CIMA
1.0.0
Dieses Repository enthält die Daten für das Papier "CIMA: Bau eines großen Datensatzes für Open -Access -Dialoge für Nachhilfe", das auf dem Workshop "Building Educational Applications) unter ACL 2020 präsentiert werden soll.
Die Daten werden unter der Creative Commons 2.5 -Lizenz (https://creativecommons.org/licenses/by/2.5/) zur Verfügung gestellt.
Im Folgenden sind die Schlüssel für Tutoraktionen und Studentaktionen aufgeführt, die eine Liste von Booleschen sind, die den folgenden Aktionen entsprechen:
Tutor -Aktionschlüssel: [Frage, Hinweis/Informationen enthüllen, Korrektur, Bestätigung, andere]
Schüleraktion Schlüssel: [Rate, Frage, Bestätigung, andere]
Wenn Sie diese Daten verwenden, zitieren Sie bitte unser Papier:
@inproceedings{stasaski-etal-2020-cima,
title = "{CIMA}: A Large Open Access Dialogue Dataset for Tutoring",
author = "Stasaski, Katherine and
Kao, Kimberly and
Hearst, Marti A.",
booktitle = "Proceedings of the Fifteenth Workshop on Innovative Use of NLP for Building Educational Applications",
month = jul,
year = "2020",
address = "Seattle, WA, USA → Online",
publisher = "Association for Computational Linguistics",
url = "https://www.aclweb.org/anthology/2020.bea-1.5",
pages = "52--64",
abstract = "One-to-one tutoring is often an effective means to help students learn, and recent experiments with neural conversation systems are promising. However, large open datasets of tutoring conversations are lacking. To remedy this, we propose a novel asynchronous method for collecting tutoring dialogue via crowdworkers that is both amenable to the needs of deep learning algorithms and reflective of pedagogical concerns. In this approach, extended conversations are obtained between crowdworkers role-playing as both students and tutors. The CIMA collection, which we make publicly available, is novel in that students are exposed to overlapping grounded concepts between exercises and multiple relevant tutoring responses are collected for the same input. CIMA contains several compelling properties from an educational perspective: student role-players complete exercises in fewer turns during the course of the conversation and tutor players adopt strategies that conform with some educational conversational norms, such as providing hints versus asking questions in appropriate contexts. The dataset enables a model to be trained to generate the next tutoring utterance in a conversation, conditioned on a provided action strategy.",
}