The Few-Shot Bot: Prompt-Based Learning for Dialogue Systems

Related tags

Deep LearningFSB
Overview

Few-Shot Bot: Prompt-Based Learning for Dialogue Systems

This repository includes the dataset, experiments results, and code for the paper:

Few-Shot Bot: Prompt-Based Learning for Dialogue Systems PDF.

Authors: Andrea Madotto, Zhaojiang Lin, Genta Indra Winata, Pascale Fung

Abstract

Learning to converse using only a few examples is a grand challenge in Conversational AI. The current best conversational models, which are either good chit-chatters (e.g., BlenderBot) or goal-oriented systems (e.g., MinTL), are language models (LMs) fine-tuned on large conversational datasets. Training these models is expensive, both in terms of computational resources and time, and it is hard to keep these models up to date with new conversational skills. A simple yet unexplored solution is prompt-based few-shot learning (Brown et al. 2020) which does not require gradient-based fine-tuning but instead uses a few examples in the LM context as the only source of learning. In this paper, we explore prompt-based few-shot learning in dialogue tasks. We benchmark LMs of different sizes in 9 response generation tasks, which include a variety of knowledge-grounded tasks, task-oriented generations, general open-chat, and controlled stylistic generation, and 5 conversational parsing tasks, which include dialogue state tracking, graph path generation, persona information extraction, and document retrieval. The current largest, released, LM (GPT-J-6B) achieves competitive performance to full-training state-of-the-art models by using the prompt-based few-shot learning, thus no training. Moreover, we proposed a novel perplexity-based classifier, that also does not require any fine-tuning, to select the most appropriate prompt given a dialogue history, as to create an all-in-one model with multiple dialogue skills. Finally, by combining the power of prompt-based few-shot learning and the skill selector, we create an end-to-end chatbot named the Few-Shot Bot, which automatically selects the most appropriate conversational skill, queries different KBs or the internet, and uses it to generate a human-like response, all by using only one dialogue example per skill.

Installation

In this repo, we load all the validation and test sets used in the evaluation. For running the experiments and the demo, you should install the following requirements:

pip install -r requirements.txt

Basic Running

Reproducing the results and plots

The generation folder stores the generated responses of the experiments in all datasets. To generate the tables and the plots in the paper, run

python generate_plots_tables.py

This script loads all the files and computes the mean between different runs and it generates the plots. Note that this script is very custum for each datasets, but it can serve as guide line for future extentions.

Running the experiments

There are three main files to run 1) response generation (main_response_generation.py), 2) conversational parsing (main_conversational_parsing.py), and 3) skill-selector (main_skill_selector.py). In these files, we load the necessary prompt (load_prefix) and we run the generation (generate_response) for each sample in the test set. Since each dialogue skill require a different template, as shown in the paper, we create a function that converts structured data into the correct shot prompt. An example of this function can be found in prompts/persona_chat.py, and in generic_prompts.py we store the generation functions.

In each main file there is configuration object (mapper) which specify meta-information about the task (i.e., number of shots, generation length, decoding type, prompt converter). Expecially for conversational parsing, there are different decoding type. For example, in MWOZ the model generates the dialogue state, which is further looped into the next turn.

How to run?

For example, to run the persona chat experiments (0, 1, k-shots), you can use the following command:

python main_response_generation.py --model_checkpoint EleutherAI/gpt-j-6B --dataset persona --gpu 0

In case your GPU has less that 16GB, then you could add --multigpu to spawn 4 GPUs (e.g., 1080Ti) and do inference in parallel. Similarly, for conversational parsing tasks, you could use:

python main_conversational_parsing.py --model_checkpoint EleutherAI/gpt-j-6B --dataset wow-parse --gpu 0

Notice that some parsing task requires a knowledge base (e.g., dialKG-parse requires the KG in neo4j). Finally, to run the skill-selector task, you could use:

python main_skill_selector.py --model_checkpoint EleutherAI/gpt-j-6B --shots_k 6 --repetition 1 --gpu 0

where repetition is the seed for selecting random samples in the prompts.

Runners

In the runners folder, we provide a rudimental runner to run all the experiments and reproduce the results in the paper.

Few-Shot Bot

There are two modes for the FSB such as 1) controlled style generation and 2) full-model. Currently we support the controlled style generation model. Check the FSB-CG.ipynb to try to interact with FSB in your local machine, or try directly in colab at https://colab.research.google.com/drive/15hQv1V3Cs5kQVfLOE_FZc1VCWQ3YpWVd?usp=sharing (Remeber to select the enviroment with GPU).

Owner
Andrea Madotto
Deep learning, Machine Learning, Learning To Learn, Natural Language Processing.
Andrea Madotto
The code for our paper Semi-Supervised Learning with Multi-Head Co-Training

Semi-Supervised Learning with Multi-Head Co-Training (PyTorch) Abstract Co-training, extended from self-training, is one of the frameworks for semi-su

cmc 6 Dec 04, 2022
Reinforcement learning library(framework) designed for PyTorch, implements DQN, DDPG, A2C, PPO, SAC, MADDPG, A3C, APEX, IMPALA ...

