Code and data for the EMNLP 2021 paper "Just Say No: Analyzing the Stance of Neural Dialogue Generation in Offensive Contexts". Coming soon!

Related tags

Deep LearningToxiChat
Overview

ToxiChat

Code and data for the EMNLP 2021 paper "Just Say No: Analyzing the Stance of Neural Dialogue Generation in Offensive Contexts".

Install dependencies

conda env create -f environment.yml

Data

The train, dev, test split of the data are given in data/OC_S_post_thread/ folder

Offensive and Stance Classification models

Single instance Offensive Classification

NBOW model

We will train NBOW single sentence classification model initialized with GloVe embedding
To train NBOW model, you'd need to download and extract GloVe vectors into data/GloVe/ dir and then run python convert_glove_text_vectors_to_pkl.py from within the directory

  • Training offensive classifier on OC_S_post_thread data
    python experiments/train_and_evaluate_NBOW_offensive_classifier.py -g data/GloVe/glove.6B.300d.pkl -td "{'OC_S':'data/OC_S_post_thread/'}" -s saved_models/OC_S_post_thread/NBOW_OC_S_offensive_e30 -o results/OC_S_post_thread/NBOW_OC_S_offensive_e30 -e 30 -dv 1 -t

BERT large cased model

  • Training offensive classifier on OC_S_post_thread data
    python experiments/train_and_evaluate_BERT_offensive_classifier.py -e 8 -td "{'OC_S':'data/OC_S_post_thread/'}" -s saved_models/OC_S_post_thread/BERT_large_OC_S_offensive_e8 -o results/OC_S_post_thread/BERT_large_OC_S_offensive_e8 -t

Full Sequence Offensive Classification (DGPT)

We will train a DGPT model offensive classifier for the entire comment thread with EOS tokens used for sentence representations.

  • Training offensive classifier on OC_S_post_thread data
    python experiments/train_and_evaluate_DGPT_offensive_classifier.py -e 12 -td "{'OC_S':'data/OC_S_post_thread/'}" -s saved_models/OC_S_post_thread/DGPT_medium_OC_S_offensive_e12 -o results/OC_S_post_thread/DGPT_medium_OC_S_offensive_e12 -t
  • Training offensive classifier on OC_S_post_thread + SBF data
    python experiments/train_and_evaluate_DGPT_offensive_classifier.py -e 3 -td "{'OC_S':'data/OC_S_post_thread/', 'SBF':'data/SBF'}" -s saved_models/OC_S_post_thread/DGPT_medium_OC_S_and_SBF_offensive_e3 -o results/OC_S_post_thread/DGPT_medium_OC_S_and_SBF_offensive_e3 -t -dv 4

Stance Classification

Pairwise Stance Classification

NBOW model

We will train NBOW Sentence Pair classification model initialized with GloVe embedding

  • Training Stance classifier on OC_S_post_thread_data (cross entropy)
    python experiments/train_and_evaluate_NBOW_pairwise_stance_classifier.py -g data/GloVe/glove.6B.300d.pkl -td "{'OC_S':'data/OC_S_post_thread/'}" -s saved_models/OC_S_post_thread/NBOW_OC_S_pairwise_stance_e30 -o results/OC_S_post_thread/NBOW_OC_S_pairwise_stance_e30 -e 30 -dv 1 -t

BERT large cased model

We will train Bert Sentence Pair classification model

  • Training Stance classifier on OC_S_post_thread_data (cross entropy)
    python experiments/train_and_evaluate_BERT_pairwise_stance_classifier.py -e 8 -td "{'OC_S':'data/OC_S_post_thread/'}" -s saved_models/OC_S_post_thread/BERT_large_OC_S_pairwise_stance_e8 -o results/OC_S_post_thread/BERT_large_OC_S_pairwise_stance_e8 -t

Full Sequence Stance Classification

We will train a DGPT model stance classifier for the entire comment thread with EOS tokens used for sentence representations.

