Implementation of EMNLP 2017 Paper "Natural Language Does Not Emerge 'Naturally' in Multi-Agent Dialog" using PyTorch and ParlAI

Overview

Language Emergence in Multi Agent Dialog

Code for the Paper

Natural Language Does Not Emerge 'Naturally' in Multi-Agent Dialog Satwik Kottur, José M. F. Moura, Stefan Lee, Dhruv Batra EMNLP 2017 (Best Short Paper)

If you find this code useful, please consider citing the original work by authors:

@inproceedings{visdial,
  title = {{N}atural {L}anguage {D}oes {N}ot {E}merge '{N}aturally' in {M}ulti-{A}gent {D}ialog},
  author = {Satwik Kottur and Jos\'e M.F. Moura and Stefan Lee and Dhruv Batra},
  journal = {CoRR},
  volume = {abs/1706.08502},
  year = {2017}
}

Introduction

This paper focuses on proving that the emergence of language by agent-dialogs is not necessarily compositional and human interpretable. To demonstrate this fact, the paper uses a Image Guessing Game "Task and Talk" as a testbed. The game comprises of two bots, a questioner and answerer.

Answerer has an image attributes, as shown in figure. Questioner cannot see the image, and has a task of finding two attributes of the image (color, shape, style). Answerer does not know the task. Multiple rounds of q/a dialogs occur, after which the questioner has to guess the attributes. Reward to both bots is given on basis of prediction of questioner.

Task And Talk

Further, the paper discusses the ways to make the grounded language more compositional and human interpretable by restrictions on how two agents may communicate.

Setup

This repository is only compatible with Python3, as ParlAI imposes this restriction; it requires Python3.

  1. Follow instructions under Installing ParlAI section from ParlAI site.
  2. Follow instructions outlined on PyTorch Homepage for installing PyTorch (Python3).
  3. tqdm is used for providing progress bars, which can be downloaded via pip3.

Dataset Generation

Described in Section 2 and Figure 1 of paper. Synthetic dataset of shape attributes is generated using data/generate_data.py script. To generate the dataset, simply execute:

cd data
python3 generate_data.py
cd ..

This will create data/synthetic_dataset.json, with 80% training data (312 samples) and rest validation data (72 samples). Save path, size of dataset and split ratio can be changed through command line. For more information:

python3 generate_data.py --help

Dataset Schema

{
    "attributes": ["color", "shape", "style"],
    "properties": {
        "color": ["red", "green", "blue", "purple"],
        "shape": ["square", "triangle", "circle", "star"],
        "style": ["dotted", "solid", "filled", "dashed"]
    },
    "split_data": {
        "train": [ ["red", "square", "solid"], ["color2", "shape2", "style2"] ],
        "val": [ ["green", "star", "dashed"], ["color2", "shape2", "style2"] ]
    },
    "task_defn": [ [0, 1], [1, 0], [0, 2], [2, 0], [1, 2], [2, 1] ]
}

A custom Pytorch Dataset class is written in dataloader.py which ingests this dataset and provides random batch / complete data while training and validation.

Training

Training happens through train.py, which iteratively carries out multiple rounds of dialog in each episode, between our ParlAI Agents - QBot and ABot, both placed in a ParlAI World. The dialog is completely cooperative - both bots receive same reward after each episode.

This script prints the cumulative reward, training accuracy and validation accuracy after fixed number of iterations. World checkpoints are saved after regular intervals as well.

Training is controlled by various options, which can be passed through command line. All of them have suitable default values set in options.py, although they can be tinkered easily. They can also be viewed as:

python3 train.py --help   # view command line args (you need not change "Main ParlAI Arguments")

Questioner and Answerer bot classes are defined in bots.py and World is defined in world.py. Paper describes three configurations for training:

Overcomplete Vocabulary

Described in Section 4.1 of paper. Both QBot and Abot will have vocabulary size equal to number of possible objects (64).

python3 train.py --data-path /path/to/json --q-out-vocab 64 --a-out-vocab 64

Attribute-Value Vocabulary

Described in Section 4.2 of paper. Both QBot will have vocab size 3 (color, shape, style) and Abot will have vocabulary size equal to number of possible attribute values (4 * 3).

python3 train.py --data-path /path/to/json --q-out-vocab 3 --a-out-vocab 12

Memoryless ABot, Minimal Vocabulary (best)

Described in Section 4.3 of paper. Both QBot will have vocab size 3 (color, shape, style) and Abot will have vocabulary size equal to number of possible values per attribute (4).

python3 train.py --q-out-vocab 3 --a-out-vocab 4 --data-path /path/to/json --memoryless-abot

Checkpoints would be saved by default in checkpoints directory every 100 epochs. Be default, CPU is used for training. Include --use-gpu in command-line to train using GPU.

