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SAC$^3$: Reliable Hallucination Detection in Black-Box Language Models via Semantic-aware Cross-check Consistency [EMNLP2023]

🔥 News

  • [2024.05] SAC$^3$ work was presented as a lightning talk in Intuit Open Source Meetup!
  • [2024.02] FastSAC$^3$ is a faster version of SAC$^3$, reducing the time cost via multithread parallelization.
  • [2024.02] SAC$^3$ work will be presented in AI for Production organized by MLOps community!
  • [2023.12] SAC$^3$ blog is published in Intuit Engineering
  • [2023.11] SAC$^3$ code is released.
  • [2023.11] SAC$^3$ arxiv link is available.
  • [2023.10] SAC$^3$ paper is accepted and to appear at EMNLP 2023.

🤔 What is SAC$^3$

Semantic-aware cross-check consistency (SAC$^3$) is a novel sampling-based hallucination detection method that expands on the principle of self-consistency checking and incorporates additional mechanisms to detect both question-level and model-level hallucinations by leveraging advances including semantically equivalent question perturbation and cross-model response consistency checking. More details can be found in our paper arxiv link.

Key observation: solely checking the self-consistency of LLMs is not sufficient for deciding factuality. Left: generated responses to the same question may be consistent but non-factual. Right: generated responses may be inconsistent with the original answer that is factually correct.


🤔 What is FastSAC$^3$ [NEW!]

The major time cost of SAC$^3$ is from two phases: sampled evaluations and pair-wise consistency checks. However, both phases can be accelerated by using multithread parallelization. We provide a parallelized version to significantly reduce the time cost while maintaining the same performance accuracy.

We tested 100 data from HotpotQA-halu dataset, with different sample sizes (3,5,10,15). The average time per query/question is slightly increasing as the sample size increases but the AUROC performance is almost consistent. Please see our HotpotQA demo.

100 data 3 samples 5 samples 10 samples 15 samples
Time per query 2.23s 2.30s 4.01s 5.45s
AUROC 0.682 0.671 0.678 0.680

🤖 Installation

Requirements

  • python 3.8

  • openai <= 0.28.1

  • Create env and download all the packages required as follows:

conda create -n sac3 python=3.8
source activate sac3
pip install -r requirements.txt

SAC$^3$ can be installed from pip (coming soon!):

pip install sac3

🚀 Quickstart

The easiest way to start playing is

  1. Jupyter Notebook
  2. Directly run python main.py
  3. Google Colab (coming soon)

📃 Usage

Semantic Paraphaser

Stage 1: Question-level Cross-checking via Semantically Equivalent Perturbations

from sac3 import paraphraser

# input information - user question and target answer 
question = 'is 3691 a prime number?'
target_answer = 'No, it is not a prime number'

# question pertubations
gen_question = paraphraser.paraphrase(question, number = 5, model = 'gpt-3.5-turbo', temperature=1.0)

The output is

gen_question = ['1. Can 3691 only be divided by 1 and itself?',
 '2. Are there any factors of 3691 other than 1 and itself?',
 '3. Does 3691 belong to the set of prime numbers?',
 '4. Is 3691 indivisible except by 1 and itself?',
 '5. Is 3691 not evenly divisible by any number other than 1 and itself?']

LLM Evaluator

Stage 2: Model-level Cross-check with Additional Verifier LM

from sac3.evaluator import Evaluate

# call target model, e.g., gpt-3.5 or gpt-4
llm_evaluate = Evaluate(model='gpt-3.5-turbo')

# sampled multiple responses given the original question 
self_responses = llm_evaluate.self_evaluate(self_question = question, temperature = 1.0, self_num = 5)

# sampled multiple responses given perturbed question
perb_responses = llm_evaluate.perb_evaluate(perb_question = gen_question, temperature=0.0)

