English

Data Encoding for Byzantine-Resilient Distributed Optimization

Distributed, Parallel, and Cluster Computing 2020-11-05 v2 Cryptography and Security Machine Learning

Abstract

We study distributed optimization in the presence of Byzantine adversaries, where both data and computation are distributed among mm worker machines, tt of which may be corrupt. The compromised nodes may collaboratively and arbitrarily deviate from their pre-specified programs, and a designated (master) node iteratively computes the model/parameter vector for generalized linear models. In this work, we primarily focus on two iterative algorithms: Proximal Gradient Descent (PGD) and Coordinate Descent (CD). Gradient descent (GD) is a special case of these algorithms. PGD is typically used in the data-parallel setting, where data is partitioned across different samples, whereas, CD is used in the model-parallelism setting, where data is partitioned across the parameter space. In this paper, we propose a method based on data encoding and error correction over real numbers to combat adversarial attacks. We can tolerate up to tm12t\leq \lfloor\frac{m-1}{2}\rfloor corrupt worker nodes, which is information-theoretically optimal. We give deterministic guarantees, and our method does not assume any probability distribution on the data. We develop a {\em sparse} encoding scheme which enables computationally efficient data encoding and decoding. We demonstrate a trade-off between the corruption threshold and the resource requirements (storage, computational, and communication complexity). As an example, for tm3t\leq\frac{m}{3}, our scheme incurs only a {\em constant} overhead on these resources, over that required by the plain distributed PGD/CD algorithms which provide no adversarial protection. To the best of our knowledge, ours is the first paper that makes CD secure against adversarial attacks. Our encoding scheme extends efficiently to the data streaming model and for stochastic gradient descent (SGD). We also give experimental results to show the efficacy of our proposed schemes.

Keywords

Cite

@article{arxiv.1907.02664,
  title  = {Data Encoding for Byzantine-Resilient Distributed Optimization},
  author = {Deepesh Data and Linqi Song and Suhas Diggavi},
  journal= {arXiv preprint arXiv:1907.02664},
  year   = {2020}
}

Comments

38 pages, Accepted for publication in the IEEE Transactions on Information Theory