Monday, November 27, 2023

 

New method uses crowdsourced feedback to help train robots


Human Guided Exploration (HuGE) enables AI agents to learn quickly with some help from humans, even if the humans make mistakes.


Reports and Proceedings

MASSACHUSETTS INSTITUTE OF TECHNOLOGY




To teach an AI agent a new task, like how to open a kitchen cabinet, researchers often use reinforcement learning — a trial-and-error process where the agent is rewarded for taking actions that get it closer to the goal.

In many instances, a human expert must carefully design a reward function, which is an incentive mechanism that gives the agent motivation to explore. The human expert must iteratively update that reward function as the agent explores and tries different actions. This can be time-consuming, inefficient, and difficult to scale up, especially when the task is complex and involves many steps.

Researchers from MIT, Harvard University, and the University of Washington have developed a new reinforcement learning approach that doesn’t rely on an expertly designed reward function. Instead, it leverages crowdsourced feedback, gathered from many nonexpert users, to guide the agent as it learns to reach its goal. 

While some other methods also attempt to utilize nonexpert feedback, this new approach enables the AI agent to learn more quickly, despite the fact that data crowdsourced from users are often full of errors. These noisy data might cause other methods to fail. 

In addition, this new approach allows feedback to be gathered asynchronously, so nonexpert users around the world can contribute to teaching the agent.

“One of the most time-consuming and challenging parts in designing a robotic agent today is engineering the reward function. Today reward functions are designed by expert researchers — a paradigm that is not scalable if we want to teach our robots many different tasks. Our work proposes a way to scale robot learning by crowdsourcing the design of reward function and by making it possible for nonexperts to provide useful feedback,” says Pulkit Agrawal, an assistant professor in the MIT Department of Electrical Engineering and Computer Science (EECS) who leads the Improbable AI Lab in the MIT Computer Science and Artificial Intelligence Laboratory (CSAIL).

In the future, this method could help a robot learn to perform specific tasks in a user’s home quickly, without the owner needing to show the robot physical examples of each task. The robot could explore on its own, with crowdsourced nonexpert feedback guiding its exploration.

“In our method, the reward function guides the agent to what it should explore, instead of telling it exactly what it should do to complete the task. So, even if the human supervision is somewhat inaccurate and noisy, the agent is still able to explore, which helps it learn much better,” explains lead author Marcel Torne ’23, a research assistant in the Improbable AI Lab.

Torne is joined on the paper by his MIT advisor, Agrawal; senior author Abhishek Gupta, assistant professor at the University of Washington; as well as others at the University of Washington and MIT. The research will be presented at the Conference on Neural Information Processing Systems next month.

Noisy feedback

One way to gather user feedback for reinforcement learning is to show a user two photos of states achieved by the agent, and then ask that user which state is closer to a goal. For instance, perhaps a robot’s goal is to open a kitchen cabinet. One image might show that the robot opened the cabinet, while the second might show that it opened the microwave. A user would pick the photo of the “better” state.

Some previous approaches try to use this crowdsourced, binary feedback to optimize a reward function that the agent would use to learn the task. However, because nonexperts are likely to make mistakes, the reward function can become very noisy, so the agent might get stuck and never reach its goal.

“Basically, the agent would take the reward function too seriously. It would try to match the reward function perfectly. So, instead of directly optimizing over the reward function, we just use it to tell the robot which areas it should be exploring,” Torne says.

He and his collaborators decoupled the process into two separate parts, each directed by its own algorithm. They call their new reinforcement learning method HuGE (Human Guided Exploration). 

On one side, a goal selector algorithm is continuously updated with crowdsourced human feedback. The feedback is not used as a reward function, but rather to guide the agent’s exploration. In a sense, the nonexpert users drop breadcrumbs that incrementally lead the agent toward its goal.

On the other side, the agent explores on its own, in a self-supervised manner guided by the goal selector. It collects images or videos of actions that it tries, which are then sent to humans and used to update the goal selector. 

