ScienceDaily
Your source for the latest research news
Follow Facebook Twitter LinkedIn Subscribe RSS Feeds Newsletters
New:
  • First Cloudless, Jupiter-Like Planet
  • Immune System: Defense After Recovery from COVID
  • Saturn's Tilt Caused by Its Moons
  • Butterfly Wing Clap Explains Mystery of Flight
  • Much of Earth's Nitrogen Was Locally Sourced
  • A 'Super-Puff' Planet Like No Other
  • 2020 Tied for Warmest Year On Record: NASA
  • COVID-19 Reduced U.S. Life Expectancy
  • Climate Change: Billions in Flood Damages
  • Distant Colliding Galaxy Dying Out
advertisement
Follow all of ScienceDaily's latest research news and top science headlines!
Science News
from research organizations

1

2

'Liquid' machine-learning system adapts to changing conditions

The new type of neural network could aid decision making in autonomous driving and medical diagnosis

Date:
January 28, 2021
Source:
Massachusetts Institute of Technology
Summary:
Researchers developed a neural network that learns on the job, not just during training. The 'liquid' network varies its equations' parameters, enhancing its ability to analyze time series data. The advance could boost autonomous driving, medical diagnosis, and more.
Share:
FULL STORY

MIT researchers have developed a type of neural network that learns on the job, not just during its training phase. These flexible algorithms, dubbed "liquid" networks, change their underlying equations to continuously adapt to new data inputs. The advance could aid decision making based on data streams that change over time, including those involved in medical diagnosis and autonomous driving.

advertisement

"This is a way forward for the future of robot control, natural language processing, video processing -- any form of time series data processing," says Ramin Hasani, the study's lead author. "The potential is really significant."

The research will be presented at February's AAAI Conference on Artificial Intelligence. In addition to Hasani, a postdoc in the MIT Computer Science and Artificial Intelligence Laboratory (CSAIL), MIT co-authors include Daniela Rus, CSAIL director and the Andrew and Erna Viterbi Professor of Electrical Engineering and Computer Science, and PhD student Alexander Amini. Other co-authors include Mathias Lechner of the Institute of Science and Technology Austria and Radu Grosu of the Vienna University of Technology.

Time series data are both ubiquitous and vital to our understanding the world, according to Hasani. "The real world is all about sequences. Even our perception -- you're not perceiving images, you're perceiving sequences of images," he says. "So, time series data actually create our reality."

He points to video processing, financial data, and medical diagnostic applications as examples of time series that are central to society. The vicissitudes of these ever-changing data streams can be unpredictable. Yet analyzing these data in real time, and using them to anticipate future behavior, can boost the development of emerging technologies like self-driving cars. So Hasani built an algorithm fit for the task.

Hasani designed a neural network that can adapt to the variability of real-world systems. Neural networks are algorithms that recognize patterns by analyzing a set of "training" examples. They're often said to mimic the processing pathways of the brain -- Hasani drew inspiration directly from the microscopic nematode, C. elegans. "It only has 302 neurons in its nervous system," he says, "yet it can generate unexpectedly complex dynamics."

Hasani coded his neural network with careful attention to how C. elegans neurons activate and communicate with each other via electrical impulses. In the equations he used to structure his neural network, he allowed the parameters to change over time based on the results of a nested set of differential equations.

advertisement

This flexibility is key. Most neural networks' behavior is fixed after the training phase, which means they're bad at adjusting to changes in the incoming data stream. Hasani says the fluidity of his "liquid" network makes it more resilient to unexpected or noisy data, like if heavy rain obscures the view of a camera on a self-driving car. "So, it's more robust," he says.

There's another advantage of the network's flexibility, he adds: "It's more interpretable."

Hasani says his liquid network skirts the inscrutability common to other neural networks. "Just changing the representation of a neuron," which Hasani did with the differential equations, "you can really explore some degrees of complexity you couldn't explore otherwise." Thanks to Hasani's small number of highly expressive neurons, it's easier to peer into the "black box" of the network's decision making and diagnose why the network made a certain characterization.

"The model itself is richer in terms of expressivity," says Hasani. That could help engineers understand and improve the liquid network's performance.

Hasani's network excelled in a battery of tests. It edged out other state-of-the-art time series algorithms by a few percentage points in accurately predicting future values in datasets, ranging from atmospheric chemistry to traffic patterns. "In many applications, we see the performance is reliably high," he says. Plus, the network's small size meant it completed the tests without a steep computing cost. "Everyone talks about scaling up their network," says Hasani. "We want to scale down, to have fewer but richer nodes."

Hasani plans to keep improving the system and ready it for industrial application. "We have a provably more expressive neural network that is inspired by nature. But this is just the beginning of the process," he says. "The obvious question is how do you extend this? We think this kind of network could be a key element of future intelligence systems."

