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From news and speeches to informal chatter on social media, natural
language is one of the richest and most underutilized sources of
data. Not only does it come in a constant stream, always changing
and adapting in context; it also contains information that is not
conveyed by traditional data sources. The key to unlocking natural
language is through the creative application of text analytics.
This practical book presents a data scientist’s approach to
building language-aware products with applied machine learning.
You’ll learn robust, repeatable, and scalable techniques for text
analysis with Python, including contextual and linguistic feature
engineering, vectorization, classification, topic modeling, entity
resolution, graph analysis, and visual steering. By the end of the
book, you’ll be equipped with practical methods to solve any
number of complex real-world problems. Preprocess and vectorize
text into high-dimensional feature representations Perform document
classification and topic modeling Steer the model selection process
with visual diagnostics Extract key phrases, named entities, and
graph structures to reason about data in text Build a dialog
framework to enable chatbots and language-driven interaction Use
Spark to scale processing power and neural networks to scale model
complexity
Over 85 recipes to help you complete real-world data science
projects in R and Python About This Book * Tackle every step in the
data science pipeline and use it to acquire, clean, analyze, and
visualize your data * Get beyond the theory and implement
real-world projects in data science using R and Python *
Easy-to-follow recipes will help you understand and implement the
numerical computing concepts Who This Book Is For If you are an
aspiring data scientist who wants to learn data science and
numerical programming concepts through hands-on, real-world project
examples, this is the book for you. Whether you are brand new to
data science or you are a seasoned expert, you will benefit from
learning about the structure of real-world data science projects
and the programming examples in R and Python. What You Will Learn *
Learn and understand the installation procedure and environment
required for R and Python on various platforms * Prepare data for
analysis by implement various data science concepts such as
acquisition, cleaning and munging through R and Python * Build a
predictive model and an exploratory model * Analyze the results of
your model and create reports on the acquired data * Build various
tree-based methods and Build random forest In Detail As increasing
amounts of data are generated each year, the need to analyze and
create value out of it is more important than ever. Companies that
know what to do with their data and how to do it well will have a
competitive advantage over companies that don't. Because of this,
there will be an increasing demand for people that possess both the
analytical and technical abilities to extract valuable insights
from data and create valuable solutions that put those insights to
use. Starting with the basics, this book covers how to set up your
numerical programming environment, introduces you to the data
science pipeline, and guides you through several data projects in a
step-by-step format. By sequentially working through the steps in
each chapter, you will quickly familiarize yourself with the
process and learn how to apply it to a variety of situations with
examples using the two most popular programming languages for data
analysis-R and Python. Style and approach This step-by-step guide
to data science is full of hands-on examples of real-world data
science tasks. Each recipe focuses on a particular task involved in
the data science pipeline, ranging from readying the dataset to
analytics and visualization
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