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Machine Learning CMPT 726 Simon Fraser University. CHAPTER 1: INTRODUCTION. Outline. Comments on general approach. Probability Theory. Joint, conditional and marginal probabilities. Random Variables. Functions of R.V.s Bernoulli Distribution (Coin Tosses).
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Machine LearningCMPT 726Simon Fraser University CHAPTER 1: INTRODUCTION
Outline • Comments on general approach. • Probability Theory. • Joint, conditional and marginal probabilities. • Random Variables. • Functions of R.V.s • Bernoulli Distribution (Coin Tosses). • Maximum Likelihood Estimation. • Bayesian Learning With Conjugate Prior. • The Gaussian Distribution. • Maximum Likelihood Estimation. • Bayesian Learning With Conjugate Prior. • More Probability Theory. • Entropy. • KL Divergence.
Our Approach • The course generally follows statistics, very interdisciplinary. • Emphasis on predictive models: guess the value(s) of target variable(s). “Pattern Recognition” • Generally a Bayesian approach as in the text. • Compared to standard Bayesian statistics: • more complex models (neural nets, Bayes nets) • more discrete variables • more emphasis on algorithms and efficiency
Things Not Covered Within statistics: Hypothesis testing Frequentist theory, learning theory. Other types of data (not random samples) Relational data Scientific data (automated scientific discovery) Action + learning = reinforcement learning.Could be optional – what do you think?
Probability Theory Apples and Oranges
Probability Theory Marginal Probability Conditional Probability Joint Probability
Probability Theory Sum Rule Product Rule
The Rules of Probability Sum Rule Product Rule
Bayes’ Theorem posterior likelihood × prior
Bayes’ Theorem: Model Version • Let M be model, E be evidence. • P(M|E) proportional to P(M) x P(E|M) • Intuition • prior = how plausible is the event (model, theory) a priori before seeing any evidence. • likelihood = how well does the model explain the data?
Expectations Conditional Expectation (discrete) Approximate Expectation (discrete and continuous)
Reading exponential prob formulas In infinite space, cannot just form sumΣx p(x) grows to infinity. Instead, use exponential, e.g.p(n) = (1/2)n Suppose there is a relevant feature f(x) and I want to express that “the greater f(x) is, the less probable x is”. Use p(x) = exp(-f(x)).
Example: exponential form sample size Fair Coin: The longer the sample size, the less likely it is. p(n) = 2-n. ln[p(n)] Sample size n
Exponential Form: Gaussian mean The further x is from the mean, the less likely it is. ln[p(x)] 2(x-μ)
Smaller variance decreases probability The smaller the variance σ2, the less likely x is (away from the mean). ln[p(x)] -σ2
Minimal energy = max probability The greater the energy (of the joint state), the less probable the state is. ln[p(x)] E(x)
Gaussian Parameter Estimation Likelihood function
Maximum Likelihood Determine by minimizing sum-of-squares error, .
Frequentism vs. Bayesianism Frequentists: probabilities are measured as the frequencies of repeatable events. E.g., coin flips, snow falls in January. Bayesian: in addition, allow probabilities to be attached to parameter values (e.g., P(μ=0). Frequentist model selection: give performance guarantees (e.g., 95% of the time the method is right). Bayesian model selection: choose prior distribution over parameters, maximize resulting cost function (posterior).
MAP: A Step towards Bayes Determine by minimizing regularized sum-of-squares error, .
Model Selection Cross-Validation
Curse of Dimensionality Rule of Thumb: 10 datapoints per parameter.
Curse of Dimensionality Polynomial curve fitting, M = 3 Gaussian Densities in higher dimensions
Decision Theory Inference step Determine either or . Decision step For given x, determine optimal t.
Minimum Expected Loss Example: classify medical images as ‘cancer’ or ‘normal’ Decision Truth
Minimum Expected Loss Regions are chosen to minimize
Why Separate Inference and Decision? Minimizing risk (loss matrix may change over time) Unbalanced class priors Combining models
Decision Theory for Regression Inference step Determine . Decision step For given x, make optimal prediction, y(x), for t. Loss function:
Generative vs Discriminative Generative approach: Model Use Bayes’ theorem Discriminative approach: Model directly
Entropy • Important quantity in • coding theory • statistical physics • machine learning
Entropy Coding theory: x discrete with 8 possible states; how many bits to transmit the state of x? All states equally likely
The Maximum Entropy Principle Commonly used principle for model selection: maximize entropy. Example: In how many ways can N identical objects be allocated M bins? Entropy maximized when
Differential Entropy and the Gaussian Put bins of width ¢along the real line Differential entropy maximized (for fixed ) when in which case