• Cryptocurrency
  • Earnings
  • Enterprise
  • About TechBooky
  • Submit Article
  • Advertise Here
  • Contact Us
TechBooky
  • African
  • AI
  • Metaverse
  • Gadgets
Generic selectors
Exact matches only
Search in title
Search in content
Post Type Selectors
  • African
  • AI
  • Metaverse
  • Gadgets
Generic selectors
Exact matches only
Search in title
Search in content
Post Type Selectors
TechBooky
Generic selectors
Exact matches only
Search in title
Search in content
Post Type Selectors
Home Artificial Intelligence

Researchers Use Artificial Intelligence Supported Neural Networks To Reason Like The Human Brain

Ayoola by Ayoola
October 24, 2021
in Artificial Intelligence, Research/How to do it
Share on FacebookShare on Twitter

A neural network, a series of algorithms that strives to recognize underlying relationships in a set of given data with a mimicking process that is akin to the human brain operation, has be drafted to learn to solve myriads of problems: from identifying cats in photographs, to steering a self driving car, neural networks refer to a system of neurons that can either be organic or artificial in nature.

In more explicit terms, a neural network can either be a biological neural network, that consists of biological neurons or an artificial neural network drafted for resolving Artificial Intelligence (AI) issues.

But over the years, neural networks have a seeming limitation:  they were not able to actually understand the tasks they are performing in very clear terms and this is what the team at MIT sought to solve.

An example of such limitation is a situation where a neural network was saddled with the responsibility of keeping a self-driving car in its stated lane; it will do so by watching the bushes at the side of the road, instead of actually learning to detect the real stated lanes, while focusing on the road’s horizon.

Massachusetts Institute of Technology (MIT) researchers taking cognizance of these limitations, had began a fact-finding mission to further study the neural networks with a previous work on Neural Circuit Policy (NCP), serving as a groundwork for the study.

 The MIT researchers then demonstrated that a neural network certain type has the capacity to learn the true cause and effect structure of the navigation task it has be programmed to perform. Having being availed that these networks understand the tasks directly from visual data, the team opined that they should be more effective than other neural networks in the process of navigating  in complex environments like places with rapidly changing weather conditions.

The work whose Co-authors include electrical engineering and computer science graduate student and co-lead author Charles Vorbach; CSAIL PhD student Alexander Amini; Institute of Science and Technology Austria graduate student Mathias Lechner; and senior author Daniela Rus, the Andrew and Erna Viterbi Professor of Electrical Engineering and Computer Science and director of CSAI can be used in the future to improve the reliability and trustworthiness of machine learning agents that are performing high-stakes tasks, like driving an autonomous vehicle on a busy highway.

The research supported by the United States Air Force Research Laboratory, the United States Air Force Artificial Intelligence Accelerator, and the Boeing Company, will be presented at the 2021 Conference on Neural Information Processing Systems (NeurIPS) in December. The study draws on previous work in which the team showed how a brain-inspired type of deep learning system known as a Neural Circuit Policy (NCP), developed by liquid neural network cells, has the capacity to autonomously control a self-driving vehicle, with just 19 control neurons.

MIT researchers have demonstrated that a special class of deep learning neural networks is able to learn the true cause-and-effect structure of a navigation task during training. Credit: Stock Image

The lead author of the research, Ramini  Hasani, a postdoc in the Computer Science and Artificial Intelligence Laboratory (CSAIL), while analysing the no more latent work of the research team said:

 “Because these machine-learning systems are able to perform reasoning in a causal way, we can know and point out how they function and make decisions. This is essential for safety-critical applications”.

In the self-car driving example stated earlier, the team observed that the Neural Circuit Policy (NCP) that helps the car perform a lane-keeping task focused attention on the road horizon and its borders when controlling a self-driving car, just the same  way a human would  do when driving a car, effectively helping to resolve the earlier limitation of Neural networks.

 “That was a cool observation, but we didn’t quantify it. So, we wanted to find the mathematical principles of why and how these networks are able to capture the true causation of the data,” he says.

The team also noted that the network of the NCP learns to interact with the environment and account for interventions when being trained to complete a task, a process that in essence shows the network recognizing when its output gets changed by a certain intervention, while it related the cause and effect together.

In training, the network is pushed forward to generate an output and then pushed backward to correct for errors. It was observed that the NCPs relate cause-and-effect during forward-mode and backward-mode, enabling the network to place much focused attention on the true causal structure of a task.

The team did not have to impose additional constraints on the system for it to learn this causality.

A senior author of the study, Daniela Rus has this to say about the process:

 “Causality is especially important to characterize for safety-critical applications such as flight. Our work demonstrates the causality properties of Neural Circuit Policies for decision-making in flight, including flying in environments with dense obstacles such as forests and flying in formation.”

The team tested NCPs on a series of stimulations where autonomous drones had navigation tasks performed, with each drone using inputs from a single camera to navigate. The drones were then assigned with travelling to a ‘target object’, chasing a moving object and then following marked series in different environments, which included a forest and a neighbourhood. The drones also travelled in varying weather conditions like clear skies, heavy rain and fog.

