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WebGLM: Towards An Efficient Web-Enhanced Question Answering System with Human Preferences

Authors :
Liu, Xiao
Lai, Hanyu
Yu, Hao
Xu, Yifan
Zeng, Aohan
Du, Zhengxiao
Zhang, Peng
Dong, Yuxiao
Tang, Jie
Publication Year :
2023

Abstract

We present WebGLM, a web-enhanced question-answering system based on the General Language Model (GLM). Its goal is to augment a pre-trained large language model (LLM) with web search and retrieval capabilities while being efficient for real-world deployments. To achieve this, we develop WebGLM with strategies for the LLM-augmented retriever, bootstrapped generator, and human preference-aware scorer. Specifically, we identify and address the limitations of WebGPT (OpenAI), through which WebGLM is enabled with accuracy, efficiency, and cost-effectiveness advantages. In addition, we propose systematic criteria for evaluating web-enhanced QA systems. We conduct multi-dimensional human evaluation and quantitative ablation studies, which suggest the outperformance of the proposed WebGLM designs over existing systems. WebGLM with the 10-billion-parameter GLM (10B) is shown to perform better than the similar-sized WebGPT (13B) and even comparably to WebGPT (175B) in human evaluation. The code, demo, and data are at \url{https://github.com/THUDM/WebGLM}.<br />Comment: Accepted to KDD 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.07906
Document Type :
Working Paper