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Efficient Model Selection for Support Vector Machines

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Presentation on theme: "Efficient Model Selection for Support Vector Machines"— Presentation transcript:

1 Efficient Model Selection for Support Vector Machines
Shibdas Bandyopadhyay

2 Outline Brief Introduction to SVM Cross-Validation
Methods for Parameter tuning Grid Search Genetic Algorithm Auto-tuning for Classification Results Conclusion Pattern Search for Regression

3 Support Vector Machines
Classification - Given a set (x1, y1), (x2, y2),…, (xm, ym)  (X, Y) where X = set of input vectors and Y = set of classes, we are to predict the class y for an unseen x  X Regression - Given a set (x1, y1), (x2, y2),…, (xm, ym)  (X, Y) where X = set of input vectors and Y = set of values, we are to predict the value y for an unseen x  X A+ A- -Tube

4 Support Vector Machines
Kernels - kernel maps the linearly non-separable data in to higher dimensional feature space where it may become linearly separable f

5 Support Vector Classification
Soft Margin Classifier Optimization Problem minimize Subject to where C(>0) is the trade-off between margin maximization and training error minimization

6 10 fold Cross Validation Testing Training Testing

7 Cross-Validation Widely regarded as the best method to measure the generalization error (Test error) Training set is divided into p folds Training runs are done using all possible combinations of (p – 1) training folds Testing is done on the remaining fold for each run We are to find the parameter values for which average cross-validation error is minimum

8 Model Parameter Selection
Consider RBF kernel and SVM Classification (Soft Margin Case) RBF Kernel is given by Two Parameters C (trade-off of soft margin case) and of Kernel. Benchmark Dataset – Breast Cancer (100 realizations) Change of parameters changes the test Error Parameters should be chosen such that test error is minimal

9 Approach Range input Raw data C, gamma Parameter selection SVM classifier misclass. error optimal C and gamma SVM classifier final results

10 Methods for parameter tuning
Grid Search Genetic Algorithm Auto-tuning for Classification

11 Grid Search Two Dimensional Parameter Space 1000 714.3 1 428.5
2857, 571.5 428.5 1 428.5 1 C 2142.8 3571.4 C Two Dimensional Parameter Space

12 Grid Search Simple technique resembling exhaustive search
Take exponentially increasing values in a particular range Find the set with minimum Cross-validation error Adjust the new range in the neighborhood of that chosen set Repeat the process until a satisfactory value for cross-validation error is obtained

13 Genetic Algorithm Genetic Algorithm is a subclass of “Evolutionary Computing” It is based on Darwin’s theory of evolution Widely accepted for parameter search and optimization Has a high probability of finding the global optimum

14 Genetic Algorithm - Steps
Selection - “Survival of the fittest”. Choose the set of parameter values for which the objective function is optimal Cross-Over - Combine the chosen values Mutation - Modify the combined values to produce the next generation

15 Genetic Algorithm –Selection
Set a criterion for choosing parents which will cross-over For example, Two individual or binary strings are selected with 1’s preferred over 0’s . 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1

16 Genetic Algorithm – Cross - Over
Combine the chosen parents to produce the offspring For example, two parents represented as binary strings performing cross–over 1 1 1 1 1 1 X 1 1 1 1

17 Genetic Algorithm - Mutation
Structure of the produced offspring is changed Prevents the algorithm from being trapped in a local minima For example, the produced is mutated ( one bit position is flipped) 1 1

18 Genetic Algorithm - Coding
Parameters are to be coded into strings before applying GA Real – Coded GA operates on real numbers Simulates the cross-over and mutation through various operators Simulated Binary Cross-over and polynomial mutation operators are used

19 Auto-tuning Consider a bound for the expected generalization error
Try to minimize it by varying the parameters Apply well known minimization procedures to make this “automatic”

20 Generalization Error Estimates
Validation Error - Keep a part of the training data for validation - Find the error while performing tests on validation set - Try to minimize the error on that set Leave One-out Error - Keep one element of training data set for testing - Do training on the remaining elements - Test the element which was previously removed - Do this for all training data elements - Provides an unbiased estimate of the expected generalization error

21 Leave-One-Out Bounds Span Bound
where Sp is the distance between the point and where Radius-margin Bound where R is the radius of the smallest sphere enclosing all data points and M is the margin obtained from SVM optimization solution

22 Why Radius-margin Bound?
It can be thought of an upper bound of the span-bound,which is an accurate estimate of the test error Minimization of the span-bound is more difficult to implement and to control(more local minima) Margin can be obtained from the solution of SVM optimization problem Radius can be calculated by solving a Quadratic optimization problem Soft-margin SVM can be easily incorporated by modifying the kernel of the hard margin version so that C will be considered just as another parameter of the kernel function

23 Auto-tuning - Steps M = 1 / ||w||, where ||w|| can be obtained by solving the problem: maximize subject to R is obtained by solving the Quadratic Optimization Problem