This narrows down the area for the agent to explore, leading it to more promising areas that are closer to its goal. But if there is no feedback, or if feedback takes a while to arrive, the agent will keep learning on its own, albeit in a slower manner. This enables feedback to be gathered infrequently and asynchronously.

“The exploration loop can keep going autonomously, because it is just going to explore and learn new things. And then when you get some better signal, it is going to explore in more concrete ways. You can just keep them turning at their own pace,” adds Torne.

And because the feedback is just gently guiding the agent’s behavior, it will eventually learn to complete the task even if users provide incorrect answers. 

Faster learning

The researchers tested this method on a number of simulated and real-world tasks. In simulation, they used HuGE to effectively learn tasks with long sequences of actions, such as stacking blocks in a particular order or navigating a large maze. 

In real-world tests, they utilized HuGE to train robotic arms to draw the letter “U” and pick and place objects. For these tests, they crowdsourced data from 109 nonexpert users in 13 different countries spanning three continents. 

In real-world and simulated experiments, HuGE helped agents learn to achieve the goal faster than other methods. 

The researchers also found that data crowdsourced from nonexperts yielded better performance than synthetic data, which were produced and labeled by the researchers. For nonexpert users, labeling 30 images or videos took fewer than two minutes.

“This makes it very promising in terms of being able to scale up this method,” Torne adds.

In a related paper, which the researchers presented at the recent Conference on Robot Learning, they enhanced HuGE so an AI agent can learn to perform the task, and then autonomously reset the environment to continue learning. For instance, if the agent learns to open a cabinet, the method also guides the agent to close the cabinet.

“Now we can have it learn completely autonomously without needing human resets,” he says.

The researchers also emphasize that, in this and other learning approaches, it is critical to ensure that AI agents are aligned with human values.

In the future, they want to continue refining HuGE so the agent can learn from other forms of communication, such as natural language and physical interactions with the robot. They are also interested in applying this method to teach multiple agents at once.

This research is funded, in part, by the MIT-IBM Watson AI Lab.

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Written by Adam Zewe, MIT News

Paper: "Breadcrumbs to the Goal: Goal-Conditioned Exploration from Human-in-the-Loop Feedback"

https://arxiv.org/pdf/2307.11049.pdf

 

Study shows price discounts on healthful foods like vegetables and zero-calorie beverages lead to an increase in consumption of these foods


Peer-Reviewed Publication

THE MOUNT SINAI HOSPITAL / MOUNT SINAI SCHOOL OF MEDICINE

Geliebter 

IMAGE: 

HEALTHY VEGETABLES.

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CREDIT: MOUNT SINAI HEALTH SYSTEM




Dietary food intake has a major influence on health indicators, including Body Mass Index (BMI), blood pressure, serum cholesterol and glucose. Previous research has shown that decisions to purchase specific food items are primarily based on taste and cost. In the United States, only 12 percent and 10 percent of adults meet fruit and vegetable intake recommendations, respectively. Since affordability of food items is a limiting factor for meeting fruit and vegetable intake guidelines, researchers hypothesize that more affordable low energy-dense foods like fruits and vegetables, which are relatively more expensive than less healthy high energy-dense foods, could lead to their increased intake.

To observe the effects of a multi-level (30 percent, 15 percent and zero percent) randomized discount on fruits, vegetables and non-caloric beverages on changes in dietary intake, a team of researchers from the Icahn School of Medicine at Mount Sinai conducted a randomized, controlled trial that involved the recruitment of primary household shoppers from several New York City supermarkets. The trial comprised an 8-week baseline, a 32-week intervention, and a 16-week follow-up. 24-hour dietary recalls were conducted during the baseline period and before the intervention midpoint. In-person clinical measures (including body weight, percent body fat, blood pressure, fasting serum glucose, hemoglobin A1C, and serum blood lipids) were analyzed from week 8 (end of baseline) and 24 (midpoint). This report is from an interim analysis up to the intervention midpoint at Week 24, as the study is ongoing.

