PLAY PODCASTS
52 - Sequence-to-Sequence Learning as Beam-Search Optimization, with Sam Wiseman

52 - Sequence-to-Sequence Learning as Beam-Search Optimization, with Sam Wiseman

EMNLP 2016 paper by Sam Wiseman and Sasha Rush. …

NLP Highlights · Allen Institute for Artificial Intelligence

March 15, 201823m 0s

Audio is streamed directly from the publisher (podtrac.com) as published in their RSS feed. Play Podcasts does not host this file. Rights-holders can request removal through the copyright & takedown page.

Show Notes

EMNLP 2016 paper by Sam Wiseman and Sasha Rush. In this episode we talk with Sam about a paper from a couple of years ago on bringing back some ideas from structured prediction into neural seq2seq models. We talk about the classic problems in structured prediction of exposure bias, label bias, and locally normalized models, how people used to solve these problems, and how we can apply those solutions to modern neural seq2seq architectures using a technique that Sam and Sasha call Beam Search Optimization. (Note: while we said in the episode that BSO with beam size of 2 is equivalent to a token-level hinge loss, that's not quite accurate; it's close, but there are some subtle differences.) https://www.semanticscholar.org/paper/Sequence-to-Sequence-Learning-as-Beam-Search-Optim-Wiseman-Rush/28703eef8fe505e8bd592ced3ce52a597097b031