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Backpropagation through structure

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Backpropagation Through Structure (BPTS) is a gradient-based technique for training recursive neural nets (a superset of recurrent neural nets) and is extensively described in a 1996 paper written by Christoph Goller and Andreas Küchler.[1]

References

  1. ^ Kuchler, Andreas (1996). "Learning Task-Dependent Distributed Representations by Backpropagation Through Structure" (PDF). psu.edu. CiteSeerX 10.1.1.49.1968.