The study results, published November 22 in PLOS One, showed that the 30 percent discount led to significantly increased consumption of both vegetables and diet soda. The 15 percent discount group showed a non-significant increase in consumption of diet soda but no change for vegetables. Thus, a discount of 15 percent may not be adequate to influence vegetable intake. Unlike vegetable intake, there was no effect of the discounts on fruit intake during the initial study period up to the midpoint. Diet soda intake was inversely correlated with regular soda intake for those who received the 30 percent discount on diet soda. There were no significant differences in the clinical measures, including body weight, relative to the discounts.

“Our findings that significant discounts on health foods can lead to an increase in consumption of these foods offer a suggestion for public health officials and policymakers to consider increasing access to nutritious foods and beverages,” said senior author Alan Geliebter, PhD, Professor of Psychiatry at Icahn Mount Sinai and an expert in obesity, food intake and eating disorders. “The results highlight a potential avenue for promoting healthier dietary intake behaviors and we hope this information will be used by policy makers to consider subsidizing fruits and vegetables via modification of the Farm Bill.”

To learn more about this study, please visit:
PLOS ONE

 

Schrum and Sleeter unpacking the history of higher education in the United States


Grant and Award Announcement

GEORGE MASON UNIVERSITY




Kelly Schrum, Professor, Higher Education Program; Affiliated Faculty, History and Art History, and Nathan Sleeter, Research Assistant Professor, History and Art History, Roy Rosenzweig Center for History and New Media (RRCHNM), received $220,000 from the National Endowment for the Humanities for the project: "Unpacking the History of Higher Education in the United States." 

This funding began in Oct. 2023 and will end in late Dec. 2024. 

The history of higher education is central to understanding its present and future, especially for students in Higher Education and Student Affairs (HESA) programs who will lead colleges and universities for decades to come. Project Co-Directors,  Dr. Kelly Schrum  (Higher Education Program), and Dr. Nate Sleeter (Roy Rosenzweig Center for History and New Media) at George Mason University, will offer a four-week institute, Unpacking the History of Higher Education in the United States, in summer 2024, designed to improve history of higher education courses nationally and to deepen humanities engagement among future higher education leaders. Funded by the  National Endowment for the Humanities  (NEH), this institute will enable participants to engage deeply with history content and history as a discipline. Participants will explore topics throughout the history of higher education and create digital teaching resources. The project will result in a robust Open Educational Resource (OER) on the history of higher education designed to facilitate teaching nationwide. This project grew out of a collaboration funded by  4-VA  in  2020  and again in  2021. 

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SwRI-led PUNCH mission advances toward 2025 launch


Observatory integration begins in SwRI’s new Spacecraft and Payload Processing Facility


Business Announcement

SOUTHWEST RESEARCH INSTITUTE

PUNCH WFI 

IMAGE: 

ON NOVEMBER 17, 2023, THE POLARIMETER TO UNIFY THE CORONA AND HELIOSPHERE (PUNCH) MISSION ACHIEVED AN IMPORTANT MILESTONE, PASSING ITS INTERNAL SYSTEM INTEGRATION REVIEW, CLEARING THE MISSION TO START INTEGRATING THE FOUR OBSERVATORIES. THREE OF THE FOUR PUNCH SPACECRAFT WILL INCLUDE SWRI-DEVELOPED WIDE FIELD IMAGERS (PICTURED) OPTIMIZED TO IMAGE THE SOLAR WIND. THE DARK BAFFLES IN THE TOP RECESS ALLOW THE INSTRUMENT TO IMAGE OBJECTS OVER A THOUSAND TIMES FAINTER THAN THE MILKY WAY.

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CREDIT: SOUTHWEST RESEARCH INSTITUTE




SAN ANTONIO — November 27, 2023 —On November 17, 2023, the Polarimeter to UNify the Corona and Heliosphere (PUNCH) mission achieved an important milestone, passing its internal system integration review and clearing the mission to start integrating its four observatories. Southwest Research Institute leads PUNCH, a NASA Small Explorer (SMEX) mission that will integrate understanding of the Sun’s corona, the outer atmosphere visible during total solar eclipses, with the “solar wind” that fills and defines the solar system. SwRI is also building the spacecraft and three of its five instruments.

