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1 CMSC 671 Fall 2001 Class #25-26 – Tuesday, November 27 / Thursday, November 29.

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Presentation on theme: "1 CMSC 671 Fall 2001 Class #25-26 – Tuesday, November 27 / Thursday, November 29."— Presentation transcript:

1 1 CMSC 671 Fall 2001 Class #25-26 – Tuesday, November 27 / Thursday, November 29

2 2 Today’s class Neural networks Bayesian learning

3 3 Machine Learning: Neural and Bayesian Chapter 19 Some material adapted from lecture notes by Lise Getoor and Ron Parr

4 4 Neural function Brain function (thought) occurs as the result of the firing of neurons Neurons connect to each other through synapses, which propagate action potential (electrical impulses) by releasing neurotransmitters Synapses can be excitatory (potential-increasing) or inhibitory (potential-decreasing), and have varying activation thresholds Learning occurs as a result of the synapses’ plasticicity: They exhibit long-term changes in connection strength There are about 10 11 neurons and about 10 14 synapses in the human brain

5 5 Biology of a neuron

6 6 Brain structure Different areas of the brain have different functions –Some areas seem to have the same function in all humans (e.g., Broca’s region); the overall layout is generally consistent –Some areas are more plastic, and vary in their function; also, the lower-level structure and function vary greatly We don’t know how different functions are “assigned” or acquired –Partly the result of the physical layout / connection to inputs (sensors) and outputs (effectors) –Partly the result of experience (learning) We really don’t understand how this neural structure leads to what we perceive as “consciousness” or “thought” Our neural networks are not nearly as complex or intricate as the actual brain structure

7 7 Comparison of computing power Computers are way faster than neurons… But there are a lot more neurons than we can reasonably model in modern digital computers, and they all fire in parallel Neural networks are designed to be massively parallel The brain is effectively a billion times faster

8 8 Neural networks Neural networks are made up of nodes or units, connected by links Each link has an associated weight and activation level Each node has an input function (typically summing over weighted inputs), an activation function, and an output

9 9 Layered feed-forward network Output units Hidden units Input units

10 10 Neural unit

11 11 “Executing” neural networks Input units are set by some exterior function (think of these as sensors), which causes their output links to be activated at the specified level Working forward through the network, the input function of each unit is applied to compute the input value –Usually this is just the weighted sum of the activation on the links feeding into this node The activation function transforms this input function into a final value –Typically this is a nonlinear function, often a sigmoid function corresponding to the “threshold” of that node

12 12 Learning neural networks Backpropagation Cascade correlation: adding hidden units

13 13 Learning Bayesian networks Given training set Find B that best matches D –model selection –parameter estimation Data D Inducer C A EB

14 14 Parameter estimation Assume known structure Goal: estimate BN parameters  –entries in local probability models, P(X | Parents(X)) A parameterization  is good if it is likely to generate the observed data: Maximum Likelihood Estimation (MLE) Principle: Choose   so as to maximize L i.i.d. samples

15 15 Parameter estimation in BNs The likelihood decomposes according to the structure of the network → we get a separate estimation task for each parameter The MLE (maximum likelihood estimate) solution: –for each value x of a node X –and each instantiation u of Parents(X) –Just need to collect the counts for every combination of parents and children observed in the data –MLE is equivalent to an assumption of a uniform prior over parameter values sufficient statistics

16 16 Sufficient statistics: Example Why are the counts sufficient? EarthquakeBurglary Alarm Moon-phase Light-level

17 17 Model selection Goal: Select the best network structure, given the data Input: –Training data –Scoring function Output: –A network that maximizes the score

18 18 Structure selection: Scoring Bayesian: prior over parameters and structure –get balance between model complexity and fit to data as a byproduct Score (G:D) = log P(G|D)  log [P(D|G) P(G)] Marginal likelihood just comes from our parameter estimates Prior on structure can be any measure we want; typically a function of the network complexity Same key property: Decomposability Score(structure) =  i Score(family of X i ) Marginal likelihood Prior

19 19 Heuristic search B E A C B E A C B E A C B E A C Δscore(C) Add E  C Δscore(A) Delete E  A Δscore(A) Reverse E  A

20 20 Exploiting decomposability B E A C B E A C B E A C Δscore(C) Add E  C Δscore(A) Delete E  A Δscore(A) Reverse E  A B E A C Δscore(A) Delete E  A To recompute scores, only need to re-score families that changed in the last move

21 21 Variations on a theme Known structure, fully observable: only need to do parameter estimation Unknown structure, fully observable: do heuristic search through structure space, then parameter estimation Known structure, missing values: use expectation maximization (EM) to estimate parameters Known structure, hidden variables: apply adaptive probabilistic network (APN) techniques Unknown structure, hidden variables: too hard to solve!

22 22 Handling missing data Suppose that in some cases, we observe earthquake, alarm, light-level, and moon-phase, but not burglary Should we throw that data away?? Idea: Guess the missing values based on the other data EarthquakeBurglary Alarm Moon-phase Light-level

23 23 EM (expectation maximization) Guess probabilities for nodes with missing values (e.g., based on other observations) Compute the probability distribution over the missing values, given our guess Update the probabilities based on the guessed values Repeat until convergence

24 24 EM example Suppose we have observed Earthquake and Alarm but not Burglary for an observation on November 27 We estimate the CPTs based on the rest of the data We then estimate P(Burglary) for November 27 from those CPTs Now we recompute the CPTs as if that estimated value had been observed Repeat until convergence! EarthquakeBurglary Alarm


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