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PATTERN RECOGNITION Fatoş Tunay Yarman Vural. Textbook : Pattern Recognition and Machine Learning , C. Bishop Reccomended Book : Pattern Theory , U. Granander , M. Miller. Course Requirement. Final:50% Project: 50% Literature Survey report : 1 April Algorithm Development :1 May
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PATTERN RECOGNITIONFatoş Tunay Yarman Vural Textbook: PatternRecognitionandMachineLearning, C. Bishop ReccomendedBook: PatternTheory, U. Granander, M. Miller
CourseRequirement Final:50% Project: 50% LiteratureSurveyreport: 1 April AlgorithmDevelopment:1 May FullPaperwithimplementation 1 June
Content 1.What is Pattern 2. ProbabilityTheory 3. BayesianParadigm 4. InformationTheory 5. LinearMethods 6.KernelMethods 7. GraphMethods
WHAT İS PATTERN Structuresregulatedbyrules Goal:Representempiricalknowledge in mathematicalforms the Mathematics of Perception Need: Algebra, probabilitytheory, graphtheory
ACTUAL SOUND The ?eel is on the shoe The ?eel is on the car The ?eel is on the table The ?eel is on the orange PERCEIVED WORDS The heel is on the shoe The wheel is on the car The meal is on the table The peel is on the orange What you perceive is not what you hear: (Warren & Warren, 1970) Statistical inference is being used!
Allflows! Heraclitos It is onlytheinvariance, thepermanentfacts, thatenable us tofindthemeaning in a world of flux. We can onlyperceivevariances Ouraim is tofindtheinvariantlaws of ourvaryingobserbvations PatternRecognition
SOURCE: Hypothesis Classes Obljects CHANNEL: Noisy OBSERVATION: Multiple sensor Variations assumption
Example Handwritten Digit Recognition
Over-fitting Root-Mean-Square (RMS) Error:
Data Set Size: 9th Order Polynomial
Data Set Size: 9th Order Polynomial
Regularization Penalize large coefficient values
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
Expectations Conditional Expectation (discrete) Approximate Expectation (discrete and continuous)
Gaussian Parameter Estimation Likelihood function
Maximum Likelihood Determine by minimizing sum-of-squares error, .
MAP: A Step towards Bayes Determine by minimizing regularized sum-of-squares error, .
Model Selection Cross-Validation
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