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 streaming generalized eigenvector computation


Gen-Oja: Simple & Efficient Algorithm for Streaming Generalized Eigenvector Computation

Neural Information Processing Systems

In this paper, we study the problems of principle Generalized Eigenvector computation and Canonical Correlation Analysis in the stochastic setting. We propose a simple and efficient algorithm for these problems. We prove the global convergence of our algorithm, borrowing ideas from the theory of fast-mixing Markov chains and two-Time-Scale Stochastic Approximation, showing that it achieves the optimal rate of convergence. In the process, we develop tools for understanding stochastic processes with Markovian noise which might be of independent interest.

  Country: Asia > Middle East > Jordan (0.09)

Gen-Oja: Simple & Efficient Algorithm for Streaming Generalized Eigenvector Computation

Neural Information Processing Systems

In this paper, we study the problems of principle Generalized Eigenvector computation and Canonical Correlation Analysis in the stochastic setting. We propose a simple and efficient algorithm for these problems. We prove the global convergence of our algorithm, borrowing ideas from the theory of fast-mixing Markov chains and two-Time-Scale Stochastic Approximation, showing that it achieves the optimal rate of convergence. In the process, we develop tools for understanding stochastic processes with Markovian noise which might be of independent interest.

  gen-oja, simple & efficient algorithm, streaming generalized eigenvector computation, (1 more...)
  Country: Asia > Middle East > Jordan (0.13)

Gen-Oja: Simple & Efficient Algorithm for Streaming Generalized Eigenvector Computation

Bhatia, Kush, Pacchiano, Aldo, Flammarion, Nicolas, Bartlett, Peter L., Jordan, Michael I.

Neural Information Processing Systems

In this paper, we study the problems of principle Generalized Eigenvector computation and Canonical Correlation Analysis in the stochastic setting. We propose a simple and efficient algorithm for these problems. We prove the global convergence of our algorithm, borrowing ideas from the theory of fast-mixing Markov chains and two-Time-Scale Stochastic Approximation, showing that it achieves the optimal rate of convergence. In the process, we develop tools for understanding stochastic processes with Markovian noise which might be of independent interest. Papers published at the Neural Information Processing Systems Conference.