Book Image

Machine Learning Techniques for Text

By : Nikos Tsourakis
Book Image

Machine Learning Techniques for Text

By: Nikos Tsourakis

Overview of this book

With the ever-increasing demand for machine learning and programming professionals, it's prime time to invest in the field. This book will help you in this endeavor, focusing specifically on text data and human language by steering a middle path among the various textbooks that present complicated theoretical concepts or focus disproportionately on Python code. A good metaphor this work builds upon is the relationship between an experienced craftsperson and their trainee. Based on the current problem, the former picks a tool from the toolbox, explains its utility, and puts it into action. This approach will help you to identify at least one practical use for each method or technique presented. The content unfolds in ten chapters, each discussing one specific case study. For this reason, the book is solution-oriented. It's accompanied by Python code in the form of Jupyter notebooks to help you obtain hands-on experience. A recurring pattern in the chapters of this book is helping you get some intuition on the data and then implement and contrast various solutions. By the end of this book, you'll be able to understand and apply various techniques with Python for text preprocessing, text representation, dimensionality reduction, machine learning, language modeling, visualization, and evaluation.
Table of Contents (13 chapters)

Performing exploratory data analysis

During the EDA phase in Chapter 2, Detecting Spam Emails, we saw how word clouds could provide some basic intuition on text data by identifying the most frequent words in a document. Another primary concern during EDA is to verify that the dataset is appropriately formatted before resorting to the subsequent analysis. For instance, it is not uncommon to encounter missing or out-of-the-range values. Plotting the data or extracting various statistics can reveal this unpleasant situation. Other times, we need to transform or exclude part of the data. Having an imbalanced dataset where one class monopolizes the whole corpus is also a source of concern. In this case, the ML algorithm is overexposed and subsequently learns data of one class type well while having difficulty with samples from the less frequent classes. All the previous issues must be addressed early to avoid any nasty surprises when treating the data later in the pipeline.

In the following...