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Unconstrained Optimization Rong Jin. Logistic Regression The optimization problem is to find weights w and b that maximizes the above log-likelihood How.

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Presentation on theme: "Unconstrained Optimization Rong Jin. Logistic Regression The optimization problem is to find weights w and b that maximizes the above log-likelihood How."— Presentation transcript:

1 Unconstrained Optimization Rong Jin

2 Logistic Regression The optimization problem is to find weights w and b that maximizes the above log-likelihood How to do it efficiently ?

3 Gradient Ascent  Compute the gradient  Increase weights w and threshold b in the gradient direction

4 Problem with Gradient Ascent  Difficult to find the appropriate step size Small   slow convergence Large   oscillation or “bubbling”  Convergence conditions Robbins-Monroe conditions Along with “regular” objective function will ensure convergence 

5 Newton Method  Utilizing the second order derivative  Expand the objective function to the second order around x 0  The minimum point is  Newton method for optimization  Guarantee to converge when the objective function is convex

6 Multivariate Newton Method  Object function comprises of multiple variables Example: logistic regression model Text categorization: thousands of words  thousands of variables  Multivariate Newton Method Multivariate function: First order derivative  a vector Second order derivative  Hessian matrix  Hessian matrix is mxm matrix  Each element in Hessian matrix is defined as:

7 Multivariate Newton Method  Updating equation:  Hessian matrix for logistic regression model  Can be expensive to compute Example: text categorization with 10,000 words Hessian matrix is of size 10,000 x 10,000  100 million entries Even worse, we have compute the inverse of Hessian matrix H -1

8 Quasi-Newton Method  Approximate the Hessian matrix H -1 with another B matrix:  B is update iteratively (BFGS): Utilizing derivatives of previous iterations

9 Limited-Memory Quasi-Newton  Quasi-Newton Avoid computing the inverse of Hessian matrix But, it still requires computing the B matrix  large storage  Limited-Memory Quasi-Newton (L-BFGS) Even avoid explicitly computing B matrix B can be expressed as a product of vectors Only keep the most recently vectors of (3~20)

10 Efficiency Number of Variable Standard Newton method: O(n 3 ) Small Medium Quasi Newton method (BFGS): O(n 2 ) Limited-memory Quasi Newton method (L-BFGS): O(n) Large Convergence Rate V-Fast Fast R-Fast

11 Empirical Study: Learning Conditional Exponential Model DatasetInstancesFeatures Rule29,602246 Lex42,509135,182 Summary24,044198,467 Shallow8,625,782264,142 DatasetIterationsTime (s) Rule3504.8 811.13 Lex1545114.21 17620.02 Summary3321190.22 698.52 Shallow1452785962.53 4212420.30 Limited-memory Quasi-Newton method Gradient ascent

12 Free Software  http://www.ece.northwestern.edu/~nocedal/so ftware.html http://www.ece.northwestern.edu/~nocedal/so ftware.html L-BFGS L-BFGSB

13 Linear Conjugate Gradient Method  Consider optimizing the quadratic function  Conjugate vectors The set of vector {p 1, p 2, …, p l } is said to be conjugate with respect to a matrix A if Important property  The quadratic function can be optimized by simply optimizing the function along individual direction in the conjugate set. Optimal solution:   k is the minimizer along the kth conjugate direction

14 Example  Minimize the following function  Matrix A  Conjugate direction  Optimization First direction, x 1 = x 2 =x: Second direction, x 1 =- x 2 =x: Solution: x 1 = x 2 =1

15 How to Efficiently Find a Set of Conjugate Directions  Iterative procedure Given conjugate directions {p 1,p 2,…, p k-1 } Set p k as follows: Theorem: The direction generated in the above step is conjugate to all previous directions {p 1,p 2,…, p k-1 }, i.e., Note: compute the k direction p k only requires the previous direction p k-1

16 Nonlinear Conjugate Gradient  Even though conjugate gradient is derived for a quadratic objective function, it can be applied directly to other nonlinear functions  Several variants: Fletcher-Reeves conjugate gradient (FR-CG) Polak-Ribiere conjugate gradient (PR-CG)  More robust than FR-CG  Compared to Newton method No need for computing the Hessian matrix No need for storing the Hessian matrix


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