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1 Kernel based data fusion Discussion of a Paper by G. Lanckriet.

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1 1 Kernel based data fusion Discussion of a Paper by G. Lanckriet

2 2 Paper

3 3 Overview Problem: Aggregation of heterogeneous data Idea: Different data are represented by different kernels Question: How to combine different kernels in an elegant/efficient way? Solution: Linear combination and SDP Application: Recognition of ribosomal and membrane proteins

4 4 Linear combination of kernels weightkernel  Resulting kernel K is positive definite (x T Kx > 0 for x, provided  i > 0 and x T K i x > 0 )  Elegant aggregation of heterogeneous data  More efficient than training of individual SVMs  KCCA uses unweighted sum over individual kernels x T Kx = x 2 K x x2Kx2K 0

5 5 Support Vector Machine slack variables square norm vector penalty term Hyperplane

6 6 Dual form Lagrange multipliers quadratic, convex  Maximization instead of minimization  Equality constraints  Lagrange multipliers  instead of w,b,  Quadratic program (QP) positive definite scalar  0

7 7 Inserting linear combination Combined kernel must be within the cone of positive semidefinite matrices Fixed trace, avoids trivial solution ugly

8 8 Cone and other stuff http://www.convexoptimization.com/dattorro/positive_semidefinate_cone.html The set of all symmetric positive semidefinite matrices of particular dimension is called the positive semidefinite cone. x T Ax ≥ 0, x A Positive semidefinite: Positive semidefinite cone:

9 9 Semidefinite program (SDP) positive semidefinite constraints Fixed trace, avoids trivial solution

10 10 Dual form  Quadratically constraint quadratic program (QCQP)  QCQPs can be solved more efficiently than SDPs (O(n 3 ) O(n 4.5 ))  Interior point methods quadratic constraint

11 11 Interior point algorithm Linear program: maximize c T x subject to Ax < b x ≥ 0  Classical Simplex method follows edges of polyhedron  Interior point methods walk through the interior of the feasible region

12 12 Application  Recognition of ribosomal and membrane proteins in yeast  3 Types of data Amino acid sequences Protein protein interactions mRNA expression profiles  7 Kernels Empirical kernel map -> sequence homology  BLAST(B), Smith-Waterman(SW), Pfam FFT -> sequence hydropathy  KD hydropathy profiles, padding, low-pass filter, FFT, RBF Interaction kernel(LI) -> PPI Diffusion(D) -> PPI RBF(E) -> gene expression

13 13 Results  Combination of kernels performs better than individual kernels  Gene expression (E) most important for ribosomal protein recognition  PPI (D) most important for membrane protein recognition

14 14 Results  Small improvement compared to weights = 1  SDP robust in the presence of noise  How performs SDP versus kernel weights derived from accuracy of individual SVMs?  Membrane protein recognition Other methods use sequence information only TMHMM designed for topology prediction TMHMM not trained on yeast only

15 15 Why is this cool? Everything you ever dreamed of:  Optimization of C included (2-norm soft margin SVM =1/C)  Hyperkernels (optimize the kernel itself)  Transduction (learn from labeled & unlabeled samples in polynomial time)  SDP has many applications (Graph theory, combinatorial optimization, …)

16 16 Literature  Learning the kernel matrix with semidefinite programming G.R.G.Lanckrit et. al, 2004  Kernel-based data fusion and its application to protein function prediction in yeast G.R.G.Lanckrit et. al, 2004  Machine learning using Hyperkernels C.S.Ong, A.J.Smola, 2003  Semidefinite optimization M.J.Todd, 2001  http://www-user.tu-chemnitz.de/~helmberg/semidef.html

17 17 Software  SeDuMi (SDP)  Mosek (QCQP, Java,C++, commercial)  YALMIP (Matlab) … http://www-user.tu-chemnitz.de/~helmberg/semidef.html


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