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More Machine Learning Linear Regression Squared Error L1 and L2 Regularization Gradient Descent.

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Presentation on theme: "More Machine Learning Linear Regression Squared Error L1 and L2 Regularization Gradient Descent."— Presentation transcript:

1 More Machine Learning Linear Regression Squared Error L1 and L2 Regularization Gradient Descent

2 Recall: Key Components of Intelligent Agents Representation Language: Graph, Bayes Nets Inference Mechanism: A*, variable elimination, Gibbs sampling Learning Mechanism: Maximum Likelihood, Laplace Smoothing, many more: linear regression, perceptron, k- Nearest Neighbor, … ------------------------------------- Evaluation Metric: Likelihood, many more: squared error, 0-1 loss, conditional likelihood, precision/recall, …

3 Recall: Types of Learning The techniques we have discussed so far are examples of a particular kind of learning: Supervised: the training examples included the correct labels or outputs. Vs. Unsupervised (or semi-supervised, or distantly-supervised, …): None (or some, or only part, …) of the labels in the training data are known. Parameter Estimation: We only tried to learn the parameters in the BN, not the structure of the BN graph. Vs. Structure learning: The BN graph is not given as an input, and the learning algorithm’s job is to figure out what the graph should look like. The distinctions below aren’t actually about the learning algorithm itself, but rather about the type of model being learned: Classification: the output is a discrete value, like Happy or not Happy, or Spam or Ham. Vs. Regression: the output is a real number. Generative: The model of the data represents a full joint distribution over all relevant variables. Vs. Discriminative: The model assumes some fixed subset of the variables will always be “inputs” or “evidence”, and it creates a distribution for the remaining variables conditioned on the evidence variables. Parametric vs. Nonparametric: I will explain this later. We won’t talk much about structure learning, but we will cover some other kinds of learning (regression, unsupervised, discriminative, nonparameteric, …) in later lectures.

4 Regression vs. Classification Our NBC spam detector was a classifier: the output Y was one of two options, Ham or Spam. More generally, classifiers give an output from a (usually small) finite (or countably infinite) set of options. E.g., predicting who will win the presidency in the next election is a classification problem (finite set of possible outcomes: US citizens). Regression models give a real number as output. E.g., predicting what the temperature will be tomorrow is a regression problem. Any real number greater than or equal to 0 (Kelvin) is a possible outcome.

5 Quiz: regression vs. classification For each prediction task below, determine whether regression or classification is more appropriate. TaskRegression or Classification? Predict who will win the Super Bowl next year Predict the gender of a baby when it’s born Predict the weight of a child one year from now Predict the average life expectancy of all babies born today Predict the price of Apple, Inc.’s stock at the close of trading tomorrow. Predict whether Microsoft or Apple will have a higher valuation at the close of trading tomorrow

6 Answers: regression vs. classification For each prediction task below, determine whether regression or classification is more appropriate. TaskRegression or Classification? Predict who will win the Super Bowl next yearC Predict the gender of a baby when it’s bornC Predict the weight of a child one year from nowR Predict the average life expectancy of all babies born todayR Predict the price of Apple, Inc.’s stock at the close of trading tomorrow. R Predict whether Microsoft or Apple will have a higher valuation at the close of trading tomorrow C

7 Concrete Example Suppose I want to buy a house that’s 2000 square feet. Predict how much it will cost. 175000

8 More realistic data Percentage of the population under the federal poverty level Violent Crime per Capita Reported Crime Statistics for U.S. Counties

9 Linear Regression Suppose there are N input variables, X 1, …, X N (all real numbers). A linear regression is a function that looks like this: Y = w 0 + w 1 X 1 + w 2 X 2 + … + w N X N The w i variables are called weights or parameters. Each one is a real number. The set of all functions that look like this (one function for each choice of weights w 0 through w N ) is called the Hypothesis Class for linear regression.

10 Hypotheses In this example, there is only one input variable: X 1 is square footage. The hypothesis class is all functions Y = w 0 + w 1 * (square footage). Several example elements of the hypothesis class are drawn. 100+900*X1 55100+900*X1 80000+270*X1

11 Learning for Linear Regression Linear regression tells us a whole set of possible functions to use for prediction. How do we choose the best one from this set? This is the learning problem for linear regression: Input: a set of training examples, where each example contains a value for (X 1, …, X N, Y) Output: a set of weights (w 0, …, w N ) for the “best-fitting” linear regression model.

12 Quiz: Learning for Linear Regression XY 1080 3040 1570 55-10 For the data on the left, what’s the best fit linear regression model?

13 Answer: Learning for Linear Regression XY 1080 3040 1570 55-10 For the data on the left, what’s the best fit linear regression model? 80 = w0 + w1 * 10 40 = w0 + w1 * 30 80-40 = w0-w0 + w1 * 10-w1*30 40 = w1 * (-20) -2 = w1 80 = w0 + (-2)*10 100 = w0 Y= 100 + (-2) * X

14 Linear Regression with Noisy Data In the previous example, we could use only two points and find a line that passed through all of the remaining points. In this example, points are only “approximately” linear. No single line passes through all points exactly. We’ll need a more complex algorithm to handle this.

15 Quadratic Loss (a.k.a. “Squared Error”) X 11 X 12 …X 1N Y1Y1 X 21 X 22 …X 2N Y2Y2 …………… X M1 X M2 …X MN YMYM

16 Objective Function

17 Closed-form Solution for 1 input variable

18

19 “Closed-form” Result

20 Quiz: Learning for Linear Regression XY 1080 3040 1570 55-10 Using the closed-form solution for Quadratic Loss, compute w0 and w1 for this dataset.

21 Answer: Learning for Linear Regression XY 1080 3040 1570 55-10 Using the closed-form solution for Quadratic Loss, compute w0 and w1 for this dataset. Note that w1, w0 match what we calculated before!

22 Overfitting and Regularization Parameter loss

23 Gradient Descent For more complex loss functions, it is often NOT POSSIBLE to find closed-form solutions. Instead, people resort to “iterative methods” that iteratively find better and better parameter estimates, until they converge to the best setting. We’ll go over one example of this kind of method, called “gradient descent”.

24 Gradient Descent Learning rate

25 Quiz: Gradient About zero a b c w LOSS a b c Check the boxes that apply.

26 Answer: Gradient About zero ax bx cx w LOSS a b c Check the boxes that apply.

27 Quiz: Gradient a b c Equal everywhere w LOSS a b c

28 Answer: Gradient a b c Equal everywherex w LOSS a b c

29 Quiz: Gradient Descent Which point will allow gradient descent to reach the global minimum, if it is used as the initialization for parameter w? a b c w LOSS a b c

30 Answer: Gradient Descent Which point will allow gradient descent to reach the global minimum, if it is used as the initialization for parameter w? a b cx w LOSS a b c


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