Randomized Dimension Reduction with Statistical Guarantees
Yijun Dong

TL;DR
This paper introduces randomized algorithms for efficient dimension reduction and data utilization, including low-rank matrix approximations and data augmentation techniques, with theoretical guarantees for improved computational and sample efficiency.
Contribution
It develops and analyzes fast randomized low-rank decomposition algorithms and introduces data augmentation regularization methods with provable efficiency and robustness improvements.
Findings
Fast randomized low-rank algorithms with theoretical guarantees
Sample complexity bounds for data augmentation regularization
Enhanced robustness in medical image segmentation
Abstract
Large models and enormous data are essential driving forces of the unprecedented successes achieved by modern algorithms, especially in scientific computing and machine learning. Nevertheless, the growing dimensionality and model complexity, as well as the non-negligible workload of data pre-processing, also bring formidable costs to such successes in both computation and data aggregation. As the deceleration of Moore's Law slackens the cost reduction of computation from the hardware level, fast heuristics for expensive classical routines and efficient algorithms for exploiting limited data are increasingly indispensable for pushing the limit of algorithm potency. This thesis explores some of such algorithms for fast execution and efficient data utilization. From the computational efficiency perspective, we design and analyze fast randomized low-rank decomposition algorithms for large…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Tensor decomposition and applications · Advanced MIMO Systems Optimization
MethodsFocus