“This was an internal review, but it is a huge milestone for us,” said PUNCH Principal Investigator Dr. Craig DeForest of SwRI’s Solar System Science and Exploration Division. “It marks the transition from assembling subsystems to integrating complete observatories that are ready to launch into space.”

PUNCH is a constellation of four small suitcase-sized satellites scheduled to launch in 2025 into a polar orbit formation. One satellite carries a coronagraph, the Narrow Field Imager, that images the Sun’s corona continuously. The other three each carry SwRI-developed Wide Field Imagers (WFIs), optimized to image the solar wind. These four instruments work together to form a field of view large enough to capture a quarter of the sky, centered on the Sun.

In addition to the primary instruments, PUNCH includes a student-built instrument, the Student Energetic Activity Monitor (STEAM). The instrument is a spectrometer that captures the X-ray spectrum of the Sun, providing valuable diagnostic data to help the PUNCH team understand corona heating as well as the initial acceleration of the solar wind away from the surface of the Sun.

“Just as in astronomy when a new telescope like Hubble opens a new window to the universe, PUNCH’s four satellites are going to visualize a mysterious process, imaging how the solar corona transitions into the solar wind,” said Dr. James L. Burch, senior vice president of SwRI’s Space Sector. “As an authority in heliophysics research, SwRI is not only leading the science of this mission but also building the spacecraft and three of the four sensors designed to let us see, for the first time, the birth of the solar wind.”

SwRI’s new Spacecraft and Payload Processing Facility has received the first three PUNCH instruments for integration. The Narrow Field Imager from the Naval Research Laboratory and the STEAM X-ray spectrometer instrument from the Colorado Space Grant Consortium arrived in October. The first of three Wide Field Imagers has also been delivered, with the remaining two undergoing final integration and test.

The Polarimeter to UNify the Corona and Heliosphere (PUNCH) mission achieved an important milestone, passing its internal system integration review, clearing spacecraft integration to begin in SwRI’s new Spacecraft and Payload Processing Facility. The team developed engineering models (EMs shown in background) to finalize integration processes and test procedures. EMs continue to support high-fidelity flight software testing and flight procedure/script validation (shown in foreground).

CREDIT

Southwest Research Institute

“The team really came together and completed a tremendous amount of verification work to get us ready for this review,” said PUNCH Project Manager Ronnie Killough. “This work will pay huge dividends as we prepare for our next major milestone, the pre-environmental review in early 2024.  That will clear the observatories for a battery of tests prior to spaceflight.”

The SMEX program provides frequent flight opportunities for world-class scientific investigations from space using innovative, efficient approaches within the heliophysics and astrophysics science areas. In addition to leading the PUNCH science mission, SwRI will operate the four spacecraft. The PUNCH team includes the U.S. Naval Research Laboratory, which is building the Narrow Field Imager, and RAL Space in Oxfordshire, England, which is providing detector systems for four visible-light cameras.

For more information, visit  https://www.swri.org/heliophysics.

 

UCF receives $1.5million NSF grant to improve energy efficiency of wireless communications


The award, provided through the National Science Foundation’s Addressing Systems Challenges through Engineering Teams program, aims to address problems surrounding engineering systems and networks


Grant and Award Announcement

UNIVERSITY OF CENTRAL FLORIDA




Wireless devices consume more than just the hours users spend scrolling through social media, streaming podcasts and TV shows, and playing games. The networks used to connect these devices also consume a large amount of energy – up to a few thousand terawatt-hours annually worldwide, which is enough to power 70,000,000 homes for one year.

UCF researcher Kenle Chen aims to enhance the energy efficiency of these systems with the support of a $1.5 million grant from the National Science Foundation’s Addressing Systems Challenges through Engineering Teams (ASCENT) program. ASCENT launched in 2020 with the goal of developing novel solutions to problems surrounding engineering systems and networks. It also promotes collaborations among researchers across three electrical engineering clusters: Communications, Circuits and Sensing Systems; Electronics, Photonics and Magnetic Devices; and Energy, Power, Control and Networks.

