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            課程目錄:Natural Language Processing - AI/Robotics培訓
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                    Natural Language Processing - AI/Robotics培訓

             

             

            Detailed training outline

            Introduction to NLP
            Understanding NLP
            NLP Frameworks
            Commercial applications of NLP
            Scraping data from the web
            Working with various APIs to retrieve text data
            Working and storing text corpora saving content and relevant metadata
            Advantages of using Python and NLTK crash course
            Practical Understanding of a Corpus and Dataset
            Why do we need a corpus?
            Corpus Analysis
            Types of data attributes
            Different file formats for corpora
            Preparing a dataset for NLP applications
            Understanding the Structure of a Sentences
            Components of NLP
            Natural language understanding
            Morphological analysis - stem, word, token, speech tags
            Syntactic analysis
            Semantic analysis
            Handling ambigiuty
            Text data preprocessing
            Corpus- raw text
            Sentence tokenization
            Stemming for raw text
            Lemmization of raw text
            Stop word removal
            Corpus-raw sentences
            Word tokenization
            Word lemmatization
            Working with Term-Document/Document-Term matrices
            Text tokenization into n-grams and sentences
            Practical and customized preprocessing
            Analyzing Text data
            Basic feature of NLP
            Parsers and parsing
            POS tagging and taggers
            Name entity recognition
            N-grams
            Bag of words
            Statistical features of NLP
            Concepts of Linear algebra for NLP
            Probabilistic theory for NLP
            TF-IDF
            Vectorization
            Encoders and Decoders
            Normalization
            Probabilistic Models
            Advanced feature engineering and NLP
            Basics of word2vec
            Components of word2vec model
            Logic of the word2vec model
            Extension of the word2vec concept
            Application of word2vec model
            Case study: Application of bag of words: automatic text summarization using simplified and true Luhn's algorithms
            Document Clustering, Classification and Topic Modeling
            Document clustering and pattern mining (hierarchical clustering, k-means, clustering, etc.)
            Comparing and classifying documents using TFIDF, Jaccard and cosine distance measures
            Document classifcication using Na?ve Bayes and Maximum Entropy
            Identifying Important Text Elements
            Reducing dimensionality: Principal Component Analysis, Singular Value Decomposition non-negative matrix factorization
            Topic modeling and information retrieval using Latent Semantic Analysis
            Entity Extraction, Sentiment Analysis and Advanced Topic Modeling
            Positive vs. negative: degree of sentiment
            Item Response Theory
            Part of speech tagging and its application: finding people, places and organizations mentioned in text
            Advanced topic modeling: Latent Dirichlet Allocation
            Case studies
            Mining unstructured user reviews
            Sentiment classification and visualization of Product Review Data
            Mining search logs for usage patterns
            Text classification
            Topic modelling

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