NLP Highlights

65 - Event Representations with Tensor-based Compositions, with Niranjan Balasubramanian

08.13.2018 - By Allen Institute for Artificial IntelligencePlay

Download our free app to listen on your phone

Download on the App StoreGet it on Google Play

AAAI 2018 paper by Noah Weber, Niranjan Balasubramanian, and Nathanael Chambers

Niranjan joins us on the podcast to tell us about his latest contribution in a line of work going back to Shank's scripts. This work tries to model sequences of events to get coherent narrative schemas, mined from large collections of text. For example, given an event like "She threw a football", you might expect future events involving catching, running, scoring, and so on. But if the event is instead "She threw a bomb", you would expect future events to involve things like explosions, damage, arrests, or other related things. We spend much of our conversation talking about why these scripts are interesting to study, and the general outline for how one might learn these scripts from text, and spend a little bit of time talking about the particular contribution of this paper, which is a better model that captures interactions among all of the arguments to an event.

https://www.semanticscholar.org/paper/Event-Representations-With-Tensor-Based-Weber-Balasubramanian/418f405a60b8d9009099777f7ae37f4496542f90

More episodes from NLP Highlights