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Incorrect Labels #2

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michaelcalvinwood opened this issue Apr 11, 2024 · 3 comments
Open

Incorrect Labels #2

michaelcalvinwood opened this issue Apr 11, 2024 · 3 comments

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@michaelcalvinwood
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michaelcalvinwood commented Apr 11, 2024

First, thank you for the effort put into RAGTruth. There is a tremendous need for such a dataset.

Unfortunately, some of the labels are sorely inaccurate. Consider Response ID 11898 as one example. This response states three supposed hallucinations, all with implicit_true being false.

Consider the first:

  • Stated Hallucination: "Cons include potentially earning less than those with graduate degrees."
  • Annotator Explanation: "Passages have no mention of this earning less than those with graduate degrees."
  • Supporting Text in Passage: "graduates who are able to find work end up making a lot more than their undergraduate counterparts"

In other words, the provided passage does state that there is a potential for those with graduate degrees to earn more than their undergraduate counterparts; which means that there is a potential for undergrads to earn less than those with graduate degrees. Hence, the annotation is incorrect.

Consider the second:

  • Stated Hallucination: "earning a higher income upon graduation"
  • Annotator Explanation: "Passages have no mention of this detail."
  • Supporting Text in Passage: "the graduates who are able to find work end up making a lot more than their undergraduate counterparts; the median annual salary plus bonus for a person fresh out of grad school with an MBA is $105,000"

Yet, "fresh out of grad school" is equivalent to "upon graduation." And the whole context is "earning a higher income" ("making a lot more than their undergraduate counterparts"). Hence, the annotation is incorrect.

Finally, consider the third:

  • Stated Hallucination: "gaining practical experience"
  • Annotator Explanation: "Passages have no mention of this tip."
  • Supporting Text in Passage: None

Hence, this annotation is correct.

Naturally, the value of the dataset is directly proportional to the correctness of the annotations. While I recognize the immense effort that has gone into this dataset, there's still a need for additional annotators to fix errant labels (and there are a lot of errant labels).

Kindly consider fixing the errant labels to make RAGTruth the incredible resource that it can be.

@sgfuiwshlkahr
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Hello Michael, thank you for your detailed review. We acknowledge that the examples you pointed out did not meet the expected standards of accuracy, and we appreciate that you brought them to our attention. We want to highlight that we are committed to the quality of the dataset and the version presented was the outcome developed through multiple rounds of review. Due to the size, it was challenging in maintaining uniform accuracy among all annotators across all annotations. However, we will be conducting another round of thorough review, aiming to have the dataset reflect its true intent and utility in supporting the value of our research.

@michaelcalvinwood
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michaelcalvinwood commented Apr 24, 2024

Thank you.

Now that I know that you are committed to this dataset, I'll gladly add examples here when I come across them in order to help out.

There truly is a great need for an accurate hallucination corpus. :-)

@ogencoglu
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Hello Michael, thank you for your detailed review. We acknowledge that the examples you pointed out did not meet the expected standards of accuracy, and we appreciate that you brought them to our attention. We want to highlight that we are committed to the quality of the dataset and the version presented was the outcome developed through multiple rounds of review. Due to the size, it was challenging in maintaining uniform accuracy among all annotators across all annotations. However, we will be conducting another round of thorough review, aiming to have the dataset reflect its true intent and utility in supporting the value of our research.

Sounds LLM-generated to be honest.

Any updates?

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