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具有可證明收斂保證的分布式優化的有效二階算法

活動信息

  • 開始時間:2023-12-25 15:30:00
  • 活動地點:海山樓A1101
  • 主講人:張嬌嬌

活動簡介

<p>Big data over geographically distributed devices necessitates the development of decentralized optimization. Although first-order methods enjoy low per-iteration computational complexity, second-order methods are attractive due to their faster convergence rates. Motivated by this, we aim to propoe decentralized second-order algorithms inheriting the advantage of fast convergence as in the single-machine setting while avoiding high communication cost.

In the first work, we propose a Newton tracking algorithm, where no Hessian matrices exchange over the network. In the single-machine setting, the Newton method has theoretically faster rate than first-order methods. However, developing a communicate-efficient decentralized variant of the Newton method with condition-number-independence property or super-linear rate is non-trivial. In the second work, we fill this gap by proposing a decentralized Newton method and establishing a theoretically faster rate than first-order methods. In the third work, we move on to the stochastic setting when each node has many samples so that computing the local full gradients is not affordable. We develop a general algorithmic framework that incorporates stochastic quasi-Newton approximations with variance reduction and then specify two fully decent</p>

主講人介紹

張嬌嬌,KTH-皇家理工學院決策與控制系統部門博士后研究員。博士畢業于香港中文大學系統工程與工程管理系。研究興趣包括分布式優化算法及理論分析,研究工作發表于 IEEE Trans on Signal Processing, IEEE Trans on Automatic Control, IEEE Trans on Signal and Information Processing over Networks等期刊。
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