PyTorch code for EMNLP 2021 paper: Don't be Contradicted with Anything! CI-ToD: Towards Benchmarking Consistency for Task-oriented Dialogue System

Related tags

Deep LearningCI-ToD
Overview

Don’t be Contradicted with Anything!CI-ToD: Towards Benchmarking Consistency for Task-oriented Dialogue System

License: MIT

This repository contains the PyTorch implementation and the data of the paper: Don’t be Contradicted with Anything!CI-ToD: Towards Benchmarking Consistency for Task-oriented Dialogue System. Libo Qin, Tianbao Xie, Shijue Huang, Qiguang Chen, Xiao Xu, Wanxiang Che. EMNLP2021.[PDF] .

This code has been written using PyTorch >= 1.1. If you use any source codes or the datasets included in this toolkit in your work, please cite the following paper. The bibtex are listed below:

@article{qin2021CIToD,
  title={Don’t be Contradicted with Anything!CI-ToD: Towards Benchmarking Consistency for Task-oriented Dialogue System},
  author={Qin, Libo and Xie, Tianbao and Huang, Shijue and Chen, Qiguang and Xu, Xiao and Che, Wanxiang},
  journal={arXiv preprint arXiv:2109.11292},
  year={2021}
}

Abstract

Consistency Identification has obtained remarkable success on open-domain dialogue, which can be used for preventing inconsistent response generation. However, in contrast to the rapid development in open-domain dialogue, few efforts have been made to the task-oriented dialogue direction. In this paper, we argue that consistency problem is more urgent in task-oriented domain. To facilitate the research, we introduce CI-ToD, a novel dataset for Consistency Identification in Task-oriented Dialog system. In addition, we not only annotate the single label to enable the model to judge whether the system response is contradictory, but also provide more finegrained labels (i.e., Dialogue History Inconsistency(HI), User Query Inconsistency(QI) and Knowledge Base Inconsistency(KBI), which are as shown in the figure below) to encourage model to know what inconsistent sources lead to it. Empirical results show that state-of-the-art methods only achieve performance of 51.3%, which is far behind the human performance of 93.2%, indicating that there is ample room for improving consistency identification ability. Finally, we conduct exhaustive experiments and qualitative analysis to comprehend key challenges and provide guidance for future directions.

Dataset

We construct the CI-ToD dataset based on the KVRET dataset. We release our dataset together with the code, you can find it under data.

The basic format of the dataset is as follows, including multiple rounds of dialogue, knowledge base and related inconsistency annotations (KBI, QI, HI):

[
    {
        "id": 74,
        "dialogue": [
            {
                "turn": "driver",
                "utterance": "i need to find out the date and time for my swimming_activity"
            },
            {
                "turn": "assistant",
                "utterance": "i have two which one i have one for the_14th at 6pm and one for the_12th at 7pm"
            }
        ],
        "scenario": {
            "kb": {
                "items": [
                    {
                        "date": "the_11th",
                        "time": "9am",
                        "event": "tennis_activity",
                        "agenda": "-",
                        "room": "-",
                        "party": "father"
                    },
                    {
                        "date": "the_18th",
                        "time": "2pm",
                        "event": "football_activity",
                        "agenda": "-",
                        "room": "-",
                        "party": "martha"
                    },
                    .......
                ]
            },
            "qi": "0",
            "hi": "0",
            "kbi": "0"
        },
        "HIPosition": []
    }

KBRetriever_DC

Dataset QI HI KBI SUM
calendar_train.json 174 56 177 595
calendar_dev.json 28 9 24 74
calendar_test.json 23 8 21 74
navigate_train.json 453 386 591 1110
navigate_dev.json 55 41 69 139
navigate_test.json 48 44 71 138
weather_new_train.json 631 132 551 848
weather_new_dev.json 81 14 66 106
weather_new_test.json 72 12 69 106

Model

Here is the model structure of non pre-trained model (a) and pre-trained model (b and c).

Preparation

we provide some pre-trained baselines on our proposed CI-TOD dataset, the packages we used are listed follow:

-- scikit-learn==0.23.2
-- numpy=1.19.1
-- pytorch=1.1.0
-- fitlog==0.9.13
-- tqdm=4.49.0
-- sklearn==0.0
-- transformers==3.2.0

We highly suggest you using Anaconda to manage your python environment. If so, you can run the following command directly on the terminal to create the environment:

conda env create -f py3.6pytorch1.1_.yaml

How to run it

The script train.py acts as a main function to the project, you can run the experiments by the following commands:

python -u train.py --cfg KBRetriver_DC/KBRetriver_DC_BERT.cfg

The parameters we use are configured in the configure. If you need to adjust them, you can modify them in the relevant files or append parameters to the command.