Refer script docstring and inline comments in train.py for understanding of execution.

Evaluation

Saved world checkpoints can be evaluated using the evaluate.py script. Besides evaluation, the dialog between QBot and ABot for all examples can be saved in JSON format. For evaluation:

python3 evaluate.py --load-path /path/to/pth/checkpoint

Save the conversation of bots by providing --save-conv-path argument. For more information:

python3 evaluate.py --help

Evaluation script reports training and validation accuracies of the world. Separate accuracies for first attribute match, second attribute match, both match and atleast one match are reported.

Sample Conversation

Im: ['purple', 'triangle', 'filled'] -  Task: ['shape', 'color']
    Q1: X    A1: 2
    Q2: Y    A2: 0
    GT: ['triangle', 'purple']  Pred: ['triangle', 'purple']

Pretrained World Checkpoint

Best performing world checkpoint has been released here, along with details to reconstruct the world object using this checkpoint.

Reported metrics:

Overall accuracy [train]: 96.47 (first: 97.76, second: 98.72, atleast_one: 100.00)
Overall accuracy [val]: 98.61 (first: 98.61, second: 100.00, atleast_one: 100.00)

TODO: Visualizing evolution chart - showing emergence of grounded language.

References

  1. Satwik Kottur, José M.F.Moura, Stefan Lee, Dhruv Batra. Natural Language Does Not Emerge Naturally in Multi-Agent Dialog. EMNLP 2017. [arxiv]
  2. Alexander H. Miller, Will Feng, Adam Fisch, Jiasen Lu, Dhruv Batra, Antoine Bordes, Devi Parikh, Jason Weston. ParlAI: A Dialog Research Software Platform. 2017. [arxiv]
  3. Abhishek Das, Satwik Kottur, Khushi Gupta, Avi Singh, Deshraj Yadav, José M.F. Moura, Devi Parikh and Dhruv Batra. Visual Dialog. CVPR 2017. [arxiv]
  4. Abhishek Das, Satwik Kottur, José M.F. Moura, Stefan Lee, and Dhruv Batra. Learning Cooperative Visual Dialog Agents with Deep Reinforcement Learning. ICCV 2017. [arxiv]
  5. ParlAI Docs. [http://parl.ai/static/docs/index.html]
  6. PyTorch Docs. [http://pytorch.org/docs/master]

Standing on the Shoulders of Giants

The ease of implementing this paper using ParlAI framework is heavy accredited to the original source code released by authors of this paper. [batra-mlp-lab/lang-emerge]

License

BSD

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

Don’t be Contradicted with Anything!CI-ToD: Towards Benchmarking Consistency for Task-oriented Dialogue System This repository contains the PyTorch im

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

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

Fader Networks: Manipulating Images by Sliding Attributes - NIPS 2017
Fader Networks: Manipulating Images by Sliding Attributes - NIPS 2017

FaderNetworks PyTorch implementation of Fader Networks (NIPS 2017). Fader Networks can generate different realistic versions of images by modifying at

Oriented Response Networks, in CVPR 2017
Oriented Response Networks, in CVPR 2017

Oriented Response Networks [Home] [Project] [Paper] [Supp] [Poster] Torch Implementation The torch branch contains: the official torch implementation

Improving Convolutional Networks via Attention Transfer (ICLR 2017)
Improving Convolutional Networks via Attention Transfer (ICLR 2017)

Attention Transfer PyTorch code for "Paying More Attention to Attention: Improving the Performance of Convolutional Neural Networks via Attention Tran

meProp: Sparsified Back Propagation for Accelerated Deep Learning (ICML 2017)
meProp: Sparsified Back Propagation for Accelerated Deep Learning (ICML 2017)

meProp The codes were used for the paper meProp: Sparsified Back Propagation for Accelerated Deep Learning with Reduced Overfitting (ICML 2017) [pdf]

