Decentralized Byzantine Machine Identification
      
      
     
	
      Reporter:
      Changliang Zou, Professor, Nankai University
     	
      Inviter:
      Xin Liu, Professor
     	
      Subject:
      Decentralized Byzantine Machine Identification
     	
      Time and place:
      8:00-9:00(Friday) September 19, N714
     	
      Abstract:
      We present a p-value free, dimensionally insensitive method for decentralized Byzantine machine detection and stochastic optimization. Our detection scheme uses sample-splitting and a data-driven threshold to achieve a finite-sample bound on the false discovery rate and a sure-detection guarantee. In the optimization phase, we reconstruct a row-stochastic mixing matrix and prove that our stochastic DGD-RS algorithm attains an O(1/√K) non-asymptotic convergence rate for nonconvex functions, ensuring exact convergence with high probability. The effectiveness of our approach is demonstrated through extensive simulations.