The outputs are

self_responses = 
["A: We can check if 3691 is a prime number by testing if it's divisible by any prime number less than or equal to its square root. \n\nThe square root of 3691 is approximately 60.77, so we only need to check if it's divisible by prime numbers less than or equal to 60. \n\nWe can quickly eliminate even numbers, since 3691 is odd. \n\nDivisibility by 3:\n3 + 6 + 9 + 1 = 19, which is not divisible by 3. Therefore, 3691 is not divisible by 3. \n\nDivisibility by 5:\n3691 does not end in 5 or 0, so it's not divisible by 5. \n\nDivisibility by 7:\nTo check if 3691 is divisible by 7, we can take the last digit (1) and double it, then subtract that result from the remaining digits (369 - 2 = 367). We can continue this process until we get a number we know the divisibility of. \n\n36 - 2*1 = 34\n3 - 2*4 = -5\n\nSince -5 is not divisible by 7, neither is 3691. \n\nWe can continue checking for divisibility by other prime numbers, but it's clear that 3691 is not divisible by any primes less than or equal to 60. Therefore, 3691 is a prime number.",
 'Yes, 3691 is a prime number.',
 'A: Yes, 3691 is a prime number.',
 'No, 3691 is not a prime number. It is divisible by 7 and 17.',
 'A: Yes, 3691 is a prime number.']
perb_responses = 
['As an AI language model, I can say that 3691 can only be divided by 1 and itself, as it is a prime number.',
 'As an AI language model, I do not have the ability to manually factorize numbers. However, I can tell you that if there are any factors of 3691 other than 1 and itself, then 3691 would not be a prime number.',
 'A: No, 3691 is not a prime number as it is divisible by 7 and 527.',
 'A: Yes, 3691 is indivisible except by 1 and itself, making it a prime number.',
 'As an AI language model, I can calculate that 3691 is not evenly divisible by any number other than 1 and itself. Therefore, it is a prime number.']

Consistency Checker

Stage 3: Semantic-aware Consistency Check of Question-Answering (QA) Pairs

  • Self-checking Consistency (SC$^2$) Score
from sac3.consistency_checker import SemanticConsistnecyCheck

# call LLM to evaluate if the sampled responses are semantically equivalent to the target answer
scc = SemanticConsistnecyCheck(model='gpt-3.5-turbo')

# self-consistency check 
sc2_score, sc2_vote = scc.score_scc(question, target_answer, candidate_answer = self_responses, temperature = 0.0)
print(sc2_score, sc2_vote)

The output is

0.8 [1, 1, 1, 0, 1]
  • Question-level Consistency (SAC$^3$-Q) Score
# question-level consistency check 
sac3_q_score, sac3_q_vote = scc.score_scc(question, target_answer, candidate_answer = perb_responses, temperature = 0.0)
print(sac3_q_score, sac3_q_vote)

The output is

0.6 [1, 0, 0, 1, 1]

Illustrative Example

An illustrative example of self-consistency, cross-question consistency, and cross-model consistency check. The original question and answer are “Is 3691 a prime number?” and “No, 3691 is not a prime number. It is divisible by 7 and 13”, respectively. Each row presents a set of sampled QA pairs along with its consistency regarding the original answer, and the predicted factuality of the original answer.

💁Citation

@inproceedings{zhang-etal-2023-sac3,
    title = "{SAC}$^3$: Reliable Hallucination Detection in Black-Box Language Models via Semantic-aware Cross-check Consistency",
    author = "Zhang, Jiaxin  and
      Li, Zhuohang  and
      Das, Kamalika  and
      Malin, Bradley  and
      Kumar, Sricharan",
    booktitle = "Findings of the Association for Computational Linguistics: EMNLP 2023",
    month = dec,
    year = "2023",
    address = "Singapore",
    publisher = "Association for Computational Linguistics",
    url = "https://aclanthology.org/2023.findings-emnlp.1032",
    doi = "10.18653/v1/2023.findings-emnlp.1032",
    pages = "15445--15458"
}