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15 Math Concepts Every Data Scientist Should Know

15 Math Concepts Every Data Scientist Should Know

By : David Hoyle
4.3 (6)
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15 Math Concepts Every Data Scientist Should Know

15 Math Concepts Every Data Scientist Should Know

4.3 (6)
By: David Hoyle

Overview of this book

Data science combines the power of data with the rigor of scientific methodology, with mathematics providing the tools and frameworks for analysis, algorithm development, and deriving insights. As machine learning algorithms become increasingly complex, a solid grounding in math is crucial for data scientists. David Hoyle, with over 30 years of experience in statistical and mathematical modeling, brings unparalleled industrial expertise to this book, drawing from his work in building predictive models for the world's largest retailers. Encompassing 15 crucial concepts, this book covers a spectrum of mathematical techniques to help you understand a vast range of data science algorithms and applications. Starting with essential foundational concepts, such as random variables and probability distributions, you’ll learn why data varies, and explore matrices and linear algebra to transform that data. Building upon this foundation, the book spans general intermediate concepts, such as model complexity and network analysis, as well as advanced concepts such as kernel-based learning and information theory. Each concept is illustrated with Python code snippets demonstrating their practical application to solve problems. By the end of the book, you’ll have the confidence to apply key mathematical concepts to your data science challenges.
Table of Contents (21 chapters)
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1
Part 1: Essential Concepts
7
Part 2: Intermediate Concepts
13
Part 3: Selected Advanced Concepts

Hypothesis Testing

Hypothesis tests are a ubiquitous part of classical statistics. They often have a very simple objective, such as testing whether two samples of data indicate there is a difference in the means of the underlying populations from which those samples were taken. Despite the simplicity of these aims and questions, hypothesis tests have very practical applications. The question of whether two populations have different means is precisely what we ask when running an A/B test to decide whether the A variant of an e-commerce site has a higher click-through rate, compared to the B variant. As such, hypothesis testing is an important skill to master for any data scientist working with real-world data. Despite the simplicity of the question that a hypothesis test asks, the mathematical machinery needed to run a hypothesis test is full of concepts and nuances that can trip up a new data scientist – concepts such as p-values, degrees of freedom, confidence intervals, Type...

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15 Math Concepts Every Data Scientist Should Know
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