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arxiv: 1405.6785 · v1 · pith:HM7PNV3Wnew · submitted 2014-05-27 · 💻 cs.DS

Optimal Algorithms for L₁-subspace Signal Processing

classification 💻 cs.DS
keywords optimalsignalsubspacealgorithmcasedatadimensionasymptotically
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We describe ways to define and calculate $L_1$-norm signal subspaces which are less sensitive to outlying data than $L_2$-calculated subspaces. We start with the computation of the $L_1$ maximum-projection principal component of a data matrix containing $N$ signal samples of dimension $D$. We show that while the general problem is formally NP-hard in asymptotically large $N$, $D$, the case of engineering interest of fixed dimension $D$ and asymptotically large sample size $N$ is not. In particular, for the case where the sample size is less than the fixed dimension ($N<D$), we present in explicit form an optimal algorithm of computational cost $2^N$. For the case $N \geq D$, we present an optimal algorithm of complexity $\mathcal O(N^D)$. We generalize to multiple $L_1$-max-projection components and present an explicit optimal $L_1$ subspace calculation algorithm of complexity $\mathcal O(N^{DK-K+1})$ where $K$ is the desired number of $L_1$ principal components (subspace rank). We conclude with illustrations of $L_1$-subspace signal processing in the fields of data dimensionality reduction, direction-of-arrival estimation, and image conditioning/restoration.

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