  • Training Stance classifier on OC_S_post_thread_data (cross entropy)
    python experiments/train_and_evaluate_DGPT_stance_classifier.py -e 12 -td "{'OC_S':'data/OC_S_post_thread/'}" -s saved_models/OC_S_post_thread/DGPT_medium_OC_S_stance_e12 -o results/OC_S_post_thread/DGPT_medium_OC_S_stance_e12 -t
  • Training Stance classifier on OC_S_post_thread_data (Focal Loss)
    python experiments/train_and_evaluate_DGPT_stance_classifier.py -e 16 -td "{'OC_S':'data/OC_S_post_thread/'}" -s saved_models/OC_S_post_thread/DGPT_medium_OC_S_stance_e16_focal_lr5e_5 -o results/OC_S_post_thread/DGPT_medium_OC_S_stance_e16_focal_lr5e_5 -foc -lr 5e-5 -t

To download pretrained DGPT offensive and Stance (Focal) classifiers use the following link

Mitigating Offensive language using Controlled Text Generation

Dataset Preparation

We will first create a dataset of posts and comments from all of the reddit. Then we will create comment trees from these posts and comments and label them with our stance and offensive classifiers

Downloading the reddit posts and comments dumps

  1. Download the reddit comments and submissions dumps from August(08) to October(10), 2019 in the data folder
    mkdir -p data/reddit_dumps/comments_compressed
    cd data/reddit_dumps/comments_compressed
    wget -nc https://files.pushshift.io/reddit/comments/RC_2019-10.zst
    wget -nc https://files.pushshift.io/reddit/comments/RC_2019-09.zst
    wget -nc https://files.pushshift.io/reddit/comments/RC_2019-08.zst
    wget -nc https://files.pushshift.io/reddit/comments/RC_2019-07.zst
    wget -nc https://files.pushshift.io/reddit/comments/RC_2019-06.zst
    wget -nc https://files.pushshift.io/reddit/comments/RC_2019-05.zst
    cd ..
    mkdir posts_compressed
    cd posts_compressed
    wget -nc https://files.pushshift.io/reddit/submissions/RS_2019-10.zst
    wget -nc https://files.pushshift.io/reddit/submissions/RS_2019-09.zst
    wget -nc https://files.pushshift.io/reddit/submissions/RS_2019-08.zst
    wget -nc https://files.pushshift.io/reddit/submissions/RS_2019-07.zst
    wget -nc https://files.pushshift.io/reddit/submissions/RS_2019-06.zst
    wget -nc https://files.pushshift.io/reddit/submissions/RS_2019-05.zst
    cd ../../
    

Create posts and comments sample

  • python extract_reddit_posts.py -f data/reddit_dumps/posts_compressed/RS_2019-10.zst data/reddit_dumps/posts_compressed/RS_2019-09.zst data/reddit_dumps/posts_compressed/RS_2019-08.zst data/reddit_dumps/posts_compressed/RS_2019-07.zst data/reddit_dumps/posts_compressed/RS_2019-06.zst data/reddit_dumps/posts_compressed/RS_2019-05.zst -p 0.8 -o data/reddit_dumps/posts/all_mitigating_sample/
  • python extract_reddit_comments_for_posts.py -f data/reddit_dumps/comments_compressed/RC_2019-05.zst data/reddit_dumps/comments_compressed/RC_2019-06.zst data/reddit_dumps/comments_compressed/RC_2019-07.zst data/reddit_dumps/comments_compressed/RC_2019-08.zst data/reddit_dumps/comments_compressed/RC_2019-09.zst data/reddit_dumps/comments_compressed/RC_2019-10.zst -p data/reddit_dumps/posts/all_mitigating_sample/all_subreddit_posts.jsonl -o data/reddit_dumps/comments/all_mitigating_sample/

Create threads from posts and comments sample

python create_post_comment_trees_from_all_reddit_sample.py -ip data/reddit_dumps/posts/all_mitigating_sample/all_subreddit_posts.jsonl -ic data/reddit_dumps/comments/all_mitigating_sample/all_subreddit_post_related_comments.jsonl -mc 3 -o data/reddit_dumps/post_comment_threads/all_mitigating_sample/

Split the post comment threads into 4 splits

python split_threads_into_files.py -i data/reddit_dumps/post_comment_threads/all_mitigating_sample/all_reddit_post_and_comments_3_threads.pkl -o data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/ -n 4