This research was funded, in part, by Boeing, the National Science Foundation, the Austrian Science Fund, and Electronic Components and Systems for European Leadership.

make a difference: sponsored opportunity

Story Source:

Materials provided by Massachusetts Institute of Technology. Original written by Daniel Ackerman. Note: Content may be edited for style and length.


Journal Reference:

  1. Ramin Hasani, Mathias Lechner, Alexander Amini, Daniela Rus, Radu Grosu. Liquid Time-constant Networks. submitted to arXiv, 2021 [abstract]

Cite This Page:

  • MLA
  • APA
  • Chicago
Massachusetts Institute of Technology. "'Liquid' machine-learning system adapts to changing conditions: The new type of neural network could aid decision making in autonomous driving and medical diagnosis." ScienceDaily. ScienceDaily, 28 January 2021. <www.sciencedaily.com/releases/2021/01/210128091153.htm>.
Massachusetts Institute of Technology. (2021, January 28). 'Liquid' machine-learning system adapts to changing conditions: The new type of neural network could aid decision making in autonomous driving and medical diagnosis. ScienceDaily. Retrieved January 31, 2021 from www.sciencedaily.com/releases/2021/01/210128091153.htm
Massachusetts Institute of Technology. "'Liquid' machine-learning system adapts to changing conditions: The new type of neural network could aid decision making in autonomous driving and medical diagnosis." ScienceDaily. www.sciencedaily.com/releases/2021/01/210128091153.htm (accessed January 31, 2021).

  • RELATED TOPICS
    • Matter & Energy
      • Telecommunications
      • Physics
      • Engineering
      • Materials Science
    • Computers & Math
      • Computers and Internet
      • Information Technology
      • Artificial Intelligence
      • Hacking
advertisement

  • RELATED TERMS
    • Neural network
    • Artificial neural network
    • Voice over IP
    • Scientific visualization
    • Computer worm
    • Mobile phone
    • Local area network
    • Information and communication technologies

1

2

3

4

5
RELATED STORIES

Accurate Neural Network Computer Vision Without the 'Black Box'
Dec. 15, 2020 — New research offers clues to what goes on inside the minds of machines as they learn to see. Instead of attempting to account for a neural network's decision-making on a post hoc basis, their ...
A Neural Network Learns When It Should Not Be Trusted
Nov. 19, 2020 — Researchers have developed a way for deep learning neural networks to rapidly estimate confidence levels in their output. The advance could enhance safety and efficiency in AI-assisted decision ...
All-Optical Neural Network for Deep Learning
Aug. 29, 2019 — In a key step toward making large-scale optical neural networks practical, researchers have demonstrated a first-of-its-kind multilayer all-optical artificial neural network. Researchers detail their ...
Hardware-Software Co-Design Approach Could Make Neural Networks Less Power Hungry
Dec. 19, 2018 — Engineers have developed a neuroinspired hardware-software co-design approach that could make neural network training more energy-efficient and faster. Their work could one day make it possible to ...
FROM AROUND THE WEB

ScienceDaily shares links with sites in the TrendMD network and earns revenue from third-party advertisers, where indicated.
  Print   Email   Share

advertisement

1

2

3

4

5
Most Popular
this week

SPACE & TIME
Saturn's Tilt Caused by Its Moons, Researchers Say
Astronomers Discover First Cloudless, Jupiter-Like Planet
Much of Earth's Nitrogen Was Locally Sourced
MATTER & ENERGY
Turn Off That Camera During Virtual Meetings, Environmental Study Says
Highly Efficient Grid-Scale Electricity Storage at Fifth of Cost
'Galaxy-Sized' Observatory Sees Potential Hints of Gravitational Waves
COMPUTERS & MATH
Three Reasons Why COVID-19 Can Cause Silent Hypoxia
Video Games Can Change Your Brain
New Study Estimates the Odds of Life and Intelligence Emerging Beyond Our Planet
advertisement