24 Auto-tuning - Steps Let θ = set of parameters. Steps are as follows:-
Initialize θ to some value Using SVM find the maximum of W Update θ by a minimization method such that T is minimized Go to step 2 or stop when minimum of T is achieved

25 Results Methods are tested on five benchmark datasets
Mean Error, Minimum error among 100 realizations, Maximum error among 100 realizations and std. deviation is reported Breast-Cancer Dataset Thyroid Dataset Titanic Dataset Heart Dataset Diabetics Dataset

26 Classification Results – Breast Cancer Dataset
Number of train patterns : 200 Number of test patterns : 77 Input dimension : 9 Output dimension : 1 Methods Mean Error Min. Error Max. Error Standard Deviation Benchmark 26.04 4.74 Grid Search 27.22 14.58 36.36 4.75 Auto-tuning 27.47 16.88 3.97 Genetic Algorithm 25.40 15.58 33.77 4.39

27 Classification Results – Thyroid Dataset
Number of train patterns : 140 Number of test patterns : 75 Input dimension : 5 Output dimension : 1 Methods Mean Error Min. Error Max. Error Standard Deviation Benchmark 4.80 2.19 Grid Search 4.32 8.00 1.74 Auto-tuning 4.56 9.333 2.02 Genetic Algorithm 4.44 10.667 2.43

28 Classification Results – Titanic Dataset
Number of train patterns : 150 Number of test patterns : 2051 Input dimension : 3 Output dimension : 1 Methods Mean Error Min. Error Max. Error Standard Deviation Benchmark 22.42 1.02 Grid Search 23.08 21.55 33.21 1.18 Auto-tuning 23.01 20.87 1.33 Genetic Algorithm 22.66 21.69 1.11

29 Classification Results – Heart Dataset
Number of train patterns : 170 Number of test patterns : 100 Input dimension : 13 Output dimension : 1 Methods Mean Error Min. Error Max. Error Standard Deviation Benchmark 15.95 3.26 Grid Search 15.49 8.00 23.00 3.29 Auto-tuning 15.65 3.21 Genetic Algorithm 15.87 10.00 25.00 3.27

30 Classification Results – Diabetis Dataset
Number of train patterns : 468 Number of test patterns : 300 Input dimension : 8 Output dimension : 1 Methods Mean Error Min. Error Max. Error Standard Deviation Benchmark 23.53 1.73 Grid Search 23.14 19.33 26.67 1.17 Auto-tuning 23.68 27.33 1.68 Genetic Algorithm 23.69 19.00 28.33 1.71

31 Conclusion Grid Search is the best technique if the number of parameters is low as it does an exhaustive search on the parameter space Auto-tuning performs much less number of training runs in all cases Genetic Algorithm is quite steady and gives near-optimal solutions Future work would be to test these techniques for regression Analysis of pattern search method for regression

32 Support Vector Regression
Regression Estimate Optimization Problem maximize subject to

33 Pattern Search Simple and efficient optimization technique
No derivatives, only direct function evaluations are needed It gets rarely trapped in a bad local minima Converges rapidly to an optimum

34 Pattern Search

35 Pattern Search Patterns determine which points on the parameter space are searched Pattern is usually specified by a matrix. We have considered the matrix which corresponds to the pattern obtained from (x,y+d) d (x-d,y) d (x,y) d (x+d,y) d (x,y-d)

36 Pattern Search - Algorithm
Cross-validation error is the function to be minimized Fix a pattern matrix Pk, set sk = 0 Given and , randomly pick an initial center of pattern qk Compute the function value f(qk) and set min f(qk) If < then stop For i =1 … (p -1) where p is the number of columns in Pk compute if < min then go to step 2

37 Thank You Mail your Questions/ Suggestions at:

38 Genetic Algorithm - Implementation
Simulated Binary Cross - over - ui is chosen randomly between 0 and 1. - βi follows the distribution - find out such that cumulative probability density is ui

39 Genetic Algorithm – Implementation (Cont…)
- Generate the offspring xi(1,t+1) and xi(2,t+1) from parents xi(1,t) and xi(2,t). Polynomial Mutation - A random number ri is selected between 0 and 1. - is found out such that cumulative probability of polynomial distribution up to is ri. The polynomial distribution can be written as: - Mutated offspring are obtained using the following rule: where and are respectively the upper and lower bound on xi.

40 LOO Bounds Jaakola-Haussler Bound Opper-Winther Bound
where is the α’s obtained from the solution of SVM optimization problem in case of testing with ‘p’th training example and where is the step function when x > 0 and otherwise. is the number of elements in the training set. Opper-Winther Bound where KSV is the matrix of dot product of support vectors.

41 Support Vector Classification
Finds the optimal hyper-plane which separates the two classes in feature space Decision Function Quadratic Optimization Problem minimize subject to for all i = 1…m


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