Predict separately for each split

  • python predict_DGPT_stance_on_post_comment_trees.py -i data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/split_0.pkl -sm saved_models/OC_S_post_thread/DGPT_medium_OC_S_stance_e16_focal_lr5e_5 -om saved_models/OC_S_post_thread/DGPT_medium_OC_S_and_SBF_offensive_e2 -o data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/predictions_both/ -s data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/predictions_both/split_0_preds.pkl
  • python predict_DGPT_stance_on_post_comment_trees.py -i data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/split_1.pkl -sm saved_models/OC_S_post_thread/DGPT_medium_OC_S_stance_e16_focal_lr5e_5 -om saved_models/OC_S_post_thread/DGPT_medium_OC_S_and_SBF_offensive_e2 -o data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/predictions_both/ -s data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/predictions_both/split_1_preds.pkl
  • python predict_DGPT_stance_on_post_comment_trees.py -i data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/split_2.pkl -sm saved_models/OC_S_post_thread/DGPT_medium_OC_S_stance_e16_focal_lr5e_5 -om saved_models/OC_S_post_thread/DGPT_medium_OC_S_and_SBF_offensive_e2 -o data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/predictions_both/ -s data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/predictions_both/split_2_preds.pkl
  • python predict_DGPT_stance_on_post_comment_trees.py -i data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/split_3.pkl -sm saved_models/OC_S_post_thread/DGPT_medium_OC_S_stance_e16_focal_lr5e_5 -om saved_models/OC_S_post_thread/DGPT_medium_OC_S_and_SBF_offensive_e2 -o data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/predictions_both/ -s data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/predictions_both/split_3_preds.pkl

Merge predictions

python merge_Off_Stance_predictions.py -i data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/predictions_both/ -n 4 -o data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/predictions_both/merged_split_predictions.pkl

Create CTG fine-tuning dataset from post_comment threads with stance and offensive labels

python get_fine_tuning_subsets_from_label_predicted_convs.py -i data/reddit_dumps/post_comment_threads/all_mitigating_sample/splits/predictions_both/merged_split_predictions.pkl -o data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/

Fine-tune DGPT medium model for different CTG experiments

DAPT

CTG using DAPT i.e. simply training on the subset we care about

1. Off Control [SAFE] subset (DAPT - [S])

python experiments/CTG_DGPT_finetuner.py -so [SAFE] -t data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/off_control_train.pkl -d data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/off_control_dev.pkl -s saved_models/CTG/Off_control_DGPT_safe_subset -o results/CTG/Off_control_DGPT_safe_subset -e 3

2. Safe Stance Control [NO-STANCE] subset (DAPT - [S][N])

python experiments/CTG_DGPT_finetuner.py -so [NO-STANCE] -t data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/safe_stance_control_train.pkl -d data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/safe_stance_control_dev.pkl -s saved_models/CTG/safe_stance_control_DGPT_no_stance_subset -o results/CTG/safe_stance_control_DGPT_no_stance_subset -e 3

ATCON

CTG using control labels

1. Offensive Label Control (ATCON [S])

python experiments/CTG_DGPT_finetuner.py -t data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/off_control_train.pkl -d data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/off_control_dev.pkl -s saved_models/CTG/Off_control_DGPT -o results/CTG/Off_control_DGPT -e 3 -dv 100

2. Stance Label Control (Safe) (ATCON [N])

python experiments/CTG_DGPT_finetuner.py -t data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/safe_stance_control_train.pkl -d data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/safe_stance_control_dev.pkl -s saved_models/CTG/safe_stance_control_DGPT -o results/CTG/safe_stance_control_DGPT -e 3

3. Both Offensive and Stance Label Control (both) (ATCON [S][N])

python experiments/CTG_DGPT_finetuner.py -t data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/both_control_train.pkl -d data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/both_control_dev.pkl -s saved_models/CTG/both_control_DGPT -o results/CTG/both_control_DGPT -e 3

Generate Responses on test set using CTG models

Control labels [OFF]/[SAFE] and [AGREE]/[NO-STANCE]

