Sparser Johnson-Lindenstrauss Transforms 论文

2014Journal of the ACM引用 258
Sparse and Compressive Sensing TechniquesAdvanced Data Compression TechniquesStochastic Gradient Optimization Techniques

摘要

We give two different and simple constructions for dimensionality reduction in ℓ 2 via linear mappings that are sparse: only an O ( ε )-fraction of entries in each column of our embedding matrices are non-zero to achieve distortion 1 + ε with high probability, while still achieving the asymptotically optimal number of rows. These are the first constructions to provide subconstant sparsity for all values of parameters, improving upon previous works of Achlioptas [2003] and Dasgupta et al. [2010]. Such distributions can be used to speed up applications where ℓ 2 dimensionality reduction is used.