ZEBRA: Zero-Shot Example-Based Retrieval Augmentation for Commonsense Question Answering
π οΈ Installation
Installation from PyPi
pip install zebra-qa
Installation from source
git clone https://github.com/sapienzanlp/zebra.git
cd zebra
conda create -n zebra python==3.10
conda activate zebra
pip install -e .
π Quick Start
ZEBRA is a plug-and-play retrieval augmentation framework for Commonsense Question Answering.
It is composed of three pipeline stages: example retrieval, knowledge generation and informed reasoning.
- Example retrieval: given a question, we retrieve relevant examples of question-knowledge pairs from a large collection
- Knowledge generation: we prompt an LLM to generate useful explanations for the given input question by leveraging the relationships in the retrieved question-knowledge pairs.
- Informed reasoning: we prompt the same LLM for the question answering task by taking advantage of the previously generated explanations.
Here is an example of how to use ZEBRA for question answering:
from zebra import Zebra
# Load Zebra with language model, retriever, document index and explanations.
zebra = Zebra(
model="meta-llama/Meta-Llama-3-8B-Instruct",
retriever="sapienzanlp/zebra-retriever-e5-base-v2",
document_index="sapienzanlp/zebra-kb"
)
# Provide a question and answer choices.
questions = [
"What should you do if you see someone hurt and in need of help?",
"If your friend is upset, what is the best way to support them?",
"What should you do if your phone battery is running low in a public place?",
"What should you do if you are running late for an important meeting?",
]
choices = [
["Walk away.", "Call for help.", "Take a photo for social media."],
["Listen to them and offer comfort.", "Tell them they are overreacting.", "Ignore them and walk away."],
["Borrow a stranger's phone.", "Use public charging station.", "Leave your phone unattended while it charges."],
["Rush through traffic.", "Call and inform them you will be late.", "Do not show up at all."],
]
# Generate knowledge and perform question answering.
zebra_output = zebra.pipeline(questions=questions, choices=choices)
The output contains, for each question, a list of generated explanations and the predicted answer:
ZebraOutput(
explanations=[
[
"Walking away would be neglecting the person's need for help and potentially putting them in danger.",
'Calling for help, such as 911, is the most effective way to get the person the assistance they need.',
"Taking a photo for social media might spread awareness, but it's not a direct way to help the person in need."
],
[
'Listening and offering comfort shows empathy and understanding.',
"Telling someone they're overreacting can be dismissive and unhelpful.",
'Ignoring someone in distress can be hurtful and unkind.'
],
[
"Borrow a stranger's phone: Unwise, as it's a security risk and may lead to theft or damage.",
"Use public charging station: Safe and convenient, as it's a designated charging area.",
'Leave your phone unattended while it charges: Not recommended, as it may be stolen or damaged.'
],
[
'Rush through traffic: This option is risky and may lead to accidents or stress.',
'Call and inform them you will be late: This is the most likely option, as it shows respect for the meeting and allows for adjustments.',
'Do not show up at all: This is unacceptable, as it shows disrespect for the meeting and may damage relationships.'
],
],
answers=[
"Call for help.",
"Listen to them and offer comfort.",
"Use public charging station.",
"Call and inform them you will be late."
],
)
You can also call the zebra.pipeline
method with the return_dict
parameter set to True
to ask ZEBRA to return also the retrieved examples along with their explanations.
Models and Data
Models and data can be found at the following HuggingFace Collection π€.
π Performance
We evaluate the performance of ZEBRA on 8 well-established commonsense question answering datasets. The following table shows the results (accuracy) of the models before / after the application of ZEBRA.
Model | CSQA | ARC-C | ARC-E | OBQA | PIQA | QASC | CSQA2 | WG | AVG |
---|---|---|---|---|---|---|---|---|---|
Mistral-7B-Instruct-v0.2 | 68.2 / 73.3 | 72.4 / 75.2 | 85.8 / 87.4 | 68.8 / 75.8 | 76.1 / 80.2 | 66.1 / 68.3 | 58.5 / 67.5 | 55.8 / 60.7 | 68.9 / 73.5 |
Phi3-small-8k-Instruct | 77.2 / 80.9 | 90.4 / 91.6 | 96.9 / 97.7 | 90.4 / 91.2 | 86.6 / 88.1 | 83.5 / 81.0 | 68.0 / 74.6 | 79.1 / 81.0 | 84.0 / 85.8 |
Meta-Llama-3-8b-Instruct | 73.9 / 78.7 | 79.4 / 83.5 | 91.7 / 92.9 | 73.4 / 79.6 | 78.3 / 84.0 | 78.2 / 79.1 | 64.3 / 69.4 | 56.2 / 63.2 | 74.4 / 78.8 |
Phi3-mini-128k-Instruct | 73.4 / 74.8 | 85.7 / 88.0 | 95.4 / 96.0 | 82.8 / 87.8 | 80.4 / 84.2 | 74.7 / 73.9 | 59.3 / 64.6 | 67.3 / 72.9 | 77.4 / 80.5 |
You can also download the official paper results at the following Google Drive Link.
Cite this work
If you use any part of this work, please consider citing the paper as follows:
@inproceedings{molfese-etal-2024-zebra,
title = "ZEBRA: Zero-Shot Example-Based Retrieval Augmentation for Commonsense Question Answering",
author = "Molfese, Francesco Maria and
Conia, Simone and
Orlando, Riccardo and
Navigli, Roberto",
editor = "",
booktitle = "Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing",
month = nov,
year = "2024",
address = "Miami",
publisher = "Association for Computational Linguistics",
url = "",
doi = "",
pages = "",
abstract = "",
}
πͺͺ License
The data and software are licensed under Creative Commons Attribution-NonCommercial-ShareAlike 4.0.
Acknowledgements
We gratefully acknowledge CREATIVE (CRoss-modalunderstanding and gEnerATIon of Visual and tExtual content) for supporting this work. Simone Conia gratefully acknowledges the support of Future AI Research (PNRR MUR project PE0000013-FAIR), which fully funds his fellowship at Sapienza University of Rome since October 2023.
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Model tree for sapienzanlp/zebra-kb-qasc-train
Base model
intfloat/e5-base-v2