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Monday, November 21, 2016

New AI algorithm taught by humans learns beyond its training | Science Daily

"Researchers have designed an algorithm that learns directly from human instructions, rather than an existing set of examples, and outperformed conventional methods of training neural networks by 160 per cent." summarizes ScienceDaily. 

Hey Siri, how's my hair?
 
This figure compares a traditionally trained algorithm to Aarabi and Guo's heuristically trained neural net. The left and centre columns show an aggressive and conservative image-recognition algorithm trained to recognized human hair, compared to the more precise heuristically trained algorithm at right.
Photo: Courtesy - IEEE Trans NN & LS

Your smartphone may soon be able to give you an honest answer, thanks to a new machine learning algorithm designed by U of T Engineering researchers Parham Aarabi and Wenzhi Guo.

The team designed an algorithm that learns directly from human instructions, rather than an existing set of examples, and outperformed conventional methods of training neural networks by 160 per cent.

But more surprisingly, their algorithm also outperformed its own training by nine per cent -- it learned to recognize hair in pictures with greater reliability than that enabled by the training, marking a significant leap forward for artificial intelligence.

Aarabi and Guo trained their algorithm to identify people's hair in photographs -- a much more challenging task for computers than it is for humans.

"Our algorithm learned to correctly classify difficult, borderline cases -- distinguishing the texture of hair versus the texture of the background," says Aarabi. "What we saw was like a teacher instructing a child, and the child learning beyond what the teacher taught her initially."

Humans "teach" neural networks -- computer networks that learn dynamically -- by providing a set of labeled data and asking the neural network to make decisions based on the samples it's seen. For example, you could train a neural network to identify sky in a photograph by showing it hundreds of pictures with the sky labeled.

This algorithm is different: it learns directly from human trainers. With this model, called heuristic training, humans provide direct instructions that are used to pre-classify training samples rather than a set of fixed examples. Trainers program the algorithm with guidelines such as "Sky is likely to be varying shades of blue," and "Pixels near the top of the image are more likely to be sky than pixels at the bottom."

Their work is published in the journal IEEE Transactions on Neural Networks and Learning Systems.
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Additional resources
Journal Reference:
  1. Wenzhangzhi Guo, Parham Aarabi.Hair Segmentation Using Heuristically-Trained Neural Networks. IEEE Transactions on