Standard neural sequence generation methods assume a pre-specified generation order, such as left-to-right generation. Despite its wild success in recent years, there's a lingering question of whether this is necessary and if there is any other way to generate such a sequence in an order automatically learned from data without having to pre-specify it or relying on external tools. I will discuss in this talk three alternatives; parallel decoding, recursive set prediction, and insertion-based generation.
#SAIF #SamsungAIForum
For more info, visit our page:
#SAIT(Samsung Advanced Institute of Technology): http://smsng.co/sait
[SAIF 2019] Day 1: Three Flavors Of Neural Sequence Generation - Kyunghyun Cho | Samsung ─ Samsung
<style>.embed-container { position: relative; padding-bottom: 56.25%; height: 0; overflow: hidden; max-width: 100%; } .embed-container iframe, .embed-container object, .embed-container embed { position: absolute; top: 0; left: 0; width: 100%; height: 100%; }</style><div class="embed-container"><iframe src="https://www.youtube.com/embed/pB0lIC6dtJc" frameborder="0" allowfullscreen></iframe></div>