Book Image

A Handbook of Mathematical Models with Python

By : Dr. Ranja Sarkar
Book Image

A Handbook of Mathematical Models with Python

By: Dr. Ranja Sarkar

Overview of this book

Mathematical modeling is the art of transforming a business problem into a well-defined mathematical formulation. Its emphasis on interpretability is particularly crucial when deploying a model to support high-stake decisions in sensitive sectors like pharmaceuticals and healthcare. Through this book, you’ll gain a firm grasp of the foundational mathematics underpinning various machine learning algorithms. Equipped with this knowledge, you can modify algorithms to suit your business problem. Starting with the basic theory and concepts of mathematical modeling, you’ll explore an array of mathematical tools that will empower you to extract insights and understand the data better, which in turn will aid in making optimal, data-driven decisions. The book allows you to explore mathematical optimization and its wide range of applications, and concludes by highlighting the synergetic value derived from blending mathematical models with machine learning. Ultimately, you’ll be able to apply everything you’ve learned to choose the most fitting methodologies for the business problems you encounter.
Table of Contents (16 chapters)
1
Part 1:Mathematical Modeling
4
Part 2:Mathematical Tools
11
Part 3:Mathematical Optimization

What this book covers

Chapter 1, Introduction to Mathematical Modeling, provides an introduction to the theory and concepts of mathematical modeling and the areas in which a mathematical model is predominant and useful.

Chapter 2, Machine Learning vis-à-vis Mathematical Modeling, describes with examples how machine learning models serve as predictive tools and classical mathematical models serve as prescriptive tools.

Chapter 3, Principal Component Analysis, provides the method to reduce the dimensionality of very high-dimensional data and examples wherein dimensionality reduction is necessary.

Chapter 4, Gradient Descent, is about an algorithm that lays the foundation for machine learning models. Variants of the gradient descent method are used to train machine learning as well as deep learning models.

Chapter 5, Support Vector Machine, provides mathematical details about an algorithm mostly utilized for data classification.

Chapter 6, Graph Theory, provides a theory that quantifies or models the relationships between interconnected entities in a network.

Chapter 7, Kalman Filter, is about a state estimation and prediction algorithm in the presence of imprecise and uncertain measurements of a dynamic system.

Chapter 8, Markov Chain, provides the theory of modeling a stochastic (random) process. The Markov chain is a class of probabilistic models that determines the next future state from knowledge of only the present state.

Chapter 9, Exploring Optimization Techniques, provides exposure to optimization algorithms used in machine learning models and those used in operations research. It also introduces you to evolutionary algorithms with examples.

Chapter 10, Optimization Techniques for Machine Learning, provides the methods for determining which algorithm to choose for the optimization of a machine learning model fitted to a dataset.