Study: When allocating scarce resources with AI, randomization can improve fairness (2024)

Organizations are increasingly utilizing machine-learning models to allocate scarce resources or opportunities. For instance, such models can help companies screen resumes to choose job interview candidates or aid hospitals in ranking kidney transplant patients based on their likelihood of survival.

When deploying a model, users typically strive to ensure its predictions are fair by reducing bias. This often involves techniques like adjusting the features a model uses to make decisions or calibrating the scores it generates.

However, researchers from MIT and Northeastern University argue that these fairness methods are not sufficient to address structural injustices and inherent uncertainties. In a new paper, they show how randomizing a model’s decisions in a structured way can improve fairness in certain situations.

For example, if multiple companies use the same machine-learning model to rank job interview candidates deterministically — without any randomization — then one deserving individual could be the bottom-ranked candidate for every job, perhaps due to how the model weighs answers provided in an online form. Introducing randomization into a model’s decisions could prevent one worthy person or group from always being denied a scarce resource, like a job interview.

Through their analysis, the researchers found that randomization can be especially beneficial when a model’s decisions involve uncertainty or when the same group consistently receives negative decisions.

They present a framework one could use to introduce a specific amount of randomization into a model’s decisions by allocating resources through a weighted lottery. This method, which an individual can tailor to fit their situation, can improve fairness without hurting the efficiency or accuracy of a model.

“Even if you could make fair predictions, should you be deciding these social allocations of scarce resources or opportunities strictly off scores or rankings? As things scale, and we see more and more opportunities being decided by these algorithms, the inherent uncertainties in these scores can be amplified. We show that fairness may require some sort of randomization,” says Shomik Jain, a graduate student in the Institute for Data, Systems, and Society (IDSS) and lead author of the paper.

Jain is joined on the paper by Kathleen Creel, assistant professor of philosophy and computer science at Northeastern University; and senior author Ashia Wilson, the Lister Brothers Career Development Professor in the Department of Electrical Engineering and Computer Science and a principal investigator in the Laboratory for Information and Decision Systems (LIDS). The research will be presented at the International Conference on Machine Learning.

Considering claims

This work builds off a previous paper in which the researchers explored harms that can occur when one uses deterministic systems at scale. They found that using a machine-learning model to deterministically allocate resources can amplify inequalities that exist in training data, which can reinforce bias and systemic inequality.

“Randomization is a very useful concept in statistics, and to our delight, satisfies the fairness demands coming from both a systemic and individual point of view,” Wilson says.

In this paper, they explored the question of when randomization can improve fairness. They framed their analysis around the ideas of philosopher John Broome, who wrote about the value of using lotteries to award scarce resources in a way that honors all claims of individuals.

A person’s claim to a scarce resource, like a kidney transplant, can stem from merit, deservingness, or need. For instance, everyone has a right to life, and their claims on a kidney transplant may stem from that right, Wilson explains.

“When you acknowledge that people have different claims to these scarce resources, fairness is going to require that we respect all claims of individuals. If we always give someone with a stronger claim the resource, is that fair?” Jain says.

That sort of deterministic allocation could cause systemic exclusion or exacerbate patterned inequality, which occurs when receiving one allocation increases an individual’s likelihood of receiving future allocations. In addition, machine-learning models can make mistakes, and a deterministic approach could cause the same mistake to be repeated.

Randomization can overcome these problems, but that doesn’t mean all decisions a model makes should be randomized equally.

Structured randomization

The researchers use a weighted lottery to adjust the level of randomization based on the amount of uncertainty involved in the model’s decision-making. A decision that is less certain should incorporate more randomization.

“In kidney allocation, usually the planning is around projected lifespan, and that is deeply uncertain. If two patients are only five years apart, it becomes a lot harder to measure. We want to leverage that level of uncertainty to tailor the randomization,” Wilson says.

The researchers used statistical uncertainty quantification methods to determine how much randomization is needed in different situations. They show that calibrated randomization can lead to fairer outcomes for individuals without significantly affecting the utility, or effectiveness, of the model.

“There is a balance to be had between overall utility and respecting the rights of the individuals who are receiving a scarce resource, but oftentimes the tradeoff is relatively small,” says Wilson.

However, the researchers emphasize there are situations where randomizing decisions would not improve fairness and could harm individuals, such as in criminal justice contexts.

But there could be other areas where randomization can improve fairness, such as college admissions, and the researchers plan to study other use cases in future work. They also want to explore how randomization can affect other factors, such as competition or prices, and how it could be used to improve the robustness of machine-learning models.

“We are hoping our paper is a first move toward illustrating that there might be a benefit to randomization. We are offering randomization as a tool. How much you are going to want to do it is going to be up to all the stakeholders in the allocation to decide. And, of course, how they decide is another research question all together,” says Wilson.

Study: When allocating scarce resources with AI, randomization can improve fairness (2024)

FAQs

What is the allocation of scarce resources in economics? ›

1.1 The allocation of scarce resources

Economics is about the allocation of scarce, alternatively usable, resources. These resources include the capital stocks (renewable and nonrenewable natural capital, manufactured capital, cultural capital) and the flow of goods and services they yield.

