The method can also be used for machine learning, data analysis and computer vision, researchers said.
Humans learn to very quickly identify complex objects and variations of them. We generally recognise an 'A' no matter what the font, texture or background, for example, or the face of a coworker even if she puts on a hat or changes her hairstyle.
We also can identify an object when just a portion is visible, such as the corner of a bed or the hinge of a door.
The researchers studied human performance in "random projection" tests to find how well humans learn an object.
They presented test subjects with original, abstract images and asked whether they could correctly identify that same image when randomly shown just a small portion of it.
"We hypothesised that random projection could be one way humans learn," said Rosa Arriaga, from Georgia Tech.
"The short story is, the prediction was right. Just 0.15 per cent of the total data is enough for humans," she said.
Machines performed as well as humans, which provides a new understanding of how humans learn.
The researchers wanted to come up with a mathematical definition of what typical and atypical stimuli look like and, from that, predict which data would be hardest for the human and the machine to learn.
Humans and machines performed equally well, demonstrating that indeed one can predict which data will be hardest to learn over time.
The researchers created three families of abstract images at 150x150 pixels, then very small 'random sketches' of those images. Test subjects were shown the whole image for 10 seconds, then randomly shown 16 sketches of each.
"We were surprised by how close the performance was between extremely simple neural networks and humans," Vempala said.
"This fascinating paper introduces a localised random projection that compresses images while still making it possible for humans and machines to distinguish broad categories," said Sanjoy Dasgupta, professor at the University of California San Diego.
The study was published in the journal Neural Computation.
You’ve hit your limit of {{free_limit}} free articles this month.
Subscribe now for unlimited access.
Already subscribed? Log in
Subscribe to read the full story →
Smart Quarterly
₹900
3 Months
₹300/Month
Smart Essential
₹2,700
1 Year
₹225/Month
Super Saver
₹3,900
2 Years
₹162/Month
Renews automatically, cancel anytime
Here’s what’s included in our digital subscription plans
Access to Exclusive Premium Stories Online
Over 30 behind the paywall stories daily, handpicked by our editors for subscribers


Complimentary Access to The New York Times
News, Games, Cooking, Audio, Wirecutter & The Athletic
Business Standard Epaper
Digital replica of our daily newspaper — with options to read, save, and share


Curated Newsletters
Insights on markets, finance, politics, tech, and more delivered to your inbox
Market Analysis & Investment Insights
In-depth market analysis & insights with access to The Smart Investor


Archives
Repository of articles and publications dating back to 1997
Ad-free Reading
Uninterrupted reading experience with no advertisements


Seamless Access Across All Devices
Access Business Standard across devices — mobile, tablet, or PC, via web or app