211 / 2020-01-01 09:55:00
Spectral Algorithm for Shared Low-rank Matrix Regressions
Phase Retrieval; Low-rank optimization; Multitask Learning
全文录用
Yotam Gigi / Google Research & Hebrew University (HUJI), Israel
Sella Nevo / Google Research, Israel
Gal Elidan / Google Research and HUJI, Israel
Avinatan Hassidim / Google, Israel
Yossi Matias / Google, Israel
Ami Wiesel / The Hebrew University of Jerusalem, Israel
We consider multiple matrix regression tasks that share common weights in order to reduce sample complexity. For this purpose, we introduce the common mechanism regression model which assumes a shared right low-rank component across all tasks, but allows an individual per-task left low-rank component. We provide a closed form spectral algorithm for recovering the common component and derive a bound on its error as a function of the number of related tasks and the number of samples available for each of them. Both the algorithm and its analysis are natural extensions of known results in the context of phase retrieval and low rank reconstruction. We demonstrate the efficacy of our approach for the challenging task of remote river discharge estimation across multiple river sites, where data for each task is naturally scarce. In this scenario sharing a low-rank component between the tasks translates to a shared spectral reflection of the water, which is a true underlying physical model. We also show the benefit of the approach in the setting of image classification where the common component can be interpreted as the shared convolution filters.
重要日期
  • 会议日期

    06月08日

    2020

    06月11日

    2020

  • 01月12日 2020

    初稿截稿日期

  • 04月15日 2020

    提前注册日期

  • 12月31日 2020

    注册截止日期

主办单位
IEEE Signal Processing Society
承办单位
Zhejiang University
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