• Medientyp: Elektronischer Konferenzbericht; E-Artikel; Sonstige Veröffentlichung
  • Titel: Approximate Sparse Linear Regression
  • Beteiligte: Har-Peled, Sariel [VerfasserIn]; Indyk, Piotr [VerfasserIn]; Mahabadi, Sepideh [VerfasserIn]
  • Erschienen: Schloss Dagstuhl – Leibniz-Zentrum für Informatik, 2018
  • Sprache: Englisch
  • DOI: https://doi.org/10.4230/LIPIcs.ICALP.2018.77
  • Schlagwörter: Sparse Linear Regression ; Nearest Subspace Search ; Sparse Recovery ; Approximate Nearest Neighbor ; Nearest Induced Flat
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  • Beschreibung: In the Sparse Linear Regression (SLR) problem, given a d x n matrix M and a d-dimensional query q, the goal is to compute a k-sparse n-dimensional vector tau such that the error ||M tau - q|| is minimized. This problem is equivalent to the following geometric problem: given a set P of n points and a query point q in d dimensions, find the closest k-dimensional subspace to q, that is spanned by a subset of k points in P. In this paper, we present data-structures/algorithms and conditional lower bounds for several variants of this problem (such as finding the closest induced k dimensional flat/simplex instead of a subspace). In particular, we present approximation algorithms for the online variants of the above problems with query time O~(n^{k-1}), which are of interest in the "low sparsity regime" where k is small, e.g., 2 or 3. For k=d, this matches, up to polylogarithmic factors, the lower bound that relies on the affinely degenerate conjecture (i.e., deciding if n points in R^d contains d+1 points contained in a hyperplane takes Omega(n^d) time). Moreover, our algorithms involve formulating and solving several geometric subproblems, which we believe to be of independent interest.
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