Chen, an assistant professor in the Department of Electrical and Computer Engineering, has teamed up with researchers from Purdue University and the University of California, Santa Barbara, to complete the project. They are one of seven teams selected for the ASCENT award this year.

”I feel very excited about receiving this competitive award that will provide us with a four-year funding support to perform this highly collaborative research,” Chen says. “Our project well aligns with the 2023 ASCENT program theme, Enhanced Energy Efficiency for Climate Change Mitigation, which will engender not only scientific advances but also broadened societal impacts.”

The team plans to incorporate advanced semiconductor technologies and artificial intelligence into a millimeter-wave radio system. This system widens the bandwidth of wireless communications for each user but also increases energy consumption.

To address this, Chen and his research group will develop advanced millimeter-wave power amplification circuits using highly efficient wide-bandgap semiconductors, which will be further integrated into a millimeter-wave radio system based on an antenna array. These circuits are also designed with ‘self-healing’ reconfigurability against variations in operational environments and system conditions.

Researchers from Purdue will lend their expertise to the semiconductor portion of the research. They will focus on the packaging of the technology and the assembly of silicon and non-silicon materials in microchips and antennas through a process called heterogeneous integration. They’ll also find solutions to keep the high-powered semiconductor devices cool in extreme temperatures.

UC Santa Barbara researchers will collaborate with Chen on the AI portion of the project, allowing for the autonomous control of advanced power amplification circuits. They will develop the algorithm and framework and test and train the AI for a faster processing time. This use of AI in wireless systems is fairly new in the industry, Chen says.

“We’re in the very early stages of integrating AI in this capacity,” Chen says. “In the future, we need to dynamically adjust the control settings of radio-frequency circuits because in many emerging wireless radio systems like 5G and 6G, the high complexity and compactness of the system make the operational environment subject to constant fluctuations.”

Chen also plans to integrate his research discoveries from the project into his course curriculum and to involve graduate students in the work in his lab. Although the four-year project will take time to develop, it could ultimately leave a lasting impact on the industry, he says.

“If the proposed new technologies can be successfully and realistically applied, we can save a huge amount of energy in wireless communications, possibly in the order of tens to hundreds of terawatt-hours per year,” Chen says. “Every industry is expected be carbon neutral by 2050, so we need to move progressively toward that target over time.”

Chen joined the UCF Department of Electrical and Computer Engineering in 2018 as an assistant professor. He earned his doctoral degree in electrical engineering from Purdue University in 2013 and is a 2023 recipient of the NSF CAREER award.

Writer: Marisa Ramiccio, UCF College of Engineering and Computer Science

 

Wave Devouring Propulsion: a revolutionary green technology for maritime sustainability


Peer-Reviewed Publication

CRANFIELD UNIVERSITY




A new form of wave devouring propulsion (WDP) could power ships and help to cut greenhouse gas emissions in the maritime industry.

 

Academics from Cranfield University have worked on the concept of using wave energy for propulsion, and designed an inventive method of achieving greater thrust from the power of the waves by harnessing a vessel’s submerged flapping foils in an innovative way.

 

Inspiration from whale fins

 

Taking inspiration from the power of a whale's fins, the team studied the structure and movement of the tail fin to unravel how it effectively uses wave energy for propulsion. Through simulations and experiments, they developed and integrated a simplified version of the whale's tail fin action into a ship's power system.

 

WDP technology offers a range of benefits, making it a compelling solution for the marine industry. Not only does it reduce fuel costs, it also significantly enhances marine craft propulsion. This green technology can find applications in small, unmanned vessels and can be seamlessly integrated into hybrid propulsion systems, including those powered by electricity, hydrogen, or fossil fuels. It also has the potential to achieve carbon reduction targets and contribute to the sustainable development goals of the shipping industry.

 

Dr Liang Yang, Lecturer in Marine Renewable Energy Systems at Cranfield University, led the research and said: “Wave Devouring Propulsion (WDP) could act as a transformative force in maritime sustainability. Our research pioneers a novel approach to propel ships using the boundless energy of waves.

