International Business Machines Corporation
Aligning spike timing of models for maching learning
Last updated:
Abstract:
A technique for aligning spike timing of models is disclosed. A first model having a first architecture trained with a set of training samples is generated. Each training sample includes an input sequence of observations and an output sequence of symbols having different length from the input sequence. Then, one or more second models are trained with the trained first model by minimizing a guide loss jointly with a normal loss for each second model and a sequence recognition task is performed using the one or more second models. The guide loss evaluates dissimilarity in spike timing between the trained first model and each second model being trained.
Status:
Grant
Type:
Utility
Filling date:
13 Sep 2019
Issue date:
12 Apr 2022