Optimal Fast Johnson-Lindenstrauss Embeddings for Large Data Sets

December 05, 2017 Β· Declared Dead Β· πŸ› Sampling Theory, Signal Processing, and Data Analysis

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Authors Stefan Bamberger, Felix Krahmer arXiv ID 1712.01774 Category cs.DS: Data Structures & Algorithms Citations 10 Venue Sampling Theory, Signal Processing, and Data Analysis Last Checked 4 months ago
Abstract
Johnson-Lindenstrauss embeddings are widely used to reduce the dimension and thus the processing time of data. To reduce the total complexity, also fast algorithms for applying these embeddings are necessary. To date, such fast algorithms are only available either for a non-optimal embedding dimension or up to a certain threshold on the number of data points. We address a variant of this problem where one aims to simultaneously embed larger subsets of the data set. Our method follows an approach by Nelson: A subsampled Hadamard transform maps points into a space of lower, but not optimal dimension. Subsequently, a random matrix with independent entries projects to an optimal embedding dimension. For subsets whose size scales at least polynomially in the ambient dimension, the complexity of this method comes close to the number of operations just to read the data under mild assumptions on the size of the data set that are considerably less restrictive than in previous works. We also prove a lower bound showing that subsampled Hadamard matrices alone cannot reach an optimal embedding dimension. Hence, the second embedding cannot be omitted.
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