 

“We’re not just reducing emissions; we're navigating towards a future where carbon reduction targets are met, and the shipping industry aligns with sustainable development goals.”

 

The funding for the project was delivered as part of the Transport Research and Innovation Grants (TRIG) from the Department for Transport.

 

To read the research paper Wave devouring propulsion: an overview of flapping foil propulsion technology in full, visit the ScienceDirect website.  

 

 

Algorithmic recommendation technology or human curation? Study of online news outlet in Germany suggests both


Peer-Reviewed Publication

CARNEGIE MELLON UNIVERSITY




Recommender systems are machine learning applications in online platforms that automate tasks historically done by people. In the news industry, recommender algorithms can assume the tasks of editors who select which news stories people see online, with the goal of increasing the number of clicks by users, but few studies have examined how the two compare.

A new study examined how users of an online news outlet in Germany reacted to automated recommendations versus choices made by human editors. On average, the algorithm outperformed the person, but the person did better under certain conditions. The study’s authors suggest a combination of human curation and automated recommender technology may be best.

The study was conducted by researchers at Carnegie Mellon University (CMU), the University of Lausanne, and Ludwig-Maximilians-Universität (LMU) München. It is published in Management Science.

“Our work highlights a critical tension between detailed yet potentially narrow information available to algorithms and broad but often unscalable information available to humans,” explains Ananya Sen, assistant professor of information systems and economics at CMU’s Heinz College, who coauthored the study. “Algorithmic recommendations personalize at scale using information that tends to be detailed but is often temporally narrow and context-specific, while human experts base recommendations on broad knowledge accumulated over a professional career but cannot make individual recommendations at scale.”

To quantify how companies should use algorithmic recommendation technology relative to human curation, researchers studied users’ reactions to automated recommendations compared to how they reacted to human recommendations at a major online news outlet in Germany from December 2017 to May 2018. The outlet is an ad-supported publisher with more than 20 million monthly visitors and nearly 120 million monthly page impressions.

On average, the algorithmic recommendations outperformed those curated by human editors with respect to users’ clicks. But this result depended on the experience of the human editors (more experienced editors did better than less experienced editors), the amount of personal data available to the algorithm (the algorithm required sufficient volume to perform well), and variation in the external environment that caused variation in demand for articles (humans did better on days with more attention-grabbing news).

The findings suggest that reverting to human curation can mitigate the drawbacks of personalized algorithmic recommendations, the authors say. They also suggest that platforms should defer to human expertise in the absence of user-specific personal data. The optimal combination of human curation and automated recommendation technology can lead to an increase of up to 13% in clicks.

“Based on our experiment, we suggest that managers leverage humans and automatic recommendations together rather than looking at curation as an issue that pits human experts against algorithms,” says Christian Peukert, professor of strategy, globalization, and society at the University of Lausanne’s business school, who coauthored the study.

Among the study’s limitations, the authors say their experiment tested only how one algorithm performed relative to human editors, so their findings may apply only to news media that is supported by ads.

 

New framework for using AI in health care considers medical knowledge, practices, procedures, values


Peer-Reviewed Publication

CARNEGIE MELLON UNIVERSITY




Health care organizations are looking to artificial intelligence (AI) tools to improve patient care, but their translation into clinical settings has been inconsistent, in part because evaluating AI in health care remains challenging. In a new article, researchers propose a framework for using AI that includes practical guidance for applying values and that incorporates not just the tool’s properties but the systems surrounding its use.

The article was written by researchers at Carnegie Mellon University, The Hospital for Sick Children, the Dalla Lana School of Public Health, Columbia University, and the University of Toronto. It is published in Patterns.

“Regulatory guidelines and institutional approaches have focused narrowly on the performance of AI tools, neglecting knowledge, practices, and procedures necessary to integrate the model within the larger social systems of medical practice,” explains Alex John London, K&L Gates Professor of Ethics and Computational Technologies at Carnegie Mellon, who coauthored the article. “Tools are not neutral—they reflect our values—so how they work reflects the people, processes, and environments in which they are put to work.”