Automatic, Readable, Reusable, Extendable Machin is a reinforcement library designed for pytorch. Build status Platform Status Linux Windows Supported

Iffi 348 Dec 24, 2022
Semantic-aware Grad-GAN for Virtual-to-Real Urban Scene Adaption

SG-GAN TensorFlow implementation of SG-GAN. Prerequisites TensorFlow (implemented in v1.3) numpy scipy pillow Getting Started Train Prepare dataset. W

lplcor 61 Jun 07, 2022
POCO: Point Convolution for Surface Reconstruction

POCO: Point Convolution for Surface Reconstruction by: Alexandre Boulch and Renaud Marlet Abstract Implicit neural networks have been successfully use

valeo.ai 93 Dec 29, 2022
Material related to the Principles of Cloud Computing course.

CloudComputingCourse Material related to the Principles of Cloud Computing course. This repository comprises material that I use to teach my Principle

Aniruddha Gokhale 15 Dec 02, 2022
Some toy examples of score matching algorithms written in PyTorch

toy_gradlogp This repo implements some toy examples of the following score matching algorithms in PyTorch: ssm-vr: sliced score matching with variance

Ending Hsiao 21 Dec 26, 2022
VD-BERT: A Unified Vision and Dialog Transformer with BERT

VD-BERT: A Unified Vision and Dialog Transformer with BERT PyTorch Code for the following paper at EMNLP2020: Title: VD-BERT: A Unified Vision and Dia

Salesforce 44 Nov 01, 2022
Arbitrary Distribution Modeling with Censorship in Real Time 59 2 60 3 Bidding Advertising for KDD'21

Arbitrary_Distribution_Modeling This repo implements the Neighborhood Likelihood Loss (NLL) and Arbitrary Distribution Modeling (ADM, with Interacting

7 Jan 03, 2023
Hummingbird compiles trained ML models into tensor computation for faster inference.

Hummingbird Introduction Hummingbird is a library for compiling trained traditional ML models into tensor computations. Hummingbird allows users to se

Microsoft 3.1k Dec 30, 2022
Good Semi-Supervised Learning That Requires a Bad GAN

Good Semi-Supervised Learning that Requires a Bad GAN This is the code we used in our paper Good Semi-supervised Learning that Requires a Bad GAN Ziha

Zhilin Yang 177 Dec 12, 2022
Creating predictive checklists from data using integer programming.

Learning Optimal Predictive Checklists A Python package to learn simple predictive checklists from data subject to customizable constraints. For more

Healthy ML 5 Apr 19, 2022
The implementation for paper Joint t-SNE for Comparable Projections of Multiple High-Dimensional Datasets.

Joint t-sne This is the implementation for paper Joint t-SNE for Comparable Projections of Multiple High-Dimensional Datasets. abstract: We present Jo

IDEAS Lab 7 Dec 18, 2022
“袋鼯麻麻——智能购物平台”能够精准地定位识别每一个商品

“袋鼯麻麻——智能购物平台”能够精准地定位识别每一个商品,并且能够返回完整地购物清单及顾客应付的实际商品总价格,极大地降低零售行业实际运营过程中巨大的人力成本,提升零售行业无人化、自动化、智能化水平。

thomas-yanxin 192 Jan 05, 2023
PyTorch implementation of paper A Fast Knowledge Distillation Framework for Visual Recognition.

FKD: A Fast Knowledge Distillation Framework for Visual Recognition Official PyTorch implementation of paper A Fast Knowledge Distillation Framework f

Zhiqiang Shen 129 Dec 24, 2022
[ICML'21] Estimate the accuracy of the classifier in various environments through self-supervision

What Does Rotation Prediction Tell Us about Classifier Accuracy under Varying Testing Environments? [Paper] [ICML'21 Project] PyTorch Implementation T

24 Oct 26, 2022
AlphaNet Improved Training of Supernet with Alpha-Divergence

AlphaNet: Improved Training of Supernet with Alpha-Divergence This repository contains our PyTorch training code, evaluation code and pretrained model

Facebook Research 87 Oct 10, 2022
Neurons Dataset API - The official dataloader and visualization tools for Neurons Datasets.

Neurons Dataset API - The official dataloader and visualization tools for Neurons Datasets. Introduction We propose our dataloader API for loading and

1 Nov 19, 2021
Code and project page for ICCV 2021 paper "DisUnknown: Distilling Unknown Factors for Disentanglement Learning"

DisUnknown: Distilling Unknown Factors for Disentanglement Learning See introduction on our project page Requirements PyTorch = 1.8.0 torch.linalg.ei

Sitao Xiang 24 May 16, 2022
BarcodeRattler - A Raspberry Pi Powered Barcode Reader to load a game on the Mister FPGA using MBC

Barcode Rattler A Raspberry Pi Powered Barcode Reader to load a game on the Mist

Chrissy 29 Oct 31, 2022
On the model-based stochastic value gradient for continuous reinforcement learning

On the model-based stochastic value gradient for continuous reinforcement learning This repository is by Brandon Amos, Samuel Stanton, Denis Yarats, a

Facebook Research 46 Dec 15, 2022