NUANCED is a user-centric conversational recommendation dataset that contains 5.1k annotated dialogues and 26k high-quality user turns.

Related tags

Deep Learningnuanced
Overview

NUANCED: Natural Utterance Annotation for Nuanced Conversation with Estimated Distributions

Overview

NUANCED is a user-centric conversational recommendation dataset that contains 5.1k annotated dialogues and 26k high-quality user turns. The dataset focuses on realistic settings where user preferences are extracted from real-world Yelp Open Dataset and paraphrased into natural user responses.

Existing conversational systems are mostly agent-centric, which assumes the user utterances would closely follow the system ontology (for NLU or dialogue state tracking). However, in real-world scenarios, it is highly desirable that the users can speak freely in their own way. It is extremely hard, if not impossible, for the users to adapt to the unknown system ontology.

In this work, we attempt to build a user-centric dialogue system. As there is no clean mapping for a user’s free form utterance to an ontology, we first model the user preferences as estimated distributions over the system ontology and map the users’ utterances to such distributions. Learning such a mapping poses new challenges on reasoning over existing knowledge, ranging from factoid knowledge, commonsense knowledge to the users’ own situations. To this end, we build a new dataset named NUANCED that focuses on such realistic settings for conversational recommendation. We believe NUANCED can serve as a valuable resource to push existing research from the agent-centric system to the user-centric system.

For more details, please refer to the following two papers:
NUANCED: Natural Utterance Annotation for Nuanced Conversation with Estimated Distributions
User Memory Reasoning for Conversational Recommendation

Examples of traditional dataset and NUANCED

Examples of traditional dataset and NUANCED: in real-world scenarios, the free form user utterances often mismatch with system ontology. In NUANCED, we model the user preferences (or dialogue state) as distributions over the ontology, therefore to allow mapping of entities unknown to the system to multiple values and slots for efficient conversation.

Data

In this data release, we have included both the nuanced version where user preferences are mapped to an estimated distribution and the coarse version where user preferences are mapped to discrete slot labels according to system ontology.

  • Folder data_dist: the nuanced version;
  • Folder data_discrete: the coarse version with 0-1 labels;
  • meta.json: ontology for this restaurant domain;

Format for the dataset: A list of dictionaries, with each dictionary as one dialogue of the following important fields:

  • "dialogue": a list of dialog turns. Each turn has the following fields:
  • "role": user or assistant
  • "text": user utterance or system response
  • "dialog_acts": acts of this turn
  • "slots": slots involved in this turn
  • "dist": for user turn, the preference distribution
  • "strategy": strategy 1 means the user utterance does not have grounded ontology terms (implicit reasoning), strategy 2 means the user utterance has grounded ontology terms

Citations

If you want to publish experimental results with our datasets or use the baseline models, please cite the following articles (pdf, pdf):

@article{chen2020nuanced,
  title={NUANCED: Natural Utterance Annotation for Nuanced Conversation with Estimated Distributions},
  author={Chen, Zhiyu and Liu, Honglei and Xu, Hu and Moon, Seungwhan and Zhou, Hao and Liu, Bing},
  journal={arXiv preprint arXiv:2010.12758},
  year={2020}
}
@inproceedings{xu2020user,
  title={User Memory Reasoning for Conversational Recommendation},
  author={Xu, Hu and Moon, Seungwhan and Liu, Honglei and Liu, Bing and Shah, Pararth and Philip, S Yu},
  booktitle={Proceedings of the 28th International Conference on Computational Linguistics},
  pages={5288--5308},
  year={2020}
}

License

NUANCED is released under CC-BY-NC-4.0, see LICENSE for details.

Owner
Facebook Research
Facebook Research
Distributionally robust neural networks for group shifts

Distributionally Robust Neural Networks for Group Shifts: On the Importance of Regularization for Worst-Case Generalization This code implements the g

151 Dec 25, 2022
An index of recommendation algorithms that are based on Graph Neural Networks.

An index of recommendation algorithms that are based on Graph Neural Networks.