London is also Director of Carnegie Mellon’s Center for Ethics and Policy and Chief Ethicist at Carnegie Mellon’s Block Center for Technology and Society as well as a faculty member in CMU’s Department of Philosophy

London and his coauthors advocate for a conceptual shift in which AI tools are viewed as parts of a larger “intervention ensemble,” a set of knowledge, practices, and procedures that are necessary to deliver care to patients. In previous work with other colleagues, London has applied this concept to pharmaceuticals and to autonomous vehicles. The approach treats AI tools as “sociotechnical systems,” and the authors’ proposed framework seeks to advance the responsible integration of AI systems into health care.

Previous work in this area has been largely descriptive, explaining how AI systems interact with human systems. The framework proposed by London and his colleagues is proactive, providing guidance to designers, funders, and users about how to ensure that AI systems can be integrated into workflows with the greatest potential to help patients. Their approach can also be used for regulation and institutional insights, as well as for appraising, evaluating, and using AI tools responsibly and ethically. To illustrate their framework, the authors apply it to the development of AI systems developed for diagnosing more than mild diabetic retinopathy.

“Only a small majority of models evaluated through clinical trials have shown a net benefit,” says Melissa McCradden, a Bioethicist at the Hospital for Sick Children and Assistant Professor of Clinical and Public Health at the Dalla Lana School of Public Health, who coauthored the article. “We hope our proposed framework lends precision to evaluation and interests regulatory bodies exploring the kinds of evidence needed to support the oversight of AI systems.”

 

Understanding charged particles helps physicists simulate element creation in stars


Peer-Reviewed Publication

NORTH CAROLINA STATE UNIVERSITY




New research from North Carolina State University and Michigan State University opens a new avenue for modeling low-energy nuclear reactions, which are key to the formation of elements within stars. The research lays the groundwork for calculating how nucleons interact when the particles are electrically charged.

Predicting the ways that atomic nuclei – clusters of protons and neutrons, together referred to as nucleons – combine to form larger compound nuclei is an important step toward understanding how elements are formed within stars.

Since the relevant nuclear interactions are very difficult to measure experimentally, physicists use numerical lattices to simulate these systems. The finite lattice used in such numerical simulations essentially acts as an imaginary box around a group of nucleons that enables physicists to calculate the properties of a nucleus formed out of these particles.

But such simulations have so far lacked a way to predict properties that govern low-energy reactions involving charged clusters arising from multiple protons. This is important because these low-energy reactions are vital to element formation in stars, among other things.

“While the ‘strong nuclear force’ binds protons and neutrons together in atomic nuclei, the electromagnetic repulsion between protons plays an important role in the nucleus’ overall structure and dynamics,” says Sebastian König, assistant professor of physics at NC State and corresponding author of the research.

“This force is particularly strong at the lowest energies, where many important processes take place that synthesize the elements that make up the world we know,” König says. But it is challenging for theory to predict these interactions.”

So König and colleagues decided to work backward. Their approach looks at the end result of the reactions within a lattice – the compound nuclei – and then backtracks to discover the properties and energies involved in the reaction.

“We aren’t calculating the reactions themselves; rather, we’re looking at the structure of the end product,” König says. “As we change the size of the ‘box,’ the simulations and results will also change. From this information we can actually extract parameters that determine what happens when these charged particles interact.”

“The derivation of the formula was unexpectedly challenging,” adds Hang Yu, graduate student at NC State and first author of the work, “but the final result is quite beautiful and has important applications.”

From this information the team developed a formula and tested it against benchmark calculations, which are evaluations done via traditional methods, to ensure the results were accurate and ready to be used in future applications.

“This is the background work that tells us how to analyze a simulation in order to extract the data we need to improve predictions for nuclear reactions,” König says. “The cosmos is enormous, but to understand it you have to look at its tiniest components. That’s what we’re doing here – focusing on the small details to better inform our analysis of the bigger picture.”

The work appears in Physical Review Letters and was supported by the National Science Foundation and by the U.S. Department of Energy. NC State graduate student Hang Yu is first author. Dean Lee, professor of physics and theoretical nuclear science department head at the Facility for Rare Isotope Beams at Michigan State University, co-authored the work. Lee was formerly at NC State and remains an adjunct professor of physics at NC State.