🌈 PyTorch Implementation for EMNLP'21 Findings
🌈 PyTorch Implementation for EMNLP'21 Findings "Reasoning Visual Dialog with Sparse Graph Learning and Knowledge Transfer"

SGLKT-VisDial Pytorch Implementation for the paper: Reasoning Visual Dialog with Sparse Graph Learning and Knowledge Transfer Gi-Cheon Kang, Junseok P

This repository contains the official implementation code of the paper Improving Multimodal Fusion with Hierarchical Mutual Information Maximization for Multimodal Sentiment Analysis, accepted at EMNLP 2021.
This repository contains the official implementation code of the paper Improving Multimodal Fusion with Hierarchical Mutual Information Maximization for Multimodal Sentiment Analysis, accepted at EMNLP 2021.

MultiModal-InfoMax This repository contains the official implementation code of the paper Improving Multimodal Fusion with Hierarchical Mutual Informa

Implementation for the EMNLP 2021 paper "Interactive Machine Comprehension with Dynamic Knowledge Graphs".

Interactive Machine Comprehension with Dynamic Knowledge Graphs Implementation for the EMNLP 2021 paper. Dependencies apt-get -y update apt-get instal

Releases(v1.0)
  • v1.0(Nov 10, 2017)

    Attached checkpoint was the best one when the following script was executed at this commit:

    python3 train.py --use-gpu --memoryless-abot --num-epochs 99999
    

    Evaluation of the checkpoint:

    python3 evaluate.py --load-path world_best.pth 
    

    Reported metrics:

    Overall accuracy [train]: 96.47 (first: 97.76, second: 98.72, atleast_one: 100.00)
    Overall accuracy [val]: 98.61 (first: 98.61, second: 100.00, atleast_one: 100.00)
    

    Minimal snippet to reconstruct the world using this checkpoint:

    import torch
    
    from bots import Questioner, Answerer
    from world import QAWorld
    
    world_dict = torch.load('path/to/checkpoint.pth')
    questioner = Questioner(world_dict['opt'])
    answerer = Answerer(world_dict['opt'])
    if world_dict['opt'].get('use_gpu'):
        questioner, answerer = questioner.cuda(), answerer.cuda()
    
    questioner.load_state_dict(world_dict['qbot'])
    answerer.load_state_dict(world_dict['abot'])
    world = QAWorld(world_dict['opt'], questioner, answerer)
    
    Source code(tar.gz)
    Source code(zip)
    world_best.pth(679.17 KB)
Owner
Karan Desai
Karan Desai
Analysis of Antarctica sequencing samples contaminated with SARS-CoV-2

Analysis of SARS-CoV-2 reads in sequencing of 2018-2019 Antarctica samples in PRJNA692319 The samples analyzed here are described in this preprint, wh

Jesse Bloom 4 Feb 09, 2022
On the Limits of Pseudo Ground Truth in Visual Camera Re-Localization

On the Limits of Pseudo Ground Truth in Visual Camera Re-Localization This repository contains the evaluation code and alternative pseudo ground truth

Torsten Sattler 36 Dec 22, 2022
A tensorflow/keras implementation of StyleGAN to generate images of new Pokemon.

PokeGAN A tensorflow/keras implementation of StyleGAN to generate images of new Pokemon. Dataset The model has been trained on dataset that includes 8

19 Jul 26, 2022
Stochastic Scene-Aware Motion Prediction

Stochastic Scene-Aware Motion Prediction [Project Page] [Paper] Description This repository contains the training code for MotionNet and GoalNet of SA

Mohamed Hassan 31 Dec 09, 2022
Code examples and benchmarks from the paper "Understanding Entropy Coding With Asymmetric Numeral Systems (ANS): a Statistician's Perspective"

Code For the Paper "Understanding Entropy Coding With Asymmetric Numeral Systems (ANS): a Statistician's Perspective" Author: Robert Bamler Date: 22 D

4 Nov 02, 2022
An open source implementation of CLIP.

OpenCLIP Welcome to an open source implementation of OpenAI's CLIP (Contrastive Language-Image Pre-training). The goal of this repository is to enable

