Natural Language Processing (NLP) Using Python

Add to wishlistAdded to wishlistRemoved from wishlist 0
Add to compare
- 75% Natural Language Processing (NLP) Using Python
Add your review

Original price was: $40.00.Current price is: $10.00.

PURCHASE THIS COURSE, YOU ACCUMLATE: 10 POINTs!


Natural Language Processing (NLP) Using Python

Natural Language Processing (NLP) Using Python
Natural Language Processing (NLP) Using Python

Original price was: $40.00.Current price is: $10.00.

Contents

 width=

Natural Language Processing (NLP) Using Python

This series will provide an overview and working knowledge of Natural Language Processing (NLP), using Python’s Natural

Language Toolkit (NLTK) library within an Anaconda environment. It is intended for users who have basic programming

knowledge of Python and want to start with NLP.

The tutorial starts with an introduction to data structures and regular expressions, then progresses to accessing and analyzing text

using NLTK, and finally graduating to making predictions on text using Python’s machine learning module, Scikit Learn. Topics

covered in this video include:

Setting up the Environment. After providing an overview to this video series, this clip shows you how to install and run Python, as

well as Anaconda and the necessary libraries (including NLTK).
Manipulating Data. Explores how to manipulate data in Python, using these data structures: strings, lists, tuples, dictionaries, and

sets.

Using Regular Expressions (Regex). Explores using Regular Expressions (Regex) in Python including creating a Regex grammar,

using Search and FindAll methods, using special characters in Regex, and applying pattern-matching and string-substitution.
Accessing Files and Reading Text. Covers the ways of accessing files and reading text, including retrieving directories, reading text

(.txt) files, reading MS Word (.docx) documents, reading .pdf files, and reading and accessing NLTK corpora.
Extracting, Cleaning, and Preprocessing Text, Part 1. Explores extracting, cleaning and preprocessing text, using sentence and

word tokenization, bigrams, trigrams, and ngrams, stemming, lemmatization, and stop-word removal.
Extracting, Cleaning, and Preprocessing Text, Part 2. Covers the process of extracting, cleaning, and preprocessing text, using Part

of Speech (POS) tagging, and named entity recognition.
Analyzing Sentence Structure. Explains how to analyze a sentence structure, including using syntax trees, chunking of words,

chinking of words, and context-free grammar (CFG).
Classifying Text, Part 1. Covers text classification using machine learning, including understanding the concepts of bag of words,

CountVectorizer, and Term Frequency – Inverse Document Frequency (TF-IDF).
Classifying Text, Part 2. Explores text classification using machine learning, including converting text to features and labels, using

Multinomial Naïve Bayes Classifier, and leveraging the confusion matrix.
Putting the Pieces Together: NLP Project on Sentiment Analysis. Implements everything we have learned so far on a data set. This

full NLP project summarizes topics discussed in the previous tutorials to create the machine learning classifier in performing

sentiment analysis.

Delivery Method

– After your purchase, you’ll see a View your orders link which goes to the Downloads page. Here, you can download all the files associated with your order.
– Downloads are available once your payment is confirmed, we’ll also send you a download notification email separate from any transaction notification emails you receive from NLPlib course.
– Since it is a digital copy, our suggestion is to download and save it to your hard drive. In case the link is broken for any reason, please contact us and we will resend the new download link.
– If you cannot find the download link, please don’t worry about that. We will update and notify you as soon as possible at 8:00 AM – 8:00 PM (UTC+8).

Thank You For Shopping With Us!

Review by NLP

Review by NLP

NLP.lib
Logo
Compare items
  • Total (0)
Compare
0
Shopping cart