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This code solves the high-order sparse linear prediction problem using Douglas-Rachford (DR) and Alternating direction method of multipliers (ADMM)
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giacobello/HighOrderSparseLP_fast
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The slp_sm (sparse linear prediction with splitting methods) solves the sparse linear prediction problem minimize ||x-Xa||_1 + gamma ||a||_1 a where X is a convolution matrix formed from the signal x. The considered methods for solving the above problem are 1: Douglas-Rachford (DR) 2: Alternating direction method of multipliers (ADMM) Provided is both a Matlab and a C++ implementation. mlib/utilities: Matlab implementation src: C++ implementation This software is used in the paper Fast Algorithms for High-Order Sparse Linear Prediction with Applications to Speech Processing Tobias L. Jensen, Daniele Giacobello, Toon van Waterschoot and Mads G. Christensen Speech Communication, 2016 Please give reference if you use this software. = MATLAB: ========= To use the matlab implementation, it is necessary to compile two c-files. To do this first run "make" in the root directory of this software. If you do not have a c-compiler, follow the instructions on the screen. Then add /mlib and /utilities to your path. An example of usage is given in /example/example_dr_admm_slp.m Location: /mlib and /utilities Requirements: + A c-compiler The following libraries are necessary for running the tests: - mlib/test.m and utilities/test.m + Matlabs unittest framework. Available from release 2013a + cvx: http://cvxr.com/cvx/ = C++ implementation: ===================== Location: /src The following libraries are are necessary for running the programs: + fftw3 library (fftw.org) + BLAS and LAPACK libraries / optional Math Kernel Library (MKL) The following libraries are necessary for running the tests in src/unittest: + Googletest, https://code.google.com/p/googletest/ + fftw3 library (fftw.org) + BLAS and LAPACK libraries / optional Math Kernel Library (MKL) The C++ source code is implemented to benefit from Math Kernel Library If you want to make use of this, compile with -DMKL and add the necessary libraries to the link command. Otherwise, a link command along the lines -lblas -llapack -lfftw3 -lfftw3f should do. See src/Makefile
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This code solves the high-order sparse linear prediction problem using Douglas-Rachford (DR) and Alternating direction method of multipliers (ADMM)
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