Frames: A Corpus for Adding Memory to Goal-Oriented Dialogue Systems
Layla El Asri
Hannes Schulz
Shikhar Sharma
Jeremie Zumer
Justin Harris
Emery Fine
Rahul Mehrotra
Kaheer Suleman

Abstract
This paper presents the Frames dataset (Frames is available at http://datasets.maluuba.com/Frames), a corpus of 1369 human-human dialogues with an average of 15 turns per dialogue. We developed this dataset to study the role of memory in goal-oriented dialogue systems. Based on Frames, we introduce a task called frame tracking, which extends state tracking to a setting where several states are tracked simultaneously. We propose a baseline model for this task. We show that Frames can also be used to study memory in dialogue management and information presentation through natural language generation.
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