FIB LAB, Tsinghua University 564 Jan 07, 2023
PyTorch implementation of the Quasi-Recurrent Neural Network - up to 16 times faster than NVIDIA's cuDNN LSTM

Quasi-Recurrent Neural Network (QRNN) for PyTorch Updated to support multi-GPU environments via DataParallel - see the the multigpu_dataparallel.py ex

Salesforce 1.3k Dec 28, 2022
Implementation and replication of ProGen, Language Modeling for Protein Generation, in Jax

ProGen - (wip) Implementation and replication of ProGen, Language Modeling for Protein Generation, in Pytorch and Jax (the weights will be made easily

Phil Wang 71 Dec 01, 2022
Code for ICLR 2021 Paper, "Anytime Sampling for Autoregressive Models via Ordered Autoencoding"

Anytime Autoregressive Model Anytime Sampling for Autoregressive Models via Ordered Autoencoding , ICLR 21 Yilun Xu, Yang Song, Sahaj Gara, Linyuan Go

Yilun Xu 22 Sep 08, 2022
Simulation environments for the CrazyFlie quadrotor: Used for Reinforcement Learning and Sim-to-Real Transfer

Phoenix-Drone-Simulation An OpenAI Gym environment based on PyBullet for learning to control the CrazyFlie quadrotor: Can be used for Reinforcement Le

Sven Gronauer 8 Dec 07, 2022
A stock generator that assess a list of stocks and returns the best stocks for investing and money allocations based on users choices of volatility, duration and number of stocks

Stock-Generator Please visit "Stock Generator.ipynb" for a clearer view and "Stock Generator.py" for scripts. The stock generator is designed to allow

jmengnyay 1 Aug 02, 2022
Romanian Automatic Speech Recognition from the ROBIN project

RobinASR This repository contains Robin's Automatic Speech Recognition (RobinASR) for the Romanian language based on the DeepSpeech2 architecture, tog

RACAI 10 Jan 01, 2023
Geometric Algebra package for JAX

JAXGA - JAX Geometric Algebra GitHub | Docs JAXGA is a Geometric Algebra package on top of JAX. It can handle high dimensional algebras by storing onl

Robin Kahlow 36 Dec 22, 2022
Constrained Logistic Regression - How to apply specific constraints to logistic regression's coefficients

Constrained Logistic Regression Sample implementation of constructing a logistic regression with given ranges on each of the feature's coefficients (v

1 Dec 29, 2021
CNN designed for pansharpening

PROGRESSIVE BAND-SEPARATED CONVOLUTIONAL NEURAL NETWORK FOR MULTISPECTRAL PANSHARPENING This repository contains main code for the paper PROGRESSIVE B

SerendipitysX 3 Dec 29, 2021
Zero-Cost Proxies for Lightweight NAS

Zero-Cost-NAS Companion code for the ICLR2021 paper: Zero-Cost Proxies for Lightweight NAS tl;dr A single minibatch of data is used to score neural ne

SamsungLabs 108 Dec 20, 2022
Code for our paper at ECCV 2020: Post-Training Piecewise Linear Quantization for Deep Neural Networks

PWLQ Updates 2020/07/16 - We are working on getting permission from our institution to release our source code. We will release it once we are granted

54 Dec 15, 2022
A toolset for creating Qualtrics-based IAT experiments

Qualtrics IAT Tool A web app for generating the Implicit Association Test (IAT) running on Qualtrics Online Web App The app is hosted by Streamlit, a

0 Feb 12, 2022
Official Pytorch Implementation of: "ImageNet-21K Pretraining for the Masses"(2021) paper

ImageNet-21K Pretraining for the Masses Paper | Pretrained models Official PyTorch Implementation Tal Ridnik, Emanuel Ben-Baruch, Asaf Noy, Lihi Zelni

574 Jan 02, 2023
Face Mask Detection system based on computer vision and deep learning using OpenCV and Tensorflow/Keras

Face Mask Detection Face Mask Detection System built with OpenCV, Keras/TensorFlow using Deep Learning and Computer Vision concepts in order to detect

Chandrika Deb 1.4k Jan 03, 2023
Really awesome semantic segmentation

really-awesome-semantic-segmentation A list of all papers on Semantic Segmentation and the datasets they use. This site is maintained by Holger Caesar

Holger Caesar 400 Nov 28, 2022
This repository contains the source code for the paper "DONeRF: Towards Real-Time Rendering of Compact Neural Radiance Fields using Depth Oracle Networks",

DONeRF: Towards Real-Time Rendering of Compact Neural Radiance Fields using Depth Oracle Networks Project Page | Video | Presentation | Paper | Data L

Facebook Research 281 Dec 22, 2022