp4
│  ├22 - 2 - Generating Snippets-NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├22 - 3 - Evaluating Summaries_ ROUGE-NLP-Dan Jurafsky & Chris Manning.mp4
│  └22 - 4 - Summarizing Multiple Documents-NLP-Dan Jurafsky & Chris Manning.mp4
├<23>
│  └23 - 1 - Instructor Chat II -Stanford NLP-Professor Dan Jurafsky & Chris Manning - YouTube.mp4
├<3>
│  ├._3 - 1 - Defining Minimum Edit Distance - Stanford NLP - Professor Dan Jurafsky & Chris Manning -
│  ├._3 - 2 - Computing Minimum Edit Distance - Stanford NLP - Professor Dan Jurafsky & Chris Manning.m
│  ├._3 - 3 - Backtrace for Computing Alignments - Stanford NLP - Professor Dan Jurafsky & Chris Mannin
│  ├._3 - 4 - Weighted Minimum Edit Distance - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  ├._3 - 5-Minimum Edit Distance in Computational Biology-Stanford NLP-Dan Jurafsky & Chris Manning -
│  ├3 - 1 - Defining Minimum Edit Distance - Stanford NLP - Professor Dan Jurafsky & Chris Manning - Yo
│  ├3 - 2 - Computing Minimum Edit Distance - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  ├3 - 3 - Backtrace for Computing Alignments - Stanford NLP - Professor Dan Jurafsky & Chris Manning
│  ├3 - 4 - Weighted Minimum Edit Distance - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  └3 - 5-Minimum Edit Distance in Computational Biology-Stanford NLP-Dan Jurafsky & Chris Manning - Yo
├<4>
│  ├._4 - 1 - Introduction to N-grams- Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube
│  ├._4 - 2 - Estimating N-gram Probabilities - Stanford NLP - Professor Dan Jurafsky & Chris Manning -
│  ├._4 - 3 - Evaluation and Perplexity - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  ├._4 - 4 - Generalization and Zeros - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTub
│  ├._4 - 5 - Smoothing_ Add-One - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube 1.mp4
│  ├._4 - 6 - Interpolation - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._4 - 7 - Good-Turing Smoothing - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube.m
│  ├._4 - 8 - Kneser-Ney Smoothing - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├4 - 1 - Introduction to N-grams- Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├4 - 2 - Estimating N-gram Probabilities - Stanford NLP - Professor Dan Jurafsky & Chris Manning - Y
│  ├4 - 3 - Evaluation and Perplexity - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  ├4 - 4 - Generalization and Zeros - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube
│  ├4 - 5 - Smoothing_ Add-One - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube 1.mp4
│  ├4 - 6 - Interpolation - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├4 - 7 - Good-Turing Smoothing - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  └4 - 8 - Kneser-Ney Smoothing - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube.mp4
├<5>
│  ├._5 - 1 - The Spelling Correction Task - Stanford NLP - Professor Dan Jurafsky & Chris Manning - Yo
│  ├._5 - 2 - The Noisy Channel Model of Spelling - Stanford NLP - Professor Dan Jurafsky & Chris Manni
│  ├._5 - 3 - Real-Word Spelling Correction - Stanford NLP - Professor Dan Jurafsky & Chris Manning - Y
│  ├._5 - 4 - State of the Art Systems - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTub
│  ├5 - 1 - The Spelling Correction Task - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouT
│  ├5 - 2 - The Noisy Channel Model of Spelling - Stanford NLP - Professor Dan Jurafsky & Chris Manning
│  ├5 - 3 - Real-Word Spelling Correction - Stanford NLP - Professor Dan Jurafsky & Chris Manning - You
│  └5 - 4 - State of the Art Systems - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube
├<6>
│  ├._6 - 1 - What is Text Classification- Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouT
│  ├._6 - 2 - Naive Bayes - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  ├._6 - 3 - Formalizing the Naive Bayes Classifier - Stanford NLP-Dan Jurafsky & Chris Manning.mp4
│  ├._6 - 4 - Naive Bayes_ Learning - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube.m
│  ├._6 - 5-Naive Bayes_ Relationship to Language Modeling-Stanford NLP-Dan Jurafsky & Chris Manning.mp4
│  ├._6 - 6 - Multinomial Naive Bayes_ A Worked Example - Stanford NLP-Dan Jurafsky & Chris Manning - Y