Finally, you can check the results in logs folder.Also, you can run fitlog command to visualize the results:

fitlog log logs/

Baseline Experiment Result

All experiments were performed in TITAN_XP except for BART, which was performed on Tesla V100 PCIE 32 GB. These may not be the best results. Therefore, the parameters can be adjusted to obtain better results.

KBRetriever_DC

Baseline category Baseline method QI F1 HI F1 KBI F1 Overall Acc
Non Pre-trained Model ESIM (Chen et al., 2017) 0.512 0.164 0.543 0.432
Infersent (Romanov and Shivade, 2018) 0.557 0.031 0.336 0.356
RE2 (Yang et al., 2019) 0.655 0.244 0.739 0.481
Pre-trained Model BERT (Devlin et al., 2019) 0.691 0.555 0.740 0.500
RoBERTa (Liu et al., 2019) 0.715 0.472 0.715 0.500
XLNet (Yang et al., 2020) 0.725 0.487 0.736 0.509
Longformer (Beltagy et al., 2020) 0.717 0.500 0.710 0.497
BART (Lewis et al., 2020) 0.744 0.510 0.761 0.513
Human Human Performance 0.962 0.805 0.920 0.932

Leaderboard

If you submit papers with these datasets, please consider sending a pull request to merge your results onto the leaderboard. By submitting, you acknowledge that your results are obtained purely by training on the training datasets and tuned on the dev datasets (e.g. you only evaluted on the test set once).

KBRetriever_DC

Baseline method QI F1 HI F1 KBI F1 Overall Acc
ESIM (Chen et al., 2017) 0.512 0.164 0.543 0.432
Infersent (Romanov and Shivade, 2018) 0.557 0.031 0.336 0.356
RE2 (Yang et al., 2019) 0.655 0.244 0.739 0.481
BERT (Devlin et al., 2019) 0.691 0.555 0.740 0.500
RoBERTa (Liu et al., 2019) 0.715 0.472 0.715 0.500
XLNet (Yang et al., 2020) 0.725 0.487 0.736 0.509
Longformer (Beltagy et al., 2020) 0.717 0.500 0.710 0.497
BART (Lewis et al., 2020) 0.744 0.510 0.761 0.513
Human Performance 0.962 0.805 0.920 0.932

Acknowledgement

Thanks for patient annotation from all taggers Lehan Wang, Ran Duan, Fuxuan Wei, Yudi Zhang, Weiyun Wang!

Thanks for supports and guidance from our adviser Wanxiang Che!

Contact us

  • Just feel free to open issues or send us email(me, Tianbao) if you have any problems or find some mistakes in this dataset.
Owner
Libo Qin
Ph.D. Candidate in Harbin Institute of Technology @HIT-SCIR. Homepage: http://ir.hit.edu.cn/~lbqin/
Libo Qin
Safe Control for Black-box Dynamical Systems via Neural Barrier Certificates

Safe Control for Black-box Dynamical Systems via Neural Barrier Certificates Installation Clone the repository: git clone https://github.com/Zengyi-Qi

Zengyi Qin 3 Oct 18, 2022
Junction Tree Variational Autoencoder for Molecular Graph Generation (ICML 2018)

Junction Tree Variational Autoencoder for Molecular Graph Generation Official implementation of our Junction Tree Variational Autoencoder https://arxi

Wengong Jin 418 Jan 07, 2023
git《Beta R-CNN: Looking into Pedestrian Detection from Another Perspective》(NeurIPS 2020) GitHub:[fig3]

Beta R-CNN: Looking into Pedestrian Detection from Another Perspective This is the pytorch implementation of our paper "[Beta R-CNN: Looking into Pede

35 Sep 08, 2021
This repository contains the code used for the implementation of the paper "Probabilistic Regression with HuberDistributions"

Public_prob_regression_with_huber_distributions This repository contains the code used for the implementation of the paper "Probabilistic Regression w

David Mohlin 1 Dec 04, 2021
HW3 ― GAN, ACGAN and UDA

HW3 ― GAN, ACGAN and UDA In this assignment, you are given datasets of human face and digit images. You will need to implement the models of both GAN

grassking100 1 Dec 13, 2021
(ICCV 2021) ProHMR - Probabilistic Modeling for Human Mesh Recovery

ProHMR - Probabilistic Modeling for Human Mesh Recovery Code repository for the paper: Probabilistic Modeling for Human Mesh Recovery Nikos Kolotouros

Nikos Kolotouros 209 Dec 13, 2022
An implementation of the BADGE batch active learning algorithm.

