New York Tech Media
  • News
  • FinTech
  • AI & Robotics
  • Cybersecurity
  • Startups & Leaders
  • Venture Capital
No Result
View All Result
  • News
  • FinTech
  • AI & Robotics
  • Cybersecurity
  • Startups & Leaders
  • Venture Capital
No Result
View All Result
New York Tech Media
No Result
View All Result
Home AI & Robotics

Researchers Challenge Long-Held Machine Learning Assumption

New York Tech Editorial Team by New York Tech Editorial Team
October 27, 2021
in AI & Robotics
0
Researchers Challenge Long-Held Machine Learning Assumption
Share on FacebookShare on Twitter

Researchers at Carnegie Mellon University are challenging a long-held machine learning assumption that there is a trade-off between accuracy and fairness in algorithms used to make public policy decisions. 

The use of machine learning is increasing in many areas like criminal justice, hiring, health care delivery and social service interventions. With this growth also comes increased concerns over whether these new applications can worsen existing inequities. They could be particularly harmful to racial minorities or individuals with economic disadvantages. 

Adjusting a System

There are constant adjustments to data, labels, model training, scoring systems and other aspects of the system in order to guard against bias. However, the theoretical assumption has been that the system becomes less accurate when there are more of these adjustments. 

The team at CMU set out to challenge this theory in a new study published in Nature Machine Intelligence.

Rayid Ghani is a professor in the School of Computer Science’s Machine Learning Department (MLD) and the Heinz College of Information Systems and Public Policy. He was joined by Kit Rodolfa, a research scientist in MLD; and Hemank Lamba, a post-doctoral researcher in SCS. 

Testing Real-World Applications

The researchers tested this assumption in real-world applications, and what they found was that the trade-off is negligible across many policy domains. 

“You actually can get both. You don’t have to sacrifice accuracy to build systems that are fair and equitable,” Ghani said. “But it does require you to deliberately design systems to be fair and equitable. Off-the-shelf systems won’t work.”

The team focused on situations where in-demand resources are limited. The allocation of these resources is helped by machine learning.

They focused on systems in four areas:

  • prioritizing limited mental health care outreach based on a person’s risk of returning to jail to reduce reincarceration;
  • predicting serious safety violations to better deploy a city’s limited housing inspectors;
  • modeling the risk of students not graduating from high school in time to identify those most in need of additional support;
  • and helping teachers reach crowdfunding goals for classroom needs.

The researchers found that models optimized for accuracy could effectively predict the outcomes of interest. However, they also demonstrated considerable disparities in recommendations for interventions. 

The important results came when the researchers applied the adjustments to the outputs of the models that targeted improving their fairness. They discovered that there was no loss of accuracy when disparities baked on race, age, or income were removed. 

“We want the artificial intelligence, computer science and machine learning communities to stop accepting this assumption of a trade-off between accuracy and fairness and to start intentionally designing systems that maximize both,” Rodolfa said. “We hope policymakers will embrace machine learning as a tool in their decision making to help them achieve equitable outcomes.”

Credit: Source link

Previous Post

Lightyear’s new trailer turns a cute toy into a sci-fi hero

Next Post

Billy Secures $3.5M in Seed Funding Led by Global PropTech VC Firm MetaProp

New York Tech Editorial Team

New York Tech Editorial Team

New York Tech Media is a leading news publication that aims to provide the latest tech news, fintech, AI & robotics, cybersecurity, startups & leaders, venture capital, and much more!

Next Post
Billy Secures $3.5M in Seed Funding Led by Global PropTech VC Firm MetaProp

Billy Secures $3.5M in Seed Funding Led by Global PropTech VC Firm MetaProp

  • Trending
  • Comments
  • Latest
Meet the Top 10 K-Pop Artists Taking Over 2024

Meet the Top 10 K-Pop Artists Taking Over 2024

March 17, 2024
Panther for AWS allows security teams to monitor their AWS infrastructure in real-time

Many businesses lack a formal ransomware plan

March 29, 2022
Zach Mulcahey, 25 | Cover Story | Style Weekly

Zach Mulcahey, 25 | Cover Story | Style Weekly

March 29, 2022
How To Pitch The Investor: Ronen Menipaz, Founder of M51

How To Pitch The Investor: Ronen Menipaz, Founder of M51

March 29, 2022
Japanese Space Industry Startup “Synspective” Raises US $100 Million in Funding

Japanese Space Industry Startup “Synspective” Raises US $100 Million in Funding

March 29, 2022
UK VC fund performance up on last year

VC-backed Aerium develops antibody treatment for Covid-19

March 29, 2022
Startups On Demand: renovai is the Netflix of Online Shopping

Startups On Demand: renovai is the Netflix of Online Shopping

2
Robot Company Offers $200K for Right to Use One Applicant’s Face and Voice ‘Forever’

Robot Company Offers $200K for Right to Use One Applicant’s Face and Voice ‘Forever’

1
Menashe Shani Accessibility High Tech on the low

Revolutionizing Accessibility: The Story of Purple Lens

1

Netgear announces a $1,500 Wi-Fi 6E mesh router

0
These apps let you customize Windows 11 to bring the taskbar back to life

These apps let you customize Windows 11 to bring the taskbar back to life

0
This bipedal robot uses propeller arms to slackline and skateboard

This bipedal robot uses propeller arms to slackline and skateboard

0
New York City

Why Bite-Sized Learning is Booming in NYC’s Hustle Culture

June 4, 2025
Driving Innovation in Academic Technologies: Spotlight from ICTIS 2025

Driving Innovation in Academic Technologies: Spotlight from ICTIS 2025

June 4, 2025
Coffee Nova’s $COFFEE Token

Coffee Nova’s $COFFEE Token

May 29, 2025
Money TLV website

BridgerPay to Spotlight Cross-Border Payments Innovation at Money TLV 2025

May 27, 2025
The Future of Software Development: Why Low-Code Is Here to Stay

Building Brand Loyalty Starts With Your Team

May 23, 2025
Tork Media Expands Digital Reach with Acquisition of NewsBlaze and Buzzworthy

Creative Swag Ideas for Hackathons & Launch Parties

May 23, 2025

Recommended

New York City

Why Bite-Sized Learning is Booming in NYC’s Hustle Culture

June 4, 2025
Driving Innovation in Academic Technologies: Spotlight from ICTIS 2025

Driving Innovation in Academic Technologies: Spotlight from ICTIS 2025

June 4, 2025
Coffee Nova’s $COFFEE Token

Coffee Nova’s $COFFEE Token

May 29, 2025
Money TLV website

BridgerPay to Spotlight Cross-Border Payments Innovation at Money TLV 2025

May 27, 2025

Categories

  • AI & Robotics
  • Benzinga
  • Cybersecurity
  • FinTech
  • New York Tech
  • News
  • Startups & Leaders
  • Venture Capital

Tags

3D bio-printing acoustic AI Allseated B2B marketing Business carbon footprint climate change coding Collaborations Companies To Watch consumer tech crypto cryptocurrency deforestation drones earphones Entrepreneur Fetcherr Finance Fintech food security Investing Investors investorsummit israelitech Leaders LinkedIn Leaders Metaverse news OurCrowd PR Real Estate reforestation software start- up Startups Startups On Demand startuptech Tech Tech leaders technology UAVs Unlimited Robotics VC
  • Contact Us
  • Privacy Policy
  • Terms and conditions

© 2024 All Rights Reserved - New York Tech Media

No Result
View All Result
  • News
  • FinTech
  • AI & Robotics
  • Cybersecurity
  • Startups & Leaders
  • Venture Capital

© 2024 All Rights Reserved - New York Tech Media