The source codes for ACL 2021 paper 'BoB: BERT Over BERT for Training Persona-based Dialogue Models from Limited Personalized Data'

Overview

BoB: BERT Over BERT for Training Persona-based Dialogue Models from Limited Personalized Data

This repository provides the implementation details for the ACL 2021 main conference paper:

BoB: BERT Over BERT for Training Persona-based Dialogue Models from Limited Personalized Data. [paper]

1. Data Preparation

In this work, we carried out persona-based dialogue generation experiments under a persona-dense scenario (English PersonaChat) and a persona-sparse scenario (Chinese PersonalDialog), with the assistance of a series of auxiliary inference datasets. Here we summarize the key information of these datasets and provide the links to download these datasets if they are directly accessible.

2. How to Run

The setup.sh script contains the necessary dependencies to run this project. Simply run ./setup.sh would install these dependencies. Here we take the English PersonaChat dataset as an example to illustrate how to run the dialogue generation experiments. Generally, there are three steps, i.e., tokenization, training and inference:

  • Preprocessing

     python preprocess.py --dataset_type convai2 \
     --trainset ./data/ConvAI2/train_self_original_no_cands.txt \
     --testset ./data/ConvAI2/valid_self_original_no_cands.txt \
     --nliset ./data/ConvAI2/ \
     --encoder_model_name_or_path ./pretrained_models/bert/bert-base-uncased/ \
     --max_source_length 64 \
     --max_target_length 32
    

    We have provided some data examples (dozens of lines) at the ./data directory to show the data format. preprocess.py reads different datasets and tokenizes the raw data into a series of vocab IDs to facilitate model training. The --dataset_type could be either convai2 (for English PersonaChat) or ecdt2019 (for Chinese PersonalDialog). Finally, the tokenized data will be saved as a series of JSON files.

  • Model Training

     CUDA_VISIBLE_DEVICES=0 python bertoverbert.py --do_train \
     --encoder_model ./pretrained_models/bert/bert-base-uncased/ \
     --decoder_model ./pretrained_models/bert/bert-base-uncased/ \
     --decoder2_model ./pretrained_models/bert/bert-base-uncased/ \
     --save_model_path checkpoints/ConvAI2/bertoverbert --dataset_type convai2 \
     --dumped_token ./data/ConvAI2/convai2_tokenized/ \
     --learning_rate 7e-6 \
     --batch_size 32
    

    Here we initialize encoder and both decoders from the same downloaded BERT checkpoint. And more parameter settings could be found at bertoverbert.py.

  • Evaluations

     CUDA_VISIBLE_DEVICES=0 python bertoverbert.py --dumped_token ./data/ConvAI2/convai2_tokenized/ \
     --dataset_type convai2 \
     --encoder_model ./pretrained_models/bert/bert-base-uncased/  \
     --do_evaluation --do_predict \
     --eval_epoch 7
    

    Empirically, in the PersonaChat experiment with default hyperparameter settings, the best-performing checkpoint should be found between epoch 5 and epoch 9. If the training procedure goes fine, there should be some results like:

     Perplexity on test set is 21.037 and 7.813.
    

    where 21.037 is the ppl from the first decoder and 7.813 is the final ppl from the second decoder. And the generated results is redirected to test_result.tsv, here is a generated example from the above checkpoint:

     persona:i'm terrified of scorpions. i am employed by the us postal service. i've a german shepherd named barnaby. my father drove a car for nascar.
     query:sorry to hear that. my dad is an army soldier.
     gold:i thank him for his service.
     response_from_d1:that's cool. i'm a train driver.
     response_from_d2:that's cool. i'm a bit of a canadian who works for america.  
    

    where d1 and d2 are the two BERT decoders, respectively.

  • Computing Infrastructure:

    • The released codes were tested on NVIDIA Tesla V100 32G and NVIDIA PCIe A100 40G GPUs. Notice that with a batch_size=32, the BoB model will need at least 20Gb GPU resources for training.

MISC

  • Build upon 🤗 Transformers.

  • Bibtex:

      @inproceedings{song-etal-2021-bob,
          title = "BoB: BERT Over BERT for Training Persona-based Dialogue Models from Limited Personalized Data",
          author = "Haoyu Song, Yan Wang, Kaiyan Zhang, Wei-Nan Zhang, Ting Liu",
          booktitle = "Proceedings of the 59th Annual Meeting of the Association for Computational Linguistics (ACL-2021)",
          month = "Aug",
          year = "2021",
          address = "Online",
          publisher = "Association for Computational Linguistics",
      }
      
  • Email: [email protected].

To SMOTE, or not to SMOTE?

