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Binary and Multi-Bit Coding for Stable Random Projections
TL;DR: In this article, a binary (i.e., 1-bit) and multi-bit coding scheme was developed for estimating the scale parameter of stable distributions, which is motivated by the recent work on one-bit compressed sensing (sparse signal recovery) using $\alpha$-stable random projections.
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Abstract: We develop efficient binary (i.e., 1-bit) and multi-bit coding schemes for estimating the scale parameter of $\alpha$-stable distributions. The work is motivated by the recent work on one scan 1-bit compressed sensing (sparse signal recovery) using $\alpha$-stable random projections, which requires estimating of the scale parameter at bits-level. Our technique can be naturally applied to data stream computations for estimating the $\alpha$-th frequency moment. In fact, the method applies to the general scale family of distributions, not limited to $\alpha$-stable distributions.
Due to the heavy-tailed nature of $\alpha$-stable distributions, using traditional estimators will potentially need many bits to store each measurement in order to ensure sufficient accuracy. Interestingly, our paper demonstrates that, using a simple closed-form estimator with merely 1-bit information does not result in a significant loss of accuracy if the parameter is chosen appropriately. For example, when $\alpha=0+$, 1, and 2, the coefficients of the optimal estimation variances using full (i.e., infinite-bit) information are 1, 2, and 2, respectively. With the 1-bit scheme and appropriately chosen parameters, the corresponding variance coefficients are 1.544, $\pi^2/4$, and 3.066, respectively. Theoretical tail bounds are also provided. Using 2 or more bits per measurements reduces the estimation variance and importantly, stabilizes the estimate so that the variance is not sensitive to parameters. With look-up tables, the computational cost is minimal.
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Citations
•Proceedings Article
Random Projections with Asymmetric Quantization
Xiaoyun Li,Ping Li +1 more
- 01 Jan 2019
TL;DR: This paper thoroughly analyzes the biases and variances of a series of estimators including the basic simple estimators, their normalized versions, and their debiased versions and shows that the expectation of proposed estimators increases with the true cosine similarity, on a broader family of stair-shaped quantizers.
•Proceedings Article
One Scan 1-Bit Compressed Sensing
Ping Li
- 01 Jan 2016
TL;DR: This work develops a simple algorithm for compressed sensing (sparse signal recovery) by utilizing only the signs (i.e., 1-bit) of the measurements using $\alpha$-stable random projections with small $\alpha$, which is reasonably robust against random sign flipping.
•Proceedings Article
Generalization Error Analysis of Quantized Compressive Learning
Xiaoyun Li,Ping Li +1 more
- 01 Jan 2019
TL;DR: This paper considers the learning problem where the projected data is further compressed by scalar quantization, which is called quantized compressive learning, and shows that the inner product estimators have deep connection with NN and linear classification problem through the variance of their debiased counterparts.
•Proceedings Article
b-bit Marginal Regression
Martin Slawski,Ping Li +1 more
- 07 Dec 2015
TL;DR: It is shown that Lloyd-Max quantization constitutes an optimal quantization scheme and that the norm of the signal can be estimated consistently by maximum likelihood by extending.
•Posted Content
One Scan 1-Bit Compressed Sensing
TL;DR: In this article, a simple algorithm for sparse signal recovery by utilizing only the signs (i.e., 1-bit) of the measurements is proposed, which can be used for data collection, storage, communication, and decoding.
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