Solar Energy News  
ROBO SPACE
Scientists teach machines to learn like humans
by Staff Writers
New York NY (SPX) Dec 18, 2015


A team of scientists has developed an algorithm that captures our learning abilities, enabling computers to recognize and draw simple visual concepts that are mostly indistinguishable from those created by humans.

A team of scientists has developed an algorithm that captures our learning abilities, enabling computers to recognize and draw simple visual concepts that are mostly indistinguishable from those created by humans. The work, which appears in the latest issue of the journal Science, marks a significant advance in the field - one that dramatically shortens the time it takes computers to 'learn' new concepts and broadens their application to more creative tasks.

"Our results show that by reverse engineering how people think about a problem, we can develop better algorithms," explains Brenden Lake, a Moore-Sloan Data Science Fellow at New York University and the paper's lead author. "Moreover, this work points to promising methods to narrow the gap for other machine learning tasks."

The paper's other authors were Ruslan Salakhutdinov, an assistant professor of Computer Science at the University of Toronto, and Joshua Tenenbaum, a professor at MIT in the Department of Brain and Cognitive Sciences and the Center for Brains, Minds and Machines.

When humans are exposed to a new concept - such as new piece of kitchen equipment, a new dance move, or a new letter in an unfamiliar alphabet - they often need only a few examples to understand its make-up and recognize new instances.

While machines can now replicate some pattern-recognition tasks previously done only by humans - ATMs reading the numbers written on a check, for instance - machines typically need to be given hundreds or thousands of examples to perform with similar accuracy.

"It has been very difficult to build machines that require as little data as humans when learning a new concept," observes Salakhutdinov. "Replicating these abilities is an exciting area of research connecting machine learning, statistics, computer vision, and cognitive science."

Salakhutdinov helped to launch recent interest in learning with 'deep neural networks,' in a paper published in Science almost 10 years ago with his doctoral advisor Geoffrey Hinton. Their algorithm learned the structure of 10 handwritten character concepts - the digits 0-9 - from 6,000 examples each, or a total of 60,000 training examples.

In the work appearing in Science this week, the researchers sought to shorten the learning process and make it more akin to the way humans acquire and apply new knowledge - i.e., learning from a small number of examples and performing a range of tasks, such as generating new examples of a concept or generating whole new concepts.

To do so, they developed a 'Bayesian Program Learning' (BPL) framework, where concepts are represented as simple computer programs. For instance, the letter 'A' is represented by computer code - resembling the work of a computer programmer - that generates examples of that letter when the code is run.

Yet no programmer is required during the learning process: the algorithm programs itself by constructing code to produce the letter it sees. Also, unlike standard computer programs that produce the same output every time they run, these probabilistic programs produce different outputs at each execution. This allows them to capture the way instances of a concept vary, such as the differences between how two people draw the letter 'A.'

While standard pattern recognition algorithms represent concepts as configurations of pixels or collections of features, the BPL approach learns "generative models" of processes in the world, making learning a matter of 'model building' or 'explaining' the data provided to the algorithm. In the case of writing and recognizing letters, BPL is designed to capture both the causal and compositional properties of real-world processes, allowing the algorithm to use data more efficiently.

The model also "learns to learn" by using knowledge from previous concepts to speed learning on new concepts - e.g., using knowledge of the Latin alphabet to learn letters in the Greek alphabet. The authors applied their model to over 1,600 types of handwritten characters in 50 of the world's writing systems, including Sanskrit, Tibetan, Gujarati, Glagolitic - and even invented characters such as those from the television series Futurama.

In addition to testing the algorithm's ability to recognize new instances of a concept, the authors asked both humans and computers to reproduce a series of handwritten characters after being shown a single example of each character, or in some cases, to create new characters in the style of those it had been shown.

The scientists then compared the outputs from both humans and machines through 'visual Turing tests.' Here, human judges were given paired examples of both the human and machine output, along with the original prompt, and asked to identify which of the symbols were produced by the computer.

