💛 Code and Dataset for our EMNLP 2021 paper: "Perspective-taking and Pragmatics for Generating Empathetic Responses Focused on Emotion Causes"

Overview

Perspective-taking and Pragmatics for Generating
Empathetic Responses Focused on Emotion Causes

figure

Official PyTorch implementation and EmoCause evaluation set of our EMNLP 2021 paper 💛
Hyunwoo Kim, Byeongchang Kim, and Gunhee Kim. Perspective-taking and Pragmatics for Generating Empathetic Responses Focused on Emotion Causes. EMNLP, 2021 [Paper]

  • TL;DR: In order to express deeper empathy in dialogues, we argue that responses should focus on the cause of emotions. Inspired by perspective-taking of humans, we propose a generative emotion estimator (GEE) which can recognize emotion cause words solely based on sentence-level emotion labels without word-level annotations (i.e., weak-supervision). To evaluate our approach, we annotate emotion cause words and release the EmoCause evaluation set. We also propose a pragmatics-based method for generating responses focused on targeted words from the context.

Reference

If you use the materials in this repository as part of any published research, we ask you to cite the following paper:

@inproceedings{Kim:2021:empathy,
  title={Perspective-taking and Pragmatics for Generating Empathetic Responses Focused on Emotion Causes},
  author={Kim, Hyunwoo and Kim, Byeongchang and Kim, Gunhee},
  booktitle={EMNLP},
  year=2021
}

Implementation

System Requirements

  • Python 3.7.9
  • Pytorch 1.6.0
  • CUDA 10.2 supported GPU with at least 24GB memory
  • See environment.yml for details

Environment setup

Our code is built on the ParlAI framework. We recommend you create a conda environment as follows

conda env create -f environment.yml

and activate it with

conda activate focused-empathy
python -m spacy download en

EmoCause evaluation set for weakly-supervised emotion cause recognition

EmoCause is a dataset of annotated emotion cause words in emotional situations from the EmpatheticDialogues valid and test set. The goal is to recognize emotion cause words in sentences by training only on sentence-level emotion labels without word-level labels (i.e., weakly-supervised emotion cause recognition). EmoCause is based on the fact that humans do not recognize the cause of emotions with supervised learning on word-level cause labels. Thus, we do not provide a training set.

figure

You can download the EmoCause eval set [here].
Note, the dataset will be downloaded automatically when you run the experiment command below.

Data statistics and structure

#Emotion Label type #Label/Utterance #Utterance
EmoCause 32 Word 2.3 4.6K
{
  "original_situation": the original situations in the EmpatheticDialogues,
  "tokenized_situation": tokenized situation utterances using spacy,
  "emotion": emotion labels,
  "conv_id": id for each corresponding conversation in EmpatheticDialogues,
  "annotation": list of tuples: (emotion cause word, index),
  "labels": list of strings containing the emotion cause words
}

Running Experiments

All corresponding models will be downloaded automatically when running the following commands.
We also provide manual download links: [GEE] [Finetuned Blender]

Weakly-supervised emotion cause word recognition with GEE on EmoCause

You can evaluate our proposed Generative Emotion Estimator (GEE) on the EmoCause eval set.

python eval_emocause.py --model agents.gee_agent:GeeCauseInferenceAgent --fp16 False

Focused empathetic response generation with finetuned Blender on EmpatheticDialogues

You can evaluate our approach for generating focused empathetic responses on top of a finetuned Blender (Not familiar with Blender? See here!).

python eval_empatheticdialogues.py --model agents.empathetic_gee_blender:EmpatheticBlenderAgent --model_file data/models/finetuned_blender90m/model --fp16 False --empathy-score False

Adding the --alpha 0 flag will run the Blender without pragmatics. You can also try the random distractor (Plain S1) by adding --distractor-type random.

?? To measure the Interpretation and Exploration scores also, set the --empathy-score to True. It will automatically download the RoBERTa models finetuned on EmpatheticDialogues. For more details on empathy scores, visit the original repo.

Acknowledgements

We thank the anonymous reviewers for their helpful comments on this work.

This research was supported by Samsung Research Funding Center of Samsung Electronics under project number SRFCIT210101. The compute resource and human study are supported by Brain Research Program by National Research Foundation of Korea (NRF) (2017M3C7A1047860).

Have any question?

Please contact Hyunwoo Kim at hyunw.kim at vl dot snu dot ac dot kr.

License

This repository is MIT licensed. See the LICENSE file for details.

Owner
Hyunwoo Kim
PhD student at Seoul National University CSE
Hyunwoo Kim
An evaluation toolkit for voice conversion models.

Voice-conversion-evaluation An evaluation toolkit for voice conversion models. Sample test pair Generate the metadata for evaluating models. The direc

30 Aug 29, 2022
CoReNet is a technique for joint multi-object 3D reconstruction from a single RGB image.

CoReNet CoReNet is a technique for joint multi-object 3D reconstruction from a single RGB image. It produces coherent reconstructions, where all objec

Google Research 80 Dec 25, 2022
This is the official implementation of the paper "Object Propagation via Inter-Frame Attentions for Temporally Stable Video Instance Segmentation".

