1

Этап 1

Done Course 1: Linear Algebra

2

Этап 2

Done Course 2: Multivariate Calculus

3

Этап 3

Done Course 3: PCA (Principal Component Analysis)

1

Этап 1

Done Course 1: Linear Algebra

2

Этап 2

Done Course 2: Multivariate Calculus

3

Этап 3

Done Course 3: PCA (Principal Component Analysis)

29 августа 2021 30 сентября 2021
Цель просрочена на 1144 дня

Цель заброшена

Автор не отписывался в цели 3 года 2 месяца 19 дней

Общая

To have knowledge about math for machine learning

My goal is complete a Specialization Course: Math for Machine Learning on Coursera. I commit learning until have 3 certificate respectively with 3 sub-course.

 Критерий завершения

Done a course on Coursera

  1. Done Course 1: Linear Algebra

    In this course on Linear Algebra we look at what linear algebra is and how it relates to vectors and matrices. Then we look through what vectors and matrices are and how to work with them, including the knotty problem of eigenvalues and eigenvectors, and how to use these to solve problems. Finally we look at how to use these to do fun things with datasets - like how to rotate images of faces and how to extract eigenvectors to look at how the Pagerank algorithm works.

    Since we're aiming at data-driven applications, we'll be implementing some of these ideas in code, not just on pencil and paper. Towards the end of the course, you'll write code blocks and encounter Jupyter notebooks in Python, but don't worry, these will be quite short, focussed on the concepts, and will guide you through if you’ve not coded before.

    At the end of this course you will have an intuitive understanding of vectors and matrices that will help you bridge the gap into linear algebra problems, and how to apply these concepts to machine learning.

    • Week 1: Introduction to Linear Algebra and to Mathematics for Machine Learning.
    • Week 2: Vector are object that move around space
    • Week 3: Matrices in Linear Algebra: Object that operate on Vector
    • Week 4: Matrices make linear mappings
    • Week 5: Eigenvalues and Eigenvectors: Application to Data Problems
  2. Done Course 2: Multivariate Calculus

    This course offers a brief introduction to the multivariate calculus required to build many common machine learning techniques. We start at the very beginning with a refresher on the “rise over run” formulation of a slope, before converting this to the formal definition of the gradient of a function. We then start to build up a set of tools for making calculus easier and faster. Next, we learn how to calculate vectors that point up hill on multidimensional surfaces and even put this into action using an interactive game. We take a look at how we can use calculus to build approximations to functions, as well as helping us to quantify how accurate we should expect those approximations to be. We also spend some time talking about where calculus comes up in the training of neural networks, before finally showing you how it is applied in linear regression models. This course is intended to offer an intuitive understanding of calculus, as well as the language necessary to look concepts up yourselves when you get stuck. Hopefully, without going into too much detail, you’ll still come away with the confidence to dive into some more focused machine learning courses in future.

    • Week 1: What is calculus ?
    • Week 2: Multivariate calculus
    • Week 3: Multivariate chain rule and its applications
    • Week 4: Taylor series and linearisation
    • Week 5: Intro to optimisation
    • Week 6: Regression
  3. Done Course 3: PCA (Principal Component Analysis)

    This intermediate-level course introduces the mathematical foundations to derive Principal Component Analysis (PCA), a fundamental dimensionality reduction technique. We'll cover some basic statistics of data sets, such as mean values and variances, we'll compute distances and angles between vectors using inner products and derive orthogonal projections of data onto lower-dimensional subspaces. Using all these tools, we'll then derive PCA as a method that minimizes the average squared reconstruction error between data points and their reconstruction.

    At the end of this course, you'll be familiar with important mathematical concepts and you can implement PCA all by yourself. If you’re struggling, you'll find a set of jupyter notebooks that will allow you to explore properties of the techniques and walk you through what you need to do to get on track. If you are already an expert, this course may refresh some of your knowledge.

    The lectures, examples and exercises require: 1. Some ability of abstract thinking 2. Good background in linear algebra (e.g., matrix and vector algebra, linear independence, basis) 3. Basic background in multivariate calculus (e.g., partial derivatives, basic optimization) 4. Basic knowledge in python programming and numpy

    Disclaimer: This course is substantially more abstract and requires more programming than the other two courses of the specialization. However, this type of abstract thinking, algebraic manipulation and programming is necessary if you want to understand and develop machine learning algorithms.

    • Week 1: Statistics of Datasets
    • Week 2: Inner Products
    • Week 3: Orthogonal Projections
    • Week 4: Principal Component Analysis
  • 497
  • 29 августа 2021, 05:04
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