  • Baseline No Control
    python generate_CTG_responses_and_make_off_and_stance_predictions.py -m microsoft/DialoGPT-medium -d data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/test_threads.pkl -sm saved_models/OC_S_post_thread/DGPT_medium_OC_S_stance_e16_focal_lr5e_5 -om saved_models/OC_S_post_thread/DGPT_medium_OC_S_and_SBF_offensive_e3 -n 1 -bs 10 -o results/CTG/DGPT/test_threads_replies_and_off_stance_preds.pkl
  • DAPT Offensive Control Safe Subset (DAPT - [S])
    python generate_CTG_responses_and_make_off_and_stance_predictions.py -m saved_models/CTG/Off_control_DGPT_safe_subset -d data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/test_threads.pkl -sm saved_models/OC_S_post_thread/DGPT_medium_OC_S_stance_e16_focal_lr5e_5 -om saved_models/OC_S_post_thread/DGPT_medium_OC_S_and_SBF_offensive_e2 -n 1 -bs 10 -o results/CTG/Off_control_DGPT/DAPT_Off_control_safe_subset_test_threads_replies_and_off_stance_preds.pkl
  • DAPT Safe Stance Control No-Stance Subset (DAPT - [S][N])
    python generate_CTG_responses_and_make_off_and_stance_predictions.py -m saved_models/CTG/safe_stance_control_DGPT_no_stance_subset -d data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/test_threads.pkl -sm saved_models/OC_S_post_thread/DGPT_medium_OC_S_stance_e16_focal_lr5e_5 -om saved_models/OC_S_post_thread/DGPT_medium_OC_S_and_SBF_offensive_e2 -n 1 -bs 10 -o results/CTG/safe_stance_control_DGPT/DAPT_safe_stance_control_no_stance_subset_test_threads_replies_and_off_stance_preds.pkl
  • Offensive Control (ATCON - [S])
    python generate_CTG_responses_and_make_off_and_stance_predictions.py -m saved_models/CTG/Off_control_DGPT -p [SAFE] -d data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/test_threads.pkl -sm saved_models/OC_S_post_thread/DGPT_medium_OC_S_stance_e16_focal_lr5e_5 -om saved_models/OC_S_post_thread/DGPT_medium_OC_S_and_SBF_offensive_e2 -n 1 -bs 10 -o results/CTG/Off_control_DGPT/Off_control_test_threads_safe_replies_and_off_stance_preds.pkl
  • Stance Control (Safe) (ATCON - [N])
    python generate_CTG_responses_and_make_off_and_stance_predictions.py -m saved_models/CTG/safe_stance_control_DGPT -p [NO-STANCE] -d data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/test_threads.pkl -sm saved_models/OC_S_post_thread/DGPT_medium_OC_S_stance_e16_focal_lr5e_5 -om saved_models/OC_S_post_thread/DGPT_medium_OC_S_and_SBF_offensive_e2 -n 1 -bs 10 -o results/CTG/safe_stance_control_DGPT/safe_stance_control_test_threads_no_stance_replies_and_off_stance_preds.pkl
  • Both Control (ATCON - [S][N])
    python generate_CTG_responses_and_make_off_and_stance_predictions.py -m saved_models/CTG/both_control_DGPT -p [SAFE][NO-STANCE] -d data/reddit_dumps/post_comment_threads/CTG_experiments/all_mitigating_sample/final/test_threads.pkl -sm saved_models/OC_S_post_thread/DGPT_medium_OC_S_stance_e16_focal_lr5e_5 -om saved_models/OC_S_post_thread/DGPT_medium_OC_S_and_SBF_offensive_e2 -n 1 -bs 10 -o results/CTG/both_control_DGPT/both_control_test_threads_safe_no_stance_replies_and_off_stance_preds.pkl

Automatic evalaution of CTG test predictions

python automatic_evaluation_of_CTG_test_predictions.py -mg "[('DGPT medium baseline', 'results/CTG/DGPT/test_threads_replies_and_off_stance_preds.pkl'), ('ATCON - [S]', 'results/CTG/Off_control_DGPT/Off_control_test_threads_safe_replies_and_off_stance_preds.pkl'), ('ATCON [N]', 'results/CTG/safe_stance_control_DGPT/safe_stance_control_test_threads_no_stance_replies_and_off_stance_preds.pkl'), ('ATCON [N][S]', 'results/CTG/both_control_DGPT/both_control_test_threads_safe_no_stance_replies_and_off_stance_preds.pkl'), ('DAPT [S]', 'results/CTG/Off_control_DGPT/DAPT_Off_control_safe_subset_test_threads_replies_and_off_stance_preds.pkl'), ('DAPT [S][N]', 'results/CTG/safe_stance_control_DGPT/DAPT_safe_stance_control_no_stance_subset_test_threads_replies_and_off_stance_preds.pkl')]" -o results/CTG/auto_eval/

Citation

@article{baheti2021just,
  title={Just Say No: Analyzing the Stance of Neural Dialogue Generation in Offensive Contexts},
  author={Baheti, Ashutosh and Sap, Maarten and Ritter, Alan and Riedl, Mark},
  journal={arXiv preprint arXiv:2108.11830},
  year={2021}
}
Owner
Ashutosh Baheti
I am a Computer Science PhD student working with Prof. Alan Ritter. I will be a graduate student at Georgia Tech starting from Fall 2020.
Ashutosh Baheti
Image-popularity-score - A novel deep regression method for image scoring.

Image-popularity-score - A novel deep regression method for image scoring.

Shoaib ahmed 1 Dec 26, 2021
IDRLnet, a Python toolbox for modeling and solving problems through Physics-Informed Neural Network (PINN) systematically.

