24/7 Space News
TECH SPACE
Machine learning used to probe the building blocks of shapes
This image shows a slice of the Fano variety V6.
Machine learning used to probe the building blocks of shapes
by Staff Writers
London, UK (SPX) Oct 05, 2023

Applying machine learning to find the properties of atomic pieces of geometry shows how AI has the power to accelerate discoveries in maths.

Mathematicians from Imperial College London and the University of Nottingham have, for the first time, used machine learning to expand and accelerate work identifying 'atomic shapes' that form the basic pieces of geometry in higher dimensions. Their findings have been published in Nature Communications.

The way they used artificial intelligence, in the form of machine learning, could transform how maths is done, say the authors. Dr Alexander Kasprzyk from the University of Nottingham said: "For mathematicians, the key step is working out what the pattern is in a given problem. This can be very difficult, and some mathematical theories can take years to discover."

Professor Tom Coates, from the Department of Mathematics at Imperial, added: "We have shown that machine learning can help uncover patterns within mathematical data, giving us both new insights and hints of how they can be proved."

PhD student Sara Veneziale, from the Department of Mathematics at Imperial, said: "This could be very broadly applicable, such that it could rapidly accelerate the pace at which maths rdiscoveries are made. It's like when computers were first used in maths research, or even calculators: it's a step-change in the way we do maths."

Defining shapes
Mathematicians describe shapes using equations, and by analysing these equations can break the shape down into fundamental pieces. These are the building blocks of shapes, the equivalent of atoms, and are called Fano varieties.

The Imperial and Nottingham team began building a 'periodic table' of these Fano varieties several years ago, but finding ways of classifying them into groups with common properties has been challenging. Now, they have used machine learning to reveal unexpected patterns in the Fano varieties.

One aspect of a Fano variety is its quantum period - a sequence of numbers that acts like a barcode or fingerprint. It has been suggested that the quantum period defines the dimension of the Fano variety, but there has been no theoretical proposal for how this works, so no way to test it on the huge set of known Fano varieties.

Machine learning, however, is built to find patterns in large datasets. By training a machine learning model with some example data, the team were able to show the resulting model could predict the dimensions of Fano varieties from quantum periods with 99% accuracy.

Coding the real world
The AI model doesn't conclusively show the team have discovered a new statement, so they then used more traditional mathematical methods to prove that the quantum period defines the dimension - using the AI model to guide them.

As well as using machine learning to discover new maths, the team say that the datasets used in maths could help refine machine learning models. Most models are trained on data taken from real life, such as health or transport data, which are inherently 'noisy' - they contain a lot of randomness that to some degree mask the real information.

Mathematical data is 'pure' - noise free - and contains patterns and structures that underly the data, waiting to be uncovered. This data can therefore be used as testing grounds for machine learning models, improving their ability to find new patterns.

Research Report:Machine learning the dimension of a Fano variety

Related Links
Imperial College London
Space Technology News - Applications and Research

Subscribe Free To Our Daily Newsletters
Tweet

RELATED CONTENT
The following news reports may link to other Space Media Network websites.
TECH SPACE
Green issues dominate Paris fashion as green tech marketplace debuts
Paris (AFP) Oct 2, 2023
Environmental activists tried to disrupt Louis Vuitton's event at Paris Fashion Week on Monday, while Britain's Stella McCartney made green technologies central to her own show as climate issues increasingly dominate the industry. One of France's biggest YouTube stars, Jeremstar, was briefly arrested after dressing like a "dismembered snake" to protest Louis Vuitton's use of animal skins, outside the brand's show on the Champs-Elysees. Activists also spray-painted the brand's nearby boutique, ... read more

TECH SPACE
Chinese universities climb up leading global ranking

NASA astronaut Frank Rubio returning to Earth after record 371 days in space

Kayhan Space Raises $7 million, Unveils First-Ever Autonomous Space Traffic Coordination Service

Two Russians, American reach space station

TECH SPACE
All engines added to NASA's Artemis II core stage

Historic NASA wind tunnel testing Mars Ascent Vehicle

Third Subscale Booster for future Artemis missions fires up at Marshall

'Anomaly' ends Rocket Lab launch mid-flight

TECH SPACE
Curiosity Needs an Altitude Adjustment: Sols 3955-3956

"Sombrero Rock": A Case of Case-Hardening?

Did life exist on Mars? Other planets? With AI's help, we may know soon

Big Fan of Rock Bands: Sols 3960-3961

TECH SPACE
Astronauts honored for contributions to China's space program

China capable of protecting astronauts from effects of space weightlessness

Tianzhou 5 spacecraft burns up on Earth reentry

Crew of Shenzhou XV mission honored for six-month space odyssey

TECH SPACE
Terran Orbital Announces Closing of $32.5 Million Public Offering

Iridium and McQ develop remote monitoring solution for Canadian Armed Forces in the Arctic

Terran Orbital announces pricing of Public Offering

Intelsat Inflight Connectivity expanded to all Airbus aircraft

TECH SPACE
Metal-loving microbes could replace chemical processing of rare earths

Material matters

Mineral-hungry clean tech sees countries seeking to escape China's shadow

Green issues dominate Paris fashion as green tech marketplace debuts

TECH SPACE
Study sheds new light on strange lava worlds

JWST's first spectrum of a TRAPPIST-1 planet

Alien Machines in the Solar System: The Possibilities and Potential Origins

Possible hints of life found on distant planet - how excited should we be?

TECH SPACE
Webb finds carbon source on surface of Jupiter's moon Europa

Hidden ocean the source of CO2 on Jupiter moon

Juice: why's it taking sooo long

Possible existence of Earth-like planet predicted in Outskirts of Solar System

Subscribe Free To Our Daily Newsletters




The content herein, unless otherwise known to be public domain, are Copyright 1995-2024 - Space Media Network. All websites are published in Australia and are solely subject to Australian law and governed by Fair Use principals for news reporting and research purposes. AFP, UPI and IANS news wire stories are copyright Agence France-Presse, United Press International and Indo-Asia News Service. ESA news reports are copyright European Space Agency. All NASA sourced material is public domain. Additional copyrights may apply in whole or part to other bona fide parties. All articles labeled "by Staff Writers" include reports supplied to Space Media Network by industry news wires, PR agencies, corporate press officers and the like. Such articles are individually curated and edited by Space Media Network staff on the basis of the report's information value to our industry and professional readership. Advertising does not imply endorsement, agreement or approval of any opinions, statements or information provided by Space Media Network on any Web page published or hosted by Space Media Network. General Data Protection Regulation (GDPR) Statement Our advertisers use various cookies and the like to deliver the best ad banner available at one time. All network advertising suppliers have GDPR policies (Legitimate Interest) that conform with EU regulations for data collection. By using our websites you consent to cookie based advertising. If you do not agree with this then you must stop using the websites from May 25, 2018. Privacy Statement. Additional information can be found here at About Us.