ObjProp Introduction This is the official implementation of the paper "Object Propagation via Inter-Frame Attentions for Temporally Stable Video Insta

Anirudh S Chakravarthy 6 May 03, 2022
Official implementation for TTT++: When Does Self-supervised Test-time Training Fail or Thrive

TTT++ This is an official implementation for TTT++: When Does Self-supervised Test-time Training Fail or Thrive? TL;DR: Online Feature Alignment + Str

VITA lab at EPFL 39 Dec 25, 2022
AirCode: A Robust Object Encoding Method

AirCode This repo contains source codes for the arXiv preprint "AirCode: A Robust Object Encoding Method" Demo Object matching comparison when the obj

Chen Wang 30 Dec 09, 2022
A very simple tool for situations where optimization with onnx-simplifier would exceed the Protocol Buffers upper file size limit of 2GB, or simply to separate onnx files to any size you want.

sne4onnx A very simple tool for situations where optimization with onnx-simplifier would exceed the Protocol Buffers upper file size limit of 2GB, or

Katsuya Hyodo 10 Aug 30, 2022
Code release for Local Light Field Fusion at SIGGRAPH 2019

Local Light Field Fusion Project | Video | Paper Tensorflow implementation for novel view synthesis from sparse input images. Local Light Field Fusion

1.1k Dec 27, 2022
Lenia - Mathematical Life Forms

For full version list, see Timeline in Lenia portal [2020-10-13] Update Python version with multi-kernel and multi-channel extensions (v3.4 LeniaNDK.p

Bert Chan 3.1k Dec 28, 2022
Awesome Deep Graph Clustering is a collection of SOTA, novel deep graph clustering methods

ADGC: Awesome Deep Graph Clustering ADGC is a collection of state-of-the-art (SOTA), novel deep graph clustering methods (papers, codes and datasets).

yueliu1999 297 Dec 27, 2022
一个多模态内容理解算法框架,其中包含数据处理、预训练模型、常见模型以及模型加速等模块。

Overview 架构设计 插件介绍 安装使用 框架简介 方便使用,支持多模态,多任务的统一训练框架 能力列表: bert + 分类任务 自定义任务训练(插件注册) 框架设计 框架采用分层的思想组织模型训练流程。 DATA 层负责读取用户数据,根据 field 管理数据。 Parser 层负责转换原

Tencent 265 Dec 22, 2022
Interactive Image Generation via Generative Adversarial Networks

iGAN: Interactive Image Generation via Generative Adversarial Networks Project | Youtube | Paper Recent projects: [pix2pix]: Torch implementation for

Jun-Yan Zhu 3.9k Dec 23, 2022
Official implementation of "Watermarking Images in Self-Supervised Latent-Spaces"

🔍 Watermarking Images in Self-Supervised Latent-Spaces PyTorch implementation and pretrained models for the paper. For details, see Watermarking Imag

Meta Research 32 Dec 13, 2022
SNE-RoadSeg in PyTorch, ECCV 2020

SNE-RoadSeg Introduction This is the official PyTorch implementation of SNE-RoadSeg: Incorporating Surface Normal Information into Semantic Segmentati

242 Dec 20, 2022
Simple Linear 2nd ODE Solver GUI - A 2nd constant coefficient linear ODE solver with simple GUI using euler's method

Simple_Linear_2nd_ODE_Solver_GUI Description It is a 2nd constant coefficient li

:) 4 Feb 05, 2022
Block-wisely Supervised Neural Architecture Search with Knowledge Distillation (CVPR 2020)

DNA This repository provides the code of our paper: Blockwisely Supervised Neural Architecture Search with Knowledge Distillation. Illustration of DNA

Changlin Li 215 Dec 19, 2022
Zero-Shot Text-to-Image Generation VQGAN+CLIP Dockerized

VQGAN-CLIP-Docker About Zero-Shot Text-to-Image Generation VQGAN+CLIP Dockerized This is a stripped and minimal dependency repository for running loca

Kevin Costa 73 Sep 11, 2022
Simple Pose: Rethinking and Improving a Bottom-up Approach for Multi-Person Pose Estimation

SimplePose Code and pre-trained models for our paper, “Simple Pose: Rethinking and Improving a Bottom-up Approach for Multi-Person Pose Estimation”, a

Jia Li 256 Dec 24, 2022
PyTorch implementation of deep GRAph Contrastive rEpresentation learning (GRACE).

GRACE The official PyTorch implementation of deep GRAph Contrastive rEpresentation learning (GRACE). For a thorough resource collection of self-superv

Big Data and Multi-modal Computing Group, CRIPAC 186 Dec 27, 2022
113 Nov 28, 2022
A computational block to solve entity alignment over textual attributes in a knowledge graph creation pipeline.

How to apply? Create your config.ini file following the example provided in config.ini Choose one of the options below to run: Run with Python3 pip in

Scientific Data Management Group 3 Jun 23, 2022