Batch Active learning by Diverse Gradient Embeddings (BADGE) An implementation of the BADGE batch active learning algorithm. Details are provided in o

125 Dec 24, 2022
The pytorch implementation of DG-Font: Deformable Generative Networks for Unsupervised Font Generation

DG-Font: Deformable Generative Networks for Unsupervised Font Generation The source code for 'DG-Font: Deformable Generative Networks for Unsupervised

130 Dec 05, 2022
[ICCV 2021 Oral] SnowflakeNet: Point Cloud Completion by Snowflake Point Deconvolution with Skip-Transformer

This repository contains the source code for the paper SnowflakeNet: Point Cloud Completion by Snowflake Point Deconvolution with Skip-Transformer (ICCV 2021 Oral). The project page is here.

AllenXiang 65 Dec 26, 2022
Implementation of CVPR'21: RfD-Net: Point Scene Understanding by Semantic Instance Reconstruction

RfD-Net [Project Page] [Paper] [Video] RfD-Net: Point Scene Understanding by Semantic Instance Reconstruction Yinyu Nie, Ji Hou, Xiaoguang Han, Matthi

Yinyu Nie 162 Jan 06, 2023
nextPARS, a novel Illumina-based implementation of in-vitro parallel probing of RNA structures.

nextPARS, a novel Illumina-based implementation of in-vitro parallel probing of RNA structures. Here you will find the scripts necessary to produce th

Jesse Willis 0 Jan 20, 2022
An excellent hash algorithm combining classical sponge structure and RNN.

SHA-RNN Recurrent Neural Network with Chaotic System for Hash Functions Anonymous Authors [摘要] 在这次作业中我们提出了一种新的 Hash Function —— SHA-RNN。其以海绵结构为基础,融合了混

Houde Qian 5 May 15, 2022
AITUS - An atomatic notr maker for CYTUS

AITUS an automatic note maker for CYTUS. 利用AI根据指定乐曲生成CYTUS游戏谱面。 效果展示:https://www

GradiusTwinbee 6 Feb 24, 2022
Official project repository for 'Normality-Calibrated Autoencoder for Unsupervised Anomaly Detection on Data Contamination'

NCAE_UAD Official project repository of 'Normality-Calibrated Autoencoder for Unsupervised Anomaly Detection on Data Contamination' Abstract In this p

Jongmin Andrew Yu 2 Feb 10, 2022
The source code for 'Noisy-Labeled NER with Confidence Estimation' accepted by NAACL 2021

Kun Liu*, Yao Fu*, Chuanqi Tan, Mosha Chen, Ningyu Zhang, Songfang Huang, Sheng Gao. Noisy-Labeled NER with Confidence Estimation. NAACL 2021. [arxiv]

30 Nov 12, 2022
Perception-aware multi-sensor fusion for 3D LiDAR semantic segmentation (ICCV 2021)

Perception-Aware Multi-Sensor Fusion for 3D LiDAR Semantic Segmentation (ICCV 2021) [中文|EN] 概述 本工作主要探索一种高效的多传感器(激光雷达和摄像头)融合点云语义分割方法。现有的多传感器融合方法主要将点云投影

ICE 126 Dec 30, 2022
NeuralDiff: Segmenting 3D objects that move in egocentric videos

NeuralDiff: Segmenting 3D objects that move in egocentric videos Project Page | Paper + Supplementary | Video About This repository contains the offic

Vadim Tschernezki 14 Dec 05, 2022
Sketch-Based 3D Exploration with Stacked Generative Adversarial Networks

pix2vox [Demonstration video] Sketch-Based 3D Exploration with Stacked Generative Adversarial Networks. Generated samples Single-category generation M

Takumi Moriya 232 Nov 14, 2022
HAR-stacked-residual-bidir-LSTMs - Deep stacked residual bidirectional LSTMs for HAR

HAR-stacked-residual-bidir-LSTM The project is based on this repository which is presented as a tutorial. It consists of Human Activity Recognition (H

Guillaume Chevalier 287 Dec 27, 2022
Integrated Semantic and Phonetic Post-correction for Chinese Speech Recognition

Integrated Semantic and Phonetic Post-correction for Chinese Speech Recognition | paper | dataset | pretrained detection model | Authors: Yi-Chang Che

Yi-Chang Chen 1 Aug 23, 2022