│  ├._6 - 7 - Precision, Recall, and the F measure - Stanford NLP - Professor Dan Jurafsky & Chris Mann
│  ├._6 - 8 - Text Classification_ Evaluation- Stanford NLP - Professor Dan Jurafsky & Chris Manning -
│  ├._6 - 9 - Practical Issues in Text Classification - Stanford NLP-Dan Jurafsky & Chris Manning - You
│  ├6 - 1 - What is Text Classification- Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTub
│  ├6 - 2 - Naive Bayes - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  ├6 - 3 - Formalizing the Naive Bayes Classifier - Stanford NLP-Dan Jurafsky & Chris Manning.mp4
│  ├6 - 4 - Naive Bayes_ Learning - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├6 - 5-Naive Bayes_ Relationship to Language Modeling-Stanford NLP-Dan Jurafsky & Chris Manning.mp4
│  ├6 - 6 - Multinomial Naive Bayes_ A Worked Example - Stanford NLP-Dan Jurafsky & Chris Manning - You
│  ├6 - 7 - Precision, Recall, and the F measure - Stanford NLP - Professor Dan Jurafsky & Chris Mannin
│  ├6 - 8 - Text Classification_ Evaluation- Stanford NLP - Professor Dan Jurafsky & Chris Manning - Yo
│  └6 - 9 - Practical Issues in Text Classification - Stanford NLP-Dan Jurafsky & Chris Manning - YouTu
├<7>
│  ├._7 - 1 - What is Sentiment Analysis- Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTu
│  ├._7 - 2 - Sentiment Analysis_ A baseline algorithm- NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._7 - 3 - Sentiment Lexicons - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._7 - 4 - Learning Sentiment Lexicons - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  ├._7 - 5 - Other Sentiment Tasks - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  ├7 - 1 - What is Sentiment Analysis- Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube
│  ├7 - 2 - Sentiment Analysis_ A baseline algorithm- NLP-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├7 - 3 - Sentiment Lexicons - Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├7 - 4 - Learning Sentiment Lexicons - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  └7 - 5 - Other Sentiment Tasks - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
├<8>
│  ├._8 - 1 - Generative vs Discriminative Models- Stanford NLP - Professor Dan Jurafsky & Chris Mannin
│  ├._8 - 2 - Making features from text for discriminative NLP models-Dan Jurafsky & Chris Manning - Yo
│  ├._8 - 3 - Feature-Based Linear Classifiers - Stanford NLP - Professor Dan Jurafsky & Chris Manning
│  ├._8 - 4 - Building a Maxent Model_ The Nuts and Bolts-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├._8 - 5 - Generative vs Discriminative models_ The problem of overcounting evidence- Stanford NLP -
│  ├._8 - 6 - Maximizing the Likelihood- Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTub
│  ├8 - 1 - Generative vs Discriminative Models- Stanford NLP - Professor Dan Jurafsky & Chris Manning
│  ├8 - 2 - Making features from text for discriminative NLP models-Dan Jurafsky & Chris Manning - YouT
│  ├8 - 3 - Feature-Based Linear Classifiers - Stanford NLP - Professor Dan Jurafsky & Chris Manning.mp4
│  ├8 - 4 - Building a Maxent Model_ The Nuts and Bolts-Dan Jurafsky & Chris Manning - YouTube.mp4
│  ├8 - 5 - Generative vs Discriminative models_ The problem of overcounting evidence- Stanford NLP - Y
│  └8 - 6 - Maximizing the Likelihood- Stanford NLP - Professor Dan Jurafsky & Chris Manning - YouTube
├<9>
│  ├._9 - 1 - Introduction to Information Extraction- Stanford NLP-Dan Jurafsky & Chris Manning.mp4
│  ├._9 - 2 - Evaluation of Named Entity Recognition- Stanford NLP-Dan Jurafsky & Chris Manning - YouTu
│  ├._9 - 3 - Sequence Models for Named Entity Recognition-NLP-Professor Dan Jurafsky & Chris Manning -
│  ├._9 - 4 - Maximum Entropy Sequence Models- Stanford NLP - Professor Dan Jurafsky & Chris Manning -
│  ├9 - 1 - Introduction to Information Extraction- Stanford NLP-Dan Jurafsky & Chris Manning.mp4
│  ├9 - 2 - Evaluation of Named Entity Recognition- Stanford NLP-Dan Jurafsky & Chris Manning - YouTube
│  ├9 - 3 - Sequence Models for Named Entity Recognition-NLP-Professor Dan Jurafsky & Chris Manning - Y
│  └9 - 4 - Maximum Entropy Sequence Models- Stanford NLP - Professor Dan Jurafsky & Chris Manning - Yo

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