IDRLnet IDRLnet is a machine learning library on top of PyTorch. Use IDRLnet if you need a machine learning library that solves both forward and inver

IDRL 105 Dec 17, 2022
Open source simulator for autonomous vehicles built on Unreal Engine / Unity, from Microsoft AI & Research

Welcome to AirSim AirSim is a simulator for drones, cars and more, built on Unreal Engine (we now also have an experimental Unity release). It is open

Microsoft 13.8k Jan 05, 2023
OCRA (Object-Centric Recurrent Attention) source code

OCRA (Object-Centric Recurrent Attention) source code Hossein Adeli and Seoyoung Ahn Please cite this article if you find this repository useful: For

Hossein Adeli 2 Jun 18, 2022
Retina blood vessel segmentation with a convolutional neural network

Retina blood vessel segmentation with a convolution neural network (U-net) This repository contains the implementation of a convolutional neural netwo

Orobix 1.2k Jan 06, 2023
Composing methods for ML training efficiency

MosaicML Composer contains a library of methods, and ways to compose them together for more efficient ML training.

MosaicML 2.8k Jan 08, 2023
Parameterising Simulated Annealing for the Travelling Salesman Problem

Parameterising Simulated Annealing for the Travelling Salesman Problem

Gary Sun 55 Jun 15, 2022
Codes and models of NeurIPS2021 paper - DominoSearch: Find layer-wise fine-grained N:M sparse schemes from dense neural networks

DominoSearch This is repository for codes and models of NeurIPS2021 paper - DominoSearch: Find layer-wise fine-grained N:M sparse schemes from dense n

11 Sep 10, 2022
PyTorch Implementation for Fracture Detection in Wrist Bone X-ray Images

wrist-d PyTorch Implementation for Fracture Detection in Wrist Bone X-ray Images note: Paper: Under Review at MPDI Diagnostics Submission Date: Novemb

Fatih UYSAL 5 Oct 12, 2022
The description of FMFCC-A (audio track of FMFCC) dataset and Challenge resluts.

FMFCC-A This project is the description of FMFCC-A (audio track of FMFCC) dataset and Challenge resluts. The FMFCC-A dataset is shared through BaiduCl

18 Dec 24, 2022
Utilizes Pose Estimation to offer sprinters cues based on an image of their running form.

Running-Form-Correction Utilizes Pose Estimation to offer sprinters cues based on an image of their running form. How to Run Dependencies You will nee

3 Nov 08, 2022
Official code for paper "ISNet: Costless and Implicit Image Segmentation for Deep Classifiers, with Application in COVID-19 Detection"

Official code for paper "ISNet: Costless and Implicit Image Segmentation for Deep Classifiers, with Application in COVID-19 Detection". LRPDenseNet.py

Pedro Ricardo Ariel Salvador Bassi 2 Sep 21, 2022
Content shared at DS-OX Meetup

Streamlit-Projects Streamlit projects available in this repo: An introduction to Streamlit presented at DS-OX (Feb 26, 2020) meetup Streamlit 101 - Ja

Arvindra 69 Dec 23, 2022
Neural network pruning for finding a sparse computational model for controlling a biological motor task.

MothPruning Scientific Overview Originally inspired by biological nervous systems, deep neural networks (DNNs) are powerful computational tools for mo

Olivia Thomas 0 Dec 14, 2022
Ganilla - Official Pytorch implementation of GANILLA

GANILLA We provide PyTorch implementation for: GANILLA: Generative Adversarial Networks for Image to Illustration Translation. Paper Arxiv Updates (Fe

Samet Hi 462 Dec 05, 2022
Arquitetura e Desenho de Software.

S203 Este é um repositório dedicado às aulas de Arquitetura e Desenho de Software, cuja sigla é "S203". E agora, José? Como não tenho muito a falar aq

Fabio 7 Oct 23, 2021
Fake News Detection Using Machine Learning Methods

Fake-News-Detection-Using-Machine-Learning-Methods Fake news is always a real and dangerous issue. However, with the presence and abundance of various

Achraf Safsafi 1 Jan 11, 2022
Bio-OFC gym implementation and Gym-Fly environment

Bio-OFC gym implementation and Gym-Fly environment This repository includes the gym compatible implementation of the Bio-OFC algorithm from the paper

Siavash Golkar 1 Nov 16, 2021
Hepsiburada - Hepsiburada Urun Bilgisi Cekme

Hepsiburada Urun Bilgisi Cekme from hepsiburada import Marka nike = Marka("nike"

Ilker Manap 8 Oct 26, 2022
This is a collection of our NAS and Vision Transformer work.

This is a collection of our NAS and Vision Transformer work.

Microsoft 828 Dec 28, 2022