How would a manufacturer benefit by using fewer scarce resources? ›

How would a manufacturer benefit by using fewer scarce resources? The product would be less expensive to produce. What determines the value of an item?

What are the five ways of allocating scarce resources? ›

1Lotteries, markets, barter, rationing, and redistribution of income are all methods commonly used to. allocate scarce resources.

What do economists say about scarce resources? ›

It means that the demand for a good or service is greater than the availability of the good or service. Therefore, scarcity can limit the choices available to the consumers who ultimately make up the economy. Scarcity is important for understanding how goods and services are valued.

What do companies do when resources are scarce? ›

To put these ideas into practice, companies should:
  • Expand talent access.
  • Practice disciplined innovation.
  • Build sustainable business models.
  • Stop relying on material growth.
  • Change your metric for success.
Mar 8, 2023

How do scarce resources impact economic decisions? ›

If goods and services are abundant and unlimited, there is no need to make decisions about allocating resources. However, scarcity limits the choices available to consumers in an economy. Scarcity makes goods more valuable and sellers can set higher prices.

What is the efficient use of scarce resources leads to an increase in responses? ›

The efficient use of scarce resources leads to an increase in: productivity. The study of economics involves: explaining how people deal with scarcity.

What is allocation of resources in economics? ›

Resource allocation is a process and strategy involving a company deciding where scarce resources should be used in the production of goods or services. A resource can be considered any factor of production, which is something used to produce goods or services.

What is the meaning of scarce resources in economics? ›

A scarcity of resources arises when the resources or means to fulfil an end are either limited or costly. Scarcity is an economic problem. It calls for the economic allocation of scarce resources to fulfil unlimited wants or needs.

Which economics deals with the allocation of scarce resources? ›

Economics is the study of the allocation of scarce resources among competing uses, either through conscious public policy or through market forces. It is essentially the science of choice in a world of scarcity.

What is the allocation of scarce resources in a command economy? ›

In command economies, decisions about both allocation of resources and allocation of production and consumption are decided by the government.

Top Articles
“His designs are some of the most identifiable in history, the tones some of the most iconic”: Leo Fender called G&L Guitars the best instruments he ever made – this is the story of the company that became his swan song
Sdn George Washington 2024
Alvin Isd Ixl
Rachel Sheherazade Nua
This Modern World Daily Kos
Gasbuddy Costco Hawthorne
Creepshot. Org
Woman Jumps Off Mount Hope Bridge 2022
They Cloned Tyrone Showtimes Near Showbiz Cinemas - Kingwood
Old Navy Student Discount Unidays
Texas (TX) Lottery - Winning Numbers & Results
Rocky Bfb Asset
High school football: Photos from the top Week 3 games Friday
O'reilly's Iron Mountain Michigan
Linus Tech Tips Forums
Cocaine Bear Showtimes Near Harkins Cerritos
Theater X Orange Heights Florida
Pirates Point Lake Of The Ozarks
Slmd Skincare Appointment
Live Stream Portal
3 Hour Radius From Me
Women On Twitch Go Without Makeup To Support A Fellow Streamer
Newton Chevrolet Of Russellville Photos
Petco Clinic Hours
Artifacto The Ascended
Paris 2024: The first Games to achieve full gender parity
10000 Blaulicht-Meldungen aus Baden-Württemberg | Presseportal
Dumb Money Showtimes Near Regal Dickson City
Kate Spade Outlet Altoona
After the Yankees' latest walk-off win, ranking which starters might be headed to the bullpen
Franco Loja Net Worth
Corinne Massiah Bikini
Transformers Movie Wiki
I Heard The Bells Film Showtimes Near Newport Cinema Center
Doublelist Aiken Sc
Jeld Wen Okta Com Login
Depths Charm Calamity
North Haven Power School
Meshuggah Bleed Tab
Lindy Kendra Scott Obituary
Intel Core i3-4130 - CM8064601483615 / BX80646I34130
Adda Darts
Metrocast Channel Lineup
Craigslist Ft Meyers
Katopunk Pegging
How Did Kratos Remove The Chains
Explain the difference between a bar chart and a histogram. | Numerade
Rs3 Spectral Spirit Shield
Fantasy Football News, Stats and Analysis
Job ID:24023861 - Compliance and Operational Risk Specialist - Multiple Locations
Latest Posts
Article information

Author: Ms. Lucile Johns

Last Updated:

Views: 6001

Rating: 4 / 5 (61 voted)

Reviews: 84% of readers found this page helpful

Author information

Name: Ms. Lucile Johns

Birthday: 1999-11-16

Address: Suite 237 56046 Walsh Coves, West Enid, VT 46557

Phone: +59115435987187

Job: Education Supervisor

Hobby: Genealogy, Stone skipping, Skydiving, Nordic skating, Couponing, Coloring, Gardening

Introduction: My name is Ms. Lucile Johns, I am a successful, friendly, friendly, homely, adventurous, handsome, delightful person who loves writing and wants to share my knowledge and understanding with you.