To SMOTE, or not to SMOTE? This package includes the code required to repeat the experiments in the paper and to analyze the results. To SMOTE, or not

Amazon Web Services 1 Jan 03, 2022
The 2nd Version Of Slothybot

SlothyBot Go to this website: "https://bitly.com/SlothyBot" The 2nd Version Of Slothybot. The Bot Has Many Features, Such As: Moderation Commands; Kic

Slothy 0 Jun 01, 2022
Trainable Bilateral Filter Layer (PyTorch)

Trainable Bilateral Filter Layer (PyTorch) This repository contains our GPU-accelerated trainable bilateral filter layer (three spatial and one range

FabianWagner 26 Dec 25, 2022
PICARD - Parsing Incrementally for Constrained Auto-Regressive Decoding from Language Models

This is the official implementation of the following paper: Torsten Scholak, Nathan Schucher, Dzmitry Bahdanau. PICARD - Parsing Incrementally for Con

ElementAI 217 Jan 01, 2023
Official implementation of our CVPR2021 paper "OTA: Optimal Transport Assignment for Object Detection" in Pytorch.

OTA: Optimal Transport Assignment for Object Detection This project provides an implementation for our CVPR2021 paper "OTA: Optimal Transport Assignme

217 Jan 03, 2023
Generative Query Network (GQN) in PyTorch as described in "Neural Scene Representation and Rendering"

Update 2019/06/24: A model trained on 10% of the Shepard-Metzler dataset has been added, the following notebook explains the main features of this mod

Jesper Wohlert 313 Dec 27, 2022
Deeply Supervised, Layer-wise Prediction-aware (DSLP) Transformer for Non-autoregressive Neural Machine Translation

Non-Autoregressive Translation with Layer-Wise Prediction and Deep Supervision Training Efficiency We show the training efficiency of our DSLP model b

Chenyang Huang 36 Oct 31, 2022
The PyTorch implementation of Directed Graph Contrastive Learning (DiGCL), NeurIPS-2021

Directed Graph Contrastive Learning Paper | Poster | Supplementary The PyTorch implementation of Directed Graph Contrastive Learning (DiGCL). In this

Tong Zekun 28 Jan 08, 2023
Code for ACL 21: Generating Query Focused Summaries from Query-Free Resources

marge This repository releases the code for Generating Query Focused Summaries from Query-Free Resources. Please cite the following paper [bib] if you

Yumo Xu 28 Nov 10, 2022
Source code of all the projects of Udacity Self-Driving Car Engineer Nanodegree.

self-driving-car In this repository I will share the source code of all the projects of Udacity Self-Driving Car Engineer Nanodegree. Hope this might

Andrea Palazzi 2.4k Dec 29, 2022
A general-purpose encoder-decoder framework for Tensorflow

READ THE DOCUMENTATION CONTRIBUTING A general-purpose encoder-decoder framework for Tensorflow that can be used for Machine Translation, Text Summariz

Google 5.5k Jan 07, 2023
Twins: Revisiting the Design of Spatial Attention in Vision Transformers

Twins: Revisiting the Design of Spatial Attention in Vision Transformers Very recently, a variety of vision transformer architectures for dense predic

482 Dec 18, 2022
tensorrt int8 量化yolov5 4.0 onnx模型

onnx模型转换为 int8 tensorrt引擎

123 Dec 28, 2022
Implementation of Memformer, a Memory-augmented Transformer, in Pytorch

Memformer - Pytorch Implementation of Memformer, a Memory-augmented Transformer, in Pytorch. It includes memory slots, which are updated with attentio

Phil Wang 60 Nov 06, 2022
Bayesian Meta-Learning Through Variational Gaussian Processes

vmgp This is the repository of Vivek Myers and Nikhil Sardana for our CS 330 final project, Bayesian Meta-Learning Through Variational Gaussian Proces

Vivek Myers 2 Nov 17, 2022
Make your own game in a font!

Project structure. Included is a suite of tools to create font games. Tutorial: For a quick tutorial about how to make your own game go here For devel

Michael Mulet 125 Dec 04, 2022
Chatbot in 200 lines of code using TensorLayer

Seq2Seq Chatbot This is a 200 lines implementation of Twitter/Cornell-Movie Chatbot, please read the following references before you read the code: Pr

TensorLayer Community 820 Dec 17, 2022
Source code for the NeurIPS 2021 paper "On the Second-order Convergence Properties of Random Search Methods"

Second-order Convergence Properties of Random Search Methods This repository the paper "On the Second-order Convergence Properties of Random Search Me

Adamos Solomou 0 Nov 13, 2021
HyperPose is a library for building high-performance custom pose estimation applications.

HyperPose is a library for building high-performance custom pose estimation applications.

TensorLayer Community 1.2k Jan 04, 2023
Distilling Motion Planner Augmented Policies into Visual Control Policies for Robot Manipulation (CoRL 2021)

Distilling Motion Planner Augmented Policies into Visual Control Policies for Robot Manipulation [Project website] [Paper] This project is a PyTorch i

Cognitive Learning for Vision and Robotics (CLVR) lab @ USC 6 Feb 28, 2022