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On this page
  • When To Use Hallucination Eval Template
  • Hallucination Eval Template
  • How To Run the Eval

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  1. Evaluate
  2. LLM as a Judge
  3. Arize Templates

Hallucinations

When To Use Hallucination Eval Template

This LLM Eval detects if the output of a model is a hallucination based on contextual data.

This Eval is specifically designed to detect hallucinations in generated answers from private or retrieved data. The Eval detects if an AI answer to a question is a hallucination based on the reference data used to generate the answer.

Hallucination Eval Template

In this task, you will be presented with a query, a reference text and an answer. The answer is
generated to the question based on the reference text. The answer may contain false information. You
must use the reference text to determine if the answer to the question contains false information,
if the answer is a hallucination of facts. Your objective is to determine whether the answer text
contains factual information and is not a hallucination. A 'hallucination' refers to
an answer that is not based on the reference text or assumes information that is not available in
the reference text. Your response should be a single word: either "factual" or "hallucinated", and
it should not include any other text or characters. "hallucinated" indicates that the answer
provides factually inaccurate information to the query based on the reference text. "factual"
indicates that the answer to the question is correct relative to the reference text, and does not
contain made up information. Please read the query and reference text carefully before determining
your response.

    # Query: {query}
    # Reference text: {reference}
    # Answer: {response}
    Is the answer above factual or hallucinated based on the query and reference text?

How To Run the Eval

from phoenix.evals import (
    HALLUCINATION_PROMPT_RAILS_MAP,
    HALLUCINATION_PROMPT_TEMPLATE,
    OpenAIModel,
    download_benchmark_dataset,
    llm_classify,
)

model = OpenAIModel(
    model_name="gpt-4",
    temperature=0.0,
)

#The rails is used to hold the output to specific values based on the template
#It will remove text such as ",,," or "..."
#Will ensure the binary value expected from the template is returned 
rails = list(HALLUCINATION_PROMPT_RAILS_MAP.values())
hallucination_classifications = llm_classify(
    dataframe=df, 
    template=HALLUCINATION_PROMPT_TEMPLATE, 
    model=model, 
    rails=rails,
    provide_explanation=True, #optional to generate explanations for the value produced by the eval LLM
)

The above Eval shows how to use the hallucination template for Eval detection.

Benchmark Results

GPT-4 Results

Scikit GPT-4

GPT-3.5 Results

Claude v2 Results

GPT-4 Turbo

Eval
GPT-4
GPT-4 Turbo
Gemini Pro
GPT-3.5
GPT-3.5 Turbo Instruct
Palm 2 (Text Bison)
Claude V2

Precision

0.93

0.97

0.89

0.89

0.89

1

0.80

Recall

0.72

0.70

0.53

0.65

0.80

0.44

0.95

F1

0.82

0.81

0.67

0.75

0.84

0.61

0.87

Throughput
GPT-4
GPT-4 Turbo
GPT-3.5

100 Samples

105 sec

58 Sec

52 Sec

Last updated 12 hours ago

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