Book Image

The Handbook of NLP with Gensim

By : Chris Kuo
Book Image

The Handbook of NLP with Gensim

By: Chris Kuo

Overview of this book

Navigating the terrain of NLP research and applying it practically can be a formidable task made easy with The Handbook of NLP with Gensim. This book demystifies NLP and equips you with hands-on strategies spanning healthcare, e-commerce, finance, and more to enable you to leverage Gensim in real-world scenarios. You’ll begin by exploring motives and techniques for extracting text information like bag-of-words, TF-IDF, and word embeddings. This book will then guide you on topic modeling using methods such as Latent Semantic Analysis (LSA) for dimensionality reduction and discovering latent semantic relationships in text data, Latent Dirichlet Allocation (LDA) for probabilistic topic modeling, and Ensemble LDA to enhance topic modeling stability and accuracy. Next, you’ll learn text summarization techniques with Word2Vec and Doc2Vec to build the modeling pipeline and optimize models using hyperparameters. As you get acquainted with practical applications in various industries, this book will inspire you to design innovative projects. Alongside topic modeling, you’ll also explore named entity handling and NER tools, modeling procedures, and tools for effective topic modeling applications. By the end of this book, you’ll have mastered the techniques essential to create applications with Gensim and integrate NLP into your business processes.
Table of Contents (24 chapters)
1
Part 1: NLP Basics
5
Part 2: Latent Semantic Analysis/Latent Semantic Indexing
9
Part 3: Word2Vec and Doc2Vec
12
Part 4: Topic Modeling with Latent Dirichlet Allocation
18
Part 5: Comparison and Applications

Beta distributions

The beta distribution is a distribution of probabilities that models the uncertainty about the probability of success of an experiment. There are only two outcomes in the beta distribution – “yes” and “no.” We just do not know the actual probability of “yes” or “no” in an experiment. However, we may have prior knowledge to guess their probability. Let’s see a real-world example.

The real-world examples

Suppose you are at a table in a casino that bets on flipping coins. Assume you do not know the probability of whether the coin is 1 = head and 0 = tail, and you do not believe it is a fair coin. You had heard from others that the probability of the unfair coin is 0.52 for 1 = head and 0.48 for 0 = tail. The 0.52 or 0.48 is your “prior belief” in the Bayesian terminology. The outcomes of the coin for “1 = head” in multiple experiments can range from 0.35 to 0.85,...