2.7k Dec 31, 2022
Official code for "End-to-End Optimization of Scene Layout" -- including VAE, Diff Render, SPADE for colorization (CVPR 2020 Oral)

End-to-End Optimization of Scene Layout Code release for: End-to-End Optimization of Scene Layout CVPR 2020 (Oral) Project site, Bibtex For help conta

Andrew Luo 41 Dec 09, 2022
Deep Learning Slide Captcha

滑动验证码深度学习识别 本项目使用深度学习 YOLOV3 模型来识别滑动验证码缺口,基于 https://github.com/eriklindernoren/PyTorch-YOLOv3 修改。 只需要几百张缺口标注图片即可训练出精度高的识别模型,识别效果样例: 克隆项目 运行命令: git cl

Python3WebSpider 55 Jan 02, 2023
Official PyTorch implementation of the paper "Graph-based Generative Face Anonymisation with Pose Preservation" in ICIAP 2021

Contents AnonyGAN Installation Dataset Preparation Generating Images Using Pretrained Model Train and Test New Models Evaluation Acknowledgments Citat

Nicola Dall'Asen 10 May 24, 2022
Plugin for Gaffer providing direct acess to asset from PolyHaven.com. Only HDRIs at the moment, Cycles and Arnold supported

GafferHaven Plugin for Gaffer providing direct acess to asset from PolyHaven.com. Only HDRIs are supported at the moment, in Cycles and Arnold lights.

Jakub Vondra 6 Jan 26, 2022
Fast, Attemptable Route Planner for Navigation in Known and Unknown Environments

FAR Planner uses a dynamically updated visibility graph for fast replanning. The planner models the environment with polygons and builds a global visi

Fan Yang 346 Dec 30, 2022
Generative Art Using Neural Visual Grammars and Dual Encoders

Generative Art Using Neural Visual Grammars and Dual Encoders Arnheim 1 The original algorithm from the paper Generative Art Using Neural Visual Gramm

DeepMind 231 Jan 05, 2023
Code for WECHSEL: Effective initialization of subword embeddings for cross-lingual transfer of monolingual language models.

WECHSEL Code for WECHSEL: Effective initialization of subword embeddings for cross-lingual transfer of monolingual language models. arXiv: https://arx

Institute of Computational Perception 45 Dec 29, 2022
Official repository for "On Improving Adversarial Transferability of Vision Transformers" (2021)

Improving-Adversarial-Transferability-of-Vision-Transformers Muzammal Naseer, Kanchana Ranasinghe, Salman Khan, Fahad Khan, Fatih Porikli arxiv link A

Muzammal Naseer 47 Dec 02, 2022
TransZero++: Cross Attribute-guided Transformer for Zero-Shot Learning

TransZero++ This repository contains the testing code for the paper "TransZero++: Cross Attribute-guided Transformer for Zero-Shot Learning" submitted

Shiming Chen 6 Aug 16, 2022
Some pre-commit hooks for OpenMMLab projects

pre-commit-hooks Some pre-commit hooks for OpenMMLab projects. Using pre-commit-hooks with pre-commit Add this to your .pre-commit-config.yaml - rep

OpenMMLab 16 Nov 29, 2022
TabNet for fastai

TabNet for fastai This is an adaptation of TabNet (Attention-based network for tabular data) for fastai (=2.0) library. The original paper https://ar

Mikhail Grankin 116 Oct 21, 2022
Code for "Multi-View Multi-Person 3D Pose Estimation with Plane Sweep Stereo"

Multi-View Multi-Person 3D Pose Estimation with Plane Sweep Stereo This repository includes the source code for our CVPR 2021 paper on multi-view mult

Jiahao Lin 66 Jan 04, 2023
The Pytorch implementation for "Video-Text Pre-training with Learned Regions"

Region_Learner The Pytorch implementation for "Video-Text Pre-training with Learned Regions" (arxiv) We are still cleaning up the code further and pre

Rui Yan 0 Mar 20, 2022
Info and sample codes for "NTU RGB+D Action Recognition Dataset"

"NTU RGB+D" Action Recognition Dataset "NTU RGB+D 120" Action Recognition Dataset "NTU RGB+D" is a large-scale dataset for human action recognition. I

Amir Shahroudy 578 Dec 30, 2022