While judges' correct responses varied across characters, for each visual Turing test, fewer than 25 percent of judges performed significantly better than chance in assessing whether a machine or a human produced a given set of symbols.

"Before they get to kindergarten, children learn to recognize new concepts from just a single example, and can even imagine new examples they haven't seen," notes Tenenbaum.

"I've wanted to build models of these remarkable abilities since my own doctoral work in the late nineties. We are still far from building machines as smart as a human child, but this is the first time we have had a machine able to learn and use a large class of real-world concepts - even simple visual concepts such as handwritten characters - in ways that are hard to tell apart from humans."


Thanks for being here;
We need your help. The SpaceDaily news network continues to grow but revenues have never been harder to maintain.

With the rise of Ad Blockers, and Facebook - our traditional revenue sources via quality network advertising continues to decline. And unlike so many other news sites, we don't have a paywall - with those annoying usernames and passwords.

Our news coverage takes time and effort to publish 365 days a year.

If you find our news sites informative and useful then please consider becoming a regular supporter or for now make a one off contribution.
SpaceDaily Contributor
$5 Billed Once


credit card or paypal
SpaceDaily Monthly Supporter
$5 Billed Monthly


paypal only


.


Related Links
New York University
All about the robots on Earth and beyond!






Comment on this article via your Facebook, Yahoo, AOL, Hotmail login.

Share this article via these popular social media networks
del.icio.usdel.icio.us DiggDigg RedditReddit GoogleGoogle

Previous Report
ROBO SPACE
Tech titans pledge $1 bn for artificial intelligence research
San Francisco (AFP) Dec 12, 2015
Several big-name Silicon Valley figures have pledged $1 billion to support a non-profit firm that on Friday said it would focus on the "positive human impact" of artificial intelligence. Backers of the OpenAI research group include Tesla and SpaceX entrepreneur Elon Musk, Y Combinator's Sam Altman, LinkedIn co-founder Reid Hoffman, and PayPal cofounder Peter Thiel. "It's hard to fathom h ... read more


ROBO SPACE
Wearable energy generator uses urine to power wireless transmitter

New catalyst paves way for bio-based plastics, chemicals

Turning poop into plastic at Paris climate talks

Scientists unveil urine-powered wearable energy generator

ROBO SPACE
Scientists teach machines to learn like humans

SSL selected for NASA project to develop robotic on-orbit satellite assembly

Tech titans pledge $1 bn for artificial intelligence research

Robot adds new twist to NIST antenna measurements and calibrations

ROBO SPACE
UN report takes global view of 'green energy choices'

U.S. offshore wind project wraps up inaugural construction season

Dogger Bank lidar confirms technology meets met masts for wind data collection

Pilot Hill Wind Project Closes Financing from GE and MetLife

ROBO SPACE
California proposes rules for self-driving cars

Ford to test self-driving cars on California roads

European lawmakers to probe EU role in VW scandal

India's top court bans new diesel cars in capital

ROBO SPACE
CWRU researchers tailor power source for wearable electronics

Physicists discover material for a more efficient energy storage

Better catalysts for green energy

German physicists see landmark in nuclear fusion quest

ROBO SPACE
Putin Denies Russia Invested $3B in Turkey's Akkuyu Nuclear Power Plant

ORNL process may set new course for extracting uranium from seawater

China to Operate 110 Nuclear Reactors by 2030

Belgium restarts nuclear reactor, angers Germany

ROBO SPACE
Recent US fuel economy improvements on par with 1970s

MIT Research offers new approach for China's carbon trading system

UN climate deal blow to fossil fuels: green groups

Addressing climate change should start with energy efficiency

ROBO SPACE
Climate stress forces trees to hunker down or press on

Irish police go hi-tech to combat Christmas tree thieves

US forest products in the global economy

N. Korea 'declares war' on deforestation at Paris climate talks









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.