资源论文Understanding Sparse JL for Feature Hashing

Understanding Sparse JL for Feature Hashing

2020-02-20 | |  47 |   38 |   0

Abstract

Feature hashing and other random projection schemes are commonly used to reduce the dimensionality of feature vectors. The goal is to efficiently project a high-dimensional feature vector living in 图片.png into a much lower-dimensional space 图片.png  while approximately preserving Euclidean norm. These schemes can be constructed using sparse random projections, for example using a sparse JohnsonLindenstrauss (JL) transform. A line of work introduced by Weinberger et. al (ICML ’09) analyzes the accuracy of sparse JL with sparsity 1 on feature vectors with small 图片.png -to-图片.png norm ratio. Recently, Freksen, Kamma, and Larsen (NeurIPS ’18) closed this line of work by proving a tight tradeoff between 图片.png-to-图片.png norm ratio and accuracy for sparse JL with sparsity 1. In this paper, we demonstrate the benefits of using sparsity s greater than 1 in sparse JL on feature vectors. Our main result is a tight tradeoff between 图片.png-to-图片.png norm ratio and accuracy for a general sparsity s, that significantly generalizes the result of Freksen et. al. Our result theoretically demonstrates that sparse JL with s > 1 can have significantly better norm-preservation properties on feature vectors than sparse JL with s = 1; we also empirically demonstrate this finding.

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