<?xml version="1.0" encoding="utf-8"?><feed xmlns="http://www.w3.org/2005/Atom" ><generator uri="https://jekyllrb.com/" version="3.10.0">Jekyll</generator><link href="/feed.xml" rel="self" type="application/atom+xml" /><link href="/" rel="alternate" type="text/html" /><updated>2025-11-19T12:40:50+00:00</updated><id>/feed.xml</id><title type="html">Shiqi Chen</title><subtitle>A NLPer.</subtitle><entry><title type="html">Our work FELM is accepted by NeurIPS D&amp;amp;B track 2023!</title><link href="/about/me2023/10/01/felm.html" rel="alternate" type="text/html" title="Our work FELM is accepted by NeurIPS D&amp;amp;B track 2023!" /><published>2023-10-01T15:59:29+00:00</published><updated>2023-10-01T15:59:29+00:00</updated><id>/about/me2023/10/01/felm</id><content type="html" xml:base="/about/me2023/10/01/felm.html"><![CDATA[<p>*🎉 🎉 🎉Our paper is accepted by NeurIPS Datasets and Benchmarks track 2023 and will be on Arxiv soon!!**</p>

<p>FELM is a benchmark for factuality evaluation of large language models.(FELM on Hugging Face dataset can be found <a href="https://huggingface.co/datasets/hkust-nlp/felm">Here</a>)</p>

<p>Authors: Shiqi Chen, Yiran Zhao, Jinghan Zhan, I-Chun Chern, Siyang Gao, Pengfei Liu and Junxian He.</p>

<p>The benchmark comprises 847 questions that span five distinct domains: world knowledge, science/technology, writing/recommendation, reasoning, and math. We gather prompts corresponding to each domain by various sources including standard datasets like truthfulQA, online platforms like Github repositories, ChatGPT generation or drafted by authors.</p>

<p>We then obtain responses from ChatGPT for these prompts. For each response, we employ fine-grained annotation at the segment level, which includes reference links, identified error types, and the reasons behind these errors as provided by our annotators.</p>

<p><img src="./image/felm_examples.png" alt="" /></p>]]></content><author><name></name></author><category term="About" /><category term="me." /><summary type="html"><![CDATA[*🎉 🎉 🎉Our paper is accepted by NeurIPS Datasets and Benchmarks track 2023 and will be on Arxiv soon!!**]]></summary></entry></feed>