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Towards Trustworthy AI: A Review of Ethical and Robust Large Language
  Models

Towards Trustworthy AI: A Review of Ethical and Robust Large Language Models

1 June 2024
Meftahul Ferdaus
Mahdi Abdelguerfi
Elias Ioup
Kendall N. Niles
Ken Pathak
Steve Sloan
ArXivPDFHTML

Papers citing "Towards Trustworthy AI: A Review of Ethical and Robust Large Language Models"

15 / 15 papers shown
Title
From Prohibition to Adoption: How Hong Kong Universities Are Navigating
  ChatGPT in Academic Workflows
From Prohibition to Adoption: How Hong Kong Universities Are Navigating ChatGPT in Academic Workflows
Junjun Huang
Jifan Wu
Qing Wang
Kemeng Yuan
Jiefeng Li
Di Lu
21
0
0
02 Oct 2024
When Large Language Models Meet Vector Databases: A Survey
When Large Language Models Meet Vector Databases: A Survey
Zhi Jing
Yongye Su
Yikun Han
Bo Yuan
Haiyun Xu
Chunjiang Liu
Kehai Chen
Min Zhang
44
32
0
30 Jan 2024
The Typing Cure: Experiences with Large Language Model Chatbots for Mental Health Support
The Typing Cure: Experiences with Large Language Model Chatbots for Mental Health Support
Inhwa Song
Sachin R. Pendse
Neha Kumar
Munmun De Choudhury
AI4MH
33
15
0
25 Jan 2024
"The teachers are confused as well": A Multiple-Stakeholder Ethics
  Discussion on Large Language Models in Computing Education
"The teachers are confused as well": A Multiple-Stakeholder Ethics Discussion on Large Language Models in Computing Education
Kyrie Zhixuan Zhou
Zachary Kilhoffer
M. Sanfilippo
Ted Underwood
Ece Gumusel
Mengyi Wei
Abhinav Choudhry
Jinjun Xiong
34
11
0
23 Jan 2024
Supervised Fine-tuning in turn Improves Visual Foundation Models
Supervised Fine-tuning in turn Improves Visual Foundation Models
Xiaohu Jiang
Yixiao Ge
Yuying Ge
Dachuan Shi
Chun Yuan
Ying Shan
VLM
CLIP
32
8
0
18 Jan 2024
Challenges of Large Language Models for Mental Health Counseling
Challenges of Large Language Models for Mental Health Counseling
N. C. Chung
George C. Dyer
L. Brocki
LM&MA
AI4MH
50
7
0
23 Nov 2023
Energy and Carbon Considerations of Fine-Tuning BERT
Energy and Carbon Considerations of Fine-Tuning BERT
Xiaorong Wang
Clara Na
Emma Strubell
Sorelle A. Friedler
Sasha Luccioni
21
10
0
17 Nov 2023
Bias of AI-Generated Content: An Examination of News Produced by Large
  Language Models
Bias of AI-Generated Content: An Examination of News Produced by Large Language Models
Xiao Fang
Shangkun Che
Minjia Mao
Hongzhe Zhang
Ming Zhao
Xiaohang Zhao
33
17
0
18 Sep 2023
How Far Can It Go?: On Intrinsic Gender Bias Mitigation for Text
  Classification
How Far Can It Go?: On Intrinsic Gender Bias Mitigation for Text Classification
E. Tokpo
Pieter Delobelle
Bettina Berendt
T. Calders
27
6
0
30 Jan 2023
FATE in AI: Towards Algorithmic Inclusivity and Accessibility
FATE in AI: Towards Algorithmic Inclusivity and Accessibility
Isa Inuwa-Dutse
24
3
0
03 Jan 2023
Red Teaming Language Models to Reduce Harms: Methods, Scaling Behaviors,
  and Lessons Learned
Red Teaming Language Models to Reduce Harms: Methods, Scaling Behaviors, and Lessons Learned
Deep Ganguli
Liane Lovitt
John Kernion
Amanda Askell
Yuntao Bai
...
Nicholas Joseph
Sam McCandlish
C. Olah
Jared Kaplan
Jack Clark
216
327
0
23 Aug 2022
Trustworthy Graph Neural Networks: Aspects, Methods and Trends
Trustworthy Graph Neural Networks: Aspects, Methods and Trends
He Zhang
Bang Wu
Xingliang Yuan
Shirui Pan
Hanghang Tong
Jian Pei
36
98
0
16 May 2022
Chain-of-Thought Prompting Elicits Reasoning in Large Language Models
Chain-of-Thought Prompting Elicits Reasoning in Large Language Models
Jason W. Wei
Xuezhi Wang
Dale Schuurmans
Maarten Bosma
Brian Ichter
F. Xia
Ed H. Chi
Quoc Le
Denny Zhou
LM&Ro
LRM
AI4CE
ReLM
315
8,261
0
28 Jan 2022
Towards an Ethical Framework in the Complex Digital Era
Towards an Ethical Framework in the Complex Digital Era
D. Pastor-Escuredo
Ricardo Vinuesa
21
11
0
19 Oct 2020
Improving fairness in machine learning systems: What do industry
  practitioners need?
Improving fairness in machine learning systems: What do industry practitioners need?
Kenneth Holstein
Jennifer Wortman Vaughan
Hal Daumé
Miroslav Dudík
Hanna M. Wallach
FaML
HAI
189
730
0
13 Dec 2018
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