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      Opening the black box: low-dimensional dynamics in high-dimensional recurrent neural networks.

      1 ,
      Neural computation
      MIT Press - Journals

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          Abstract

          Recurrent neural networks (RNNs) are useful tools for learning nonlinear relationships between time-varying inputs and outputs with complex temporal dependencies. Recently developed algorithms have been successful at training RNNs to perform a wide variety of tasks, but the resulting networks have been treated as black boxes: their mechanism of operation remains unknown. Here we explore the hypothesis that fixed points, both stable and unstable, and the linearized dynamics around them, can reveal crucial aspects of how RNNs implement their computations. Further, we explore the utility of linearization in areas of phase space that are not true fixed points but merely points of very slow movement. We present a simple optimization technique that is applied to trained RNNs to find the fixed and slow points of their dynamics. Linearization around these slow regions can be used to explore, or reverse-engineer, the behavior of the RNN. We describe the technique, illustrate it using simple examples, and finally showcase it on three high-dimensional RNN examples: a 3-bit flip-flop device, an input-dependent sine wave generator, and a two-point moving average. In all cases, the mechanisms of trained networks could be inferred from the sets of fixed and slow points and the linearized dynamics around them.

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          Author and article information

          Journal
          Neural Comput
          Neural computation
          MIT Press - Journals
          1530-888X
          0899-7667
          Mar 2013
          : 25
          : 3
          Affiliations
          [1 ] Department of Electrical Engineering, Neurosciences Program, Stanford University, Stanford, CA 94305-9505, USA. sussillo@stanford.edu
          Article
          10.1162/NECO_a_00409
          23272922
          627a594b-591d-414f-b680-a44ae1b95f26
          History

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