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Unleash the power of unsupervised machine learning in Hidden Markov
Models using TensorFlow, pgmpy, and hmmlearn Key Features Build a
variety of Hidden Markov Models (HMM) Create and apply models to
any sequence of data to analyze, predict, and extract valuable
insights Use natural language processing (NLP) techniques and
2D-HMM model for image segmentation Book DescriptionHidden Markov
Model (HMM) is a statistical model based on the Markov chain
concept. Hands-On Markov Models with Python helps you get to grips
with HMMs and different inference algorithms by working on
real-world problems. The hands-on examples explored in the book
help you simplify the process flow in machine learning by using
Markov model concepts, thereby making it accessible to everyone.
Once you've covered the basic concepts of Markov chains, you'll get
insights into Markov processes, models, and types with the help of
practical examples. After grasping these fundamentals, you'll move
on to learning about the different algorithms used in inferences
and applying them in state and parameter inference. In addition to
this, you'll explore the Bayesian approach of inference and learn
how to apply it in HMMs. In further chapters, you'll discover how
to use HMMs in time series analysis and natural language processing
(NLP) using Python. You'll also learn to apply HMM to image
processing using 2D-HMM to segment images. Finally, you'll
understand how to apply HMM for reinforcement learning (RL) with
the help of Q-Learning, and use this technique for single-stock and
multi-stock algorithmic trading. By the end of this book, you will
have grasped how to build your own Markov and hidden Markov models
on complex datasets in order to apply them to projects. What you
will learn Explore a balance of both theoretical and practical
aspects of HMM Implement HMMs using different datasets in Python
using different packages Understand multiple inference algorithms
and how to select the right algorithm to resolve your problems
Develop a Bayesian approach to inference in HMMs Implement HMMs in
finance, natural language processing (NLP), and image processing
Determine the most likely sequence of hidden states in an HMM using
the Viterbi algorithm Who this book is forHands-On Markov Models
with Python is for you if you are a data analyst, data scientist,
or machine learning developer and want to enhance your machine
learning knowledge and skills. This book will also help you build
your own hidden Markov models by applying them to any sequence of
data. Basic knowledge of machine learning and the Python
programming language is expected to get the most out of the book
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