Title: Tom M' Mitchell
1Machine Learning
Tom M. Mitchell Carnegie Mellon University March
2003 For more, see Machine Learning, Tom
Mitchell, McGraw Hill, 1997.
2Learning to Predict Emergency C-Sections
9714 patient records, each with 215 features
3Artificial Neural Network for Recognizing Speech
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6Train Software to Decode Cognitive States from
fMRI data
Examining a verb
7Function Approximation Problem
- Problem setting
- set of instances X
- target function to be learned f X ! Y
- candidate hypotheses h X ! Y
- Input
- Training examples lt xi, yi gt
- Output
- hypothesis h that is best estimate of f
8Function Approximation
- Many algorithms for different problems
- Decision trees
- Artificial neural networks
- Linear regression, Logistic regression
- k Nearest Neighbor
- naïve Bayes classifier
- Bayesian networks
- Support Vector Machines
-
9Bayes Rule
Which is shorthand for
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20For code, see www.cs.cmu.edu/tom/mlbook.html
click on Software and Data
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25How can we implement this if the ai are
continuous-valued attributes?
26Also called Gaussian distribution
27Gaussian
Assume P(aivj) follows Gaussian distribution,
use training data to estimate its mean and
variance