Quick News Bit

Computer scientists release guidelines for evaluating AI-generated text

0
Computer scientists release guidelines for evaluating AI-generated text
Accuracy and variance after annotating a fraction of units per summary (X-axis) with FINE. Despite annotating just a fraction of the summary, we observe a high segment-level Kendall tau correlation with a full annotation (left). However we observe higher inter-annotator variance as the fraction reduces (right). Confidence intervals shown are 95% and computed across 1000 random subsets (see Appendix F for left plot with Pearson). Credit: arXiv (2023). DOI: 10.48550/arxiv.2301.13298

The public release of AI text generators, such as ChatGPT, has caused an enormous stir among both those who herald the technology as a great leap forward in communication as well as those who prophesy the technology’s dire effects. However, AI-generated text is notoriously buggy, and human evaluation remains the gold-standard in ensuring accuracy, especially when it comes to applications such as generating long-form summaries of complex texts. And yet, there are no accepted standards for human evaluation of long-form summaries, which means that even the gold-standard is suspect.

To rectify this shortcoming, a team of computer scientists, led by Kalpesh Krishna, a graduate student in the Manning College of Information and Computer Sciences at UMass Amherst, has just released a set of guidelines called LongEval. The guidelines were presented at the European Chapter of the Association for Computational Linguistics, for which it was awarded the Outstanding Paper prize.

“There is currently no reliable way to evaluate long-form generated text without humans, and even current human evaluation protocols are expensive, time-consuming and highly variant,” says Krishna, who began this research during an internship at the Allen Institute for AI. “A suitable human evaluation framework is critical to build more accurate long-form text-generation algorithms.”

Krishna and his team, including Mohit Iyyer, assistant professor of computer science at UMass Amherst, combed through 162 papers on long-form summarization to understand how human evaluation works—and in doing so, they discovered that 73% of the papers did not perform human evaluation on long-form summaries at all. The remaining papers used widely divergent evaluation practices.

“This lack of standards is problematic because it hampers reproducibility and does not allow for meaningful comparison between different systems,” Iyyer says.

To further the goal of efficient, reproducible and standardized protocols for human evaluation of AI-generated summaries, Krishna and his co-authors developed a list of three comprehensive recommendations that cover how and what an evaluator should read in order to judge the reliability of the summary.

“With LongEval, I am very excited about the prospect of being able to accurately and quickly evaluate long-form text generation algorithms with humans,” says Krishna. “We have made LongEval very easy to use and released it as a Python library. I am excited to see how the research community builds upon it and uses LongEval in their research.”

The research is published on the arXiv preprint server.

More information:
Kalpesh Krishna et al, LongEval: Guidelines for Human Evaluation of Faithfulness in Long-form Summarization, arXiv (2023). DOI: 10.48550/arxiv.2301.13298

Journal information:
arXiv


Provided by
University of Massachusetts Amherst


Citation:
Computer scientists release guidelines for evaluating AI-generated text (2023, July 7)
retrieved 7 July 2023
from https://techxplore.com/news/2023-07-scientists-guidelines-ai-generated-text.html

This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no
part may be reproduced without the written permission. The content is provided for information purposes only.

For all the latest Technology News Click Here 

 For the latest news and updates, follow us on Google News

Read original article here

Denial of responsibility! NewsBit.us is an automatic aggregator around the global media. All the content are available free on Internet. We have just arranged it in one platform for educational purpose only. In each content, the hyperlink to the primary source is specified. All trademarks belong to their rightful owners, all materials to their authors. If you are the owner of the content and do not want us to publish your materials on our website, please contact us by email – [email protected]. The content will be deleted within 24 hours.

Leave a comment