Strange & Offbeat
 

SPACE & TIME
Thick Lithosphere Casts Doubt on Plate Tectonics in Venus's Geologically Recent Past
High Schoolers Discover Four Exoplanets Through Mentorship Program
Purported Phosphine on Venus More Likely to Be Ordinary Sulfur Dioxide
MATTER & ENERGY
Chloroplast-Fortified 3D-Printer Ink May Strengthen Products
How Complex Oscillations in a Quantum System Simplify With Time
Optimal Information About the Invisible
COMPUTERS & MATH
Mira's Last Journey: Exploring the Dark Universe
Record-Breaking Laser Link Could Help Us Test Whether Einstein Was Right
Using VR Training to Boost Our Sense of Agency and Improve Motor Control
SD
  • SD
    • Home Page
    • Top Science News
    • Latest News
  • Home
    • Home Page
    • Top Science News
    • Latest News
  • Health
    • View all the latest top news in the health sciences,
      or browse the topics below:
      Health & Medicine
      • Allergy
      • Alternative Medicine
      • Birth Control
      • Cancer
      • Diabetes
      • Diseases
      • Heart Disease
      • HIV and AIDS
      • Obesity
      • Stem Cells
      • ... more topics
      Mind & Brain
      • ADD and ADHD
      • Addiction
      • Alzheimer's
      • Autism
      • Depression
      • Headaches
      • Intelligence
      • Psychology
      • Relationships
      • Schizophrenia
      • ... more topics
      Living Well
      • Parenting
      • Pregnancy
      • Sexual Health
      • Skin Care
      • Men's Health
      • Women's Health
      • Nutrition
      • Diet and Weight Loss
      • Fitness
      • Healthy Aging
      • ... more topics
  • Tech
    • View all the latest top news in the physical sciences & technology,
      or browse the topics below:
      Matter & Energy
      • Aviation
      • Chemistry
      • Electronics
      • Fossil Fuels
      • Nanotechnology
      • Physics
      • Quantum Physics
      • Solar Energy
      • Technology
      • Wind Energy
      • ... more topics
      Space & Time
      • Astronomy
      • Black Holes
      • Dark Matter
      • Extrasolar Planets
      • Mars
      • Moon
      • Solar System
      • Space Telescopes
      • Stars
      • Sun
      • ... more topics
      Computers & Math
      • Artificial Intelligence
      • Communications
      • Computer Science
      • Hacking
      • Mathematics
      • Quantum Computers
      • Robotics
      • Software
      • Video Games
      • Virtual Reality
      • ... more topics
  • Enviro
    • View all the latest top news in the environmental sciences,
      or browse the topics below:
      Plants & Animals
      • Agriculture and Food
      • Animals
      • Biology
      • Biotechnology
      • Endangered Animals
      • Extinction
      • Genetically Modified
      • Microbes and More
      • New Species
      • Zoology
      • ... more topics
      Earth & Climate
      • Climate
      • Earthquakes
      • Environment
      • Geography
      • Geology
      • Global Warming
      • Hurricanes
      • Ozone Holes
      • Pollution
      • Weather
      • ... more topics
      Fossils & Ruins
      • Ancient Civilizations
      • Anthropology
      • Archaeology
      • Dinosaurs
      • Early Humans
      • Early Mammals
      • Evolution
      • Lost Treasures
      • Origin of Life
      • Paleontology
      • ... more topics
  • Society
    • View all the latest top news in the social sciences & education,
      or browse the topics below:
      Science & Society
      • Arts & Culture
      • Consumerism
      • Economics
      • Political Science
      • Privacy Issues
      • Public Health
      • Racial Disparity
      • Religion
      • Sports
      • World Development
      • ... more topics
      Business & Industry
      • Biotechnology & Bioengineering
      • Computers & Internet
      • Energy & Resources
      • Engineering
      • Medical Technology
      • Pharmaceuticals
      • Transportation
      • ... more topics
      Education & Learning
      • Animal Learning & Intelligence
      • Creativity
      • Educational Psychology
      • Educational Technology
      • Infant & Preschool Learning
      • Learning Disorders
      • STEM Education
      • ... more topics
  • Quirky
    • Top News
    • Human Quirks
    • Odd Creatures
    • Bizarre Things
    • Weird World
Free Subscriptions

Get the latest science news with ScienceDaily's free email newsletters, updated daily and weekly. Or view hourly updated newsfeeds in your RSS reader:

  • Email Newsletters
  • RSS Feeds
Follow Us

Keep up to date with the latest news from ScienceDaily via social networks:

  • Facebook
  • Twitter
  • LinkedIn
Have Feedback?

Tell us what you think of ScienceDaily -- we welcome both positive and negative comments. Have any problems using the site? Questions?

  • Leave Feedback
  • Contact Us
About This Site  |  Staff  |  Reviews  |  Contribute  |  Advertise  |  Privacy Policy  |  Editorial Policy  |  Terms of Use
Copyright 2021 ScienceDaily or by other parties, where indicated. All rights controlled by their respective owners.
Content on this website is for information only. It is not intended to provide medical or other professional advice.
Views expressed here do not necessarily reflect those of ScienceDaily, its staff, its contributors, or its partners.
Financial support for ScienceDaily comes from advertisements and referral programs, where indicated.
— CCPA: Do Not Sell My Information — — GDPR: Privacy Settings —