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Explain My Surprise: Learning Efficient Long-Term Memory by Predicting Uncertain Outcomes

Machine Learning 2023-08-14 v2 Artificial Intelligence

Abstract

In many sequential tasks, a model needs to remember relevant events from the distant past to make correct predictions. Unfortunately, a straightforward application of gradient based training requires intermediate computations to be stored for every element of a sequence. This requires to store prohibitively large intermediate data if a sequence consists of thousands or even millions elements, and as a result, makes learning of very long-term dependencies infeasible. However, the majority of sequence elements can usually be predicted by taking into account only temporally local information. On the other hand, predictions affected by long-term dependencies are sparse and characterized by high uncertainty given only local information. We propose MemUP, a new training method that allows to learn long-term dependencies without backpropagating gradients through the whole sequence at a time. This method can potentially be applied to any recurrent architecture. LSTM network trained with MemUP performs better or comparable to baselines while requiring to store less intermediate data.

Keywords

Cite

@article{arxiv.2207.13649,
  title  = {Explain My Surprise: Learning Efficient Long-Term Memory by Predicting Uncertain Outcomes},
  author = {Artyom Sorokin and Nazar Buzun and Leonid Pugachev and Mikhail Burtsev},
  journal= {arXiv preprint arXiv:2207.13649},
  year   = {2023}
}
R2 v1 2026-06-25T01:16:53.728Z