-peake-

Note to editors: An abstract follows.

“Charged-particle bound states in periodic boxes”

DOI: 10.1103/PhysRevLett.131.212502

Authors: Sebastian König, Hang Yu, North Carolina State University; Dean Lee, Michigan State University
Published: Nov. 21, 2023 in Physical Review Letters

Abstract:
We consider the binding energy of a two-body system with a repulsive Coulomb interaction in a finite periodic volume. We define the finite-volume Coulomb potential as the usual Coulomb potential, except that the distance is defined the shortest separation between the two bodies in the periodic volume. We investigate this problem in one and three-dimensional periodic boxes and derive the asymptotic behavior of the volume dependence for bound states with zero angular momentum in terms of Whittaker functions. We benchmark our results against numerical calculations and show how the method can be used to extract asymptotic normalization coefficients for charged-particle bound states. The results we derive here have immediate applications for calculations of atomic nuclei in finite periodic volumes for the case where the leading finite-volume correction is associated with two charged clusters.

 

Lancaster University researchers reveal the ‘Viral Language’ of the pandemic


Remember ‘Covidiots’ and the first protests by ‘anti-vaxxers’? The early stages of the pandemic saw plenty of new words enter the public ‘voice’, but many of these novel terms were actually fairly short-lived.


Book Announcement

LANCASTER UNIVERSITY



Remember ‘Covidiots’ and the first protests by ‘anti-vaxxers’?

The early stages of the pandemic saw plenty of new words enter the public ‘voice’, but many of these novel terms were actually fairly short-lived.

However, according to new research by Lancaster University linguists Dr Luke Collins and Professor Veronika Koller, some will be here to stay, such as ‘zoom fatigue’, an effect of the increase in video-conferencing, and ‘lockdown’.

In their new book ‘Viral Language: Analysing the Covid-19 pandemic in public discourse’, Dr Collins and Professor Koller look at how language was used about and during the Covid-19 pandemic.

Across eight chapters, they demonstrate how experiences of health and illness can be shaped by political messaging, scientific research, news articles and advertising.

Examples include:

  • Stay home, save lives: Health ministers in various English-speaking countries used Twitter/X as a broadcast medium to give direct, bite-sized advice to citizens. 
  • Many politicians declared ‘war’ on Covid, but another popular metaphor was that of journeys. For example: ‘we have come through the tunnel’. Politicians of all stripes used it to ensure compliance with lockdown and other measures and to emphasise togetherness.
  • Scientific writing on Covid-19 featured some hyperbolic language. For example: ‘This is one of the most extensive datasets on individual transmission events’. This, say the researchers, suggests increasing competition among academics in the scientific effort to control the pandemic. 
  • Did politicians follow ‘the science’ or the scientists? British news media participated in a critical discussion of what ‘the science’ is and how it contributes to policymaking.
  • And how do you advertise for beer when consumers cannot go out? Advertisers balanced the lockdown context with messages of empathy, community and responsibility. Rather than change course completely though, they adapted their brand values to the new context: Budweiser was still about sports and national identity, Heineken continued to show young people enjoying themselves (although socially distanced), and Stella Artois stuck to its focus on history and heritage.

The book was inspired by the researchers wanting to find out how a globally disruptive crisis, such as the Covid-19 pandemic, leaves traces in the very way we speak and write.

After all, they say, language helps us make sense of events and influences how we experience them.

To investigate the language around Covid-19, Dr Collins and Professor Koller looked at a variety of sources, from large collections of scientific writing and news, which they analysed with computer-assisted methods, to crowd-sourced examples, social media and advertising videos. 

As Dr Collins explains: “For the computer-assisted studies, we looked at 224 million words worth of scientific articles, 772 million words of news articles and 12,000 tweets.”

Professor Koller adds: “The studies are of interest to anyone who wants to understand how the language of the news, politicians and advertising changed in reaction to the pandemic”.

‘Viral Language’ is published by Routledge.