With this process, the NCPs performed on simpler tasks in good weather, outperforming them all on the very challenging tasks like chasing a  moving object in a rainstorm.

 “We observed that NCPs are the only network that pays attention to the object of interest in different environments while completing the navigation task, wherever you test it, and in different lighting or environmental conditions. This is the only system that can do this casually and actually learn the behaviour we intend the system to learn,” Rus says.

The researcher’s findings implied that the use of NCPs has the capacity to enable autonomous to successfully navigate in environments, for instance an hitherto sunny landscape that became foggy.

“Once the system learns what it is actually supposed to do, it can perform well in novel scenarios and environmental conditions it has never experienced. This is a big challenge of current machine learning systems that are not causal. We believe these results are very exciting, as they show how causality can emerge from the choice of a neural network,” he says.

The researchers can also in the future use NCPs to create larger systems, a process of aligning millions of networks could help them perform more complicated tasks.

 

 

Reference: “Causal Navigation by Continuous-time Neural Networks” by Charles Vorbach, Ramin Hasani, Alexander Amini, Mathias Lechner and Daniela Rus, 15 June 2021, Computer Science > Machine Learning.
arXiv:2106.08314

Related Posts:

  • prisoner
    Tech Advances Help Analysts Solve More Cases
  • chatgpt-nvidia
    Here's How Nvidia Is Powering The ChatGPT Frenzy
  • Apple-M3-chip-series-231030_big.jpg.large
    Apple Unveils M3, M3 Pro, and M3 Max, Trio of…
  • telecom trends
    Change In Communication: Top Trends Of…
  • mobile_abstract_2020
    The Kenyan Government Consent To Deploy Spyware On…
  • Microsoft Offered OpenAI Billions of Investment To pair Azure Cloud and ChatGPT’s Integration.
    Microsoft Offered OpenAI Billions of Investment To…
  • meta-releases-ai-model-that-can-check-other-ai-models–work—–dkp5wbl4d6jt06dz8hki9f
    Meta Develops AI to Evaluate Other AI Models
  • Meta-sets-limits-on-AI-releases-choosing-to-avoid-risky-systems
    Meta Plans to Pause AI Systems Due To its Risks

Discover more from TechBooky

Subscribe to get the latest posts sent to your email.

Tags: AIartificial intelligencemitneural networkresearchers
Ayoola

Ayoola

Ayoola Faseyi, an Abuja based Journalist with interest in Technology and Politics. He is a versatile writer with articles in many renowned News Journals.He is the Co-Founder of media brand, The Vent Republic.

BROWSE BY CATEGORIES

Select Category

    Receive top tech news directly in your inbox

    subscription from
    Loading

    Freshly Squeezed

    • AI Helps Google One Reach 150 Million Subscribers May 16, 2025
    • FT Lists Paymenow, TymeBank & Omnisient Among Africa’s Fastest-Growing Firms May 16, 2025
    • MoonPay and Mastercard Partner to Advance Stablecoin Payments May 16, 2025
    • Google Gemini Advanced Users Can Now Link to GitHub May 16, 2025
    • TikTok Accused of Violating EU Internet Content Rules May 15, 2025
    • Activists and Users Criticize NCC & Telcos Over Customer Penalties May 15, 2025

    Browse Archives

    May 2025
    MTWTFSS
     1234
    567891011
    12131415161718
    19202122232425
    262728293031 
    « Apr    

    Quick Links

    • About TechBooky
    • Advertise Here
    • Contact us
    • Submit Article
    • Privacy Policy

    Recent News

    AI Helps Google One Reach 150 Million Subscribers

    AI Helps Google One Reach 150 Million Subscribers

    May 16, 2025
    FT Lists Paymenow, TymeBank & Omnisient Among Africa’s Fastest-Growing Firms

    FT Lists Paymenow, TymeBank & Omnisient Among Africa’s Fastest-Growing Firms

    May 16, 2025
    MoonPay and Mastercard Partner to Advance Stablecoin Payments

    MoonPay and Mastercard Partner to Advance Stablecoin Payments

    May 16, 2025
    Google Gemini Advanced Users Can Now Link to GitHub

    Google Gemini Advanced Users Can Now Link to GitHub

    May 16, 2025
    TikTok Accused of Violating EU Internet Content Rules

    TikTok Accused of Violating EU Internet Content Rules

    May 15, 2025
    Activists and Users Criticize NCC & Telcos Over Customer Penalties

    Activists and Users Criticize NCC & Telcos Over Customer Penalties

    May 15, 2025
    • Login

    © 2021 Design By Tech Booky Elite

    Generic selectors
    Exact matches only
    Search in title
    Search in content
    Post Type Selectors
    • African
    • Artificial Intelligence
    • Gadgets
    • Metaverse
    • Tips
    • About TechBooky
    • Advertise Here
    • Submit Article
    • Contact us

    © 2021 Design By Tech Booky Elite

    Discover more from TechBooky

    Subscribe now to keep reading and get access to the full archive.

    Continue reading

    We use cookies to ensure that we give you the best experience on our website. If you continue to use this site we will assume that you are happy with it.Ok