1 / 43

Lecture 3: Math Primer II

Lecture 3: Math Primer II. Machine Learning Andrew Rosenberg. Today. Wrap up of probability Vectors, Matrices. Calculus Derivation with respect to a vector. Properties of probability density functions. Sum Rule. Product Rule. Expected Values.

tieve
Télécharger la présentation

Lecture 3: Math Primer II

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Lecture 3: Math Primer II Machine Learning Andrew Rosenberg

  2. Today Wrap up of probability Vectors, Matrices. Calculus Derivation with respect to a vector.

  3. Properties of probability density functions Sum Rule Product Rule

  4. Expected Values Given a random variable, with a distribution p(X), what is the expected value of X?

  5. Multinomial Distribution If a variable, x, can take 1-of-K states, we represent the distribution of this variable as a multinomial distribution. The probability of x being in state k is μk

  6. Expected Value of a Multinomial The expected value is the mean values.

  7. Gaussian Distribution One Dimension D-Dimensions

  8. Gaussians

  9. How machine learning uses statistical modeling • Expectation • The expected value of a function is the hypothesis • Variance • The variance is the confidence in that hypothesis

  10. Variance The variance of a random variable describes how much variability around the expected value there is. Calculated as the expected squared error.

  11. Covariance The covariance of two random variables expresses how they vary together. If two variables are independent, their covariance equals zero.

  12. Linear Algebra • Vectors • A one dimensional array. • If not specified, assume x is a column vector. • Matrices • Higher dimensional array. • Typically denoted with capital letters. • n rows by m columns

  13. Transposition Transposing a matrix swaps columns and rows.

  14. Transposition Transposing a matrix swaps columns and rows.

  15. Addition • Matrices can be added to themselves iff they have the same dimensions. • A and B are both n-by-m matrices.

  16. Multiplication • To multiply two matrices, the inner dimensions must be the same. • An n-by-m matrix can be multiplied by an m-by-k matrix

  17. Inversion • The inverse of an n-by-n or squarematrix A is denoted A-1, and has the following property. • Where I is the identity matrix is an n-by-n matrix with ones along the diagonal. • Iij = 1 iffi = j, 0 otherwise

  18. Identity Matrix Matrices are invariant under multiplication by the identity matrix.

  19. Helpful matrix inversion properties

  20. Norm The norm of a vector,x, represents the euclidean length of a vector.

  21. Positive Definite-ness • Quadratic form • Scalar • Vector • Positive Definite matrix M • Positive Semi-definite

  22. Calculus Derivatives and Integrals Optimization

  23. Derivatives A derivative of a function defines the slope at a point x.

  24. Derivative Example

  25. Integrals Integration is the inverse operation of derivation (plus a constant) Graphically, an integral can be considered the area under the curve defined by f(x)

  26. Integration Example

  27. Vector Calculus Derivation with respect to a matrix or vector Gradient Change of Variables with a Vector

  28. Derivative w.r.t. a vector Given a vector x, and a function f(x), how can we find f’(x)?

  29. Derivative w.r.t. a vector Given a vector x, and a function f(x), how can we find f’(x)?

  30. Example Derivation

  31. Example Derivation Also referred to as the gradient of a function.

  32. Useful Vector Calculus identities Scalar Multiplication Product Rule

  33. Useful Vector Calculus identities Derivative of an inverse Change of Variable

  34. Optimization Have an objective function that we’d like to maximize or minimize, f(x) Set the first derivative to zero.

  35. Optimization with constraints • What if I want to constrain the parameters of the model. • The mean is less than 10 • Find the best likelihood, subject to a constraint. • Two functions: • An objective function to maximize • An inequality that must be satisfied

  36. Lagrange Multipliers Find maxima of f(x,y) subject to a constraint.

  37. General form Maximizing: Subject to: Introduce a new variable, and find a maxima.

  38. Example Maximizing: Subject to: Introduce a new variable, and find a maxima.

  39. Example Now have 3 equations with 3 unknowns.

  40. Example Eliminate Lambda Substitute and Solve

  41. Why does Machine Learning need these tools? • Calculus • We need to identify the maximum likelihood, or minimum risk. Optimization • Integration allows the marginalization of continuous probability density functions • Linear Algebra • Many features leads to high dimensional spaces • Vectors and matrices allow us to compactly describe and manipulate high dimension al feature spaces.

  42. Why does Machine Learning need these tools? • Vector Calculus • All of the optimization needs to be performed in high dimensional spaces • Optimization of multiple variables simultaneously – Gradient Descent • Want to take a marginal over high dimensional distributions like Gaussians.

  43. Next Time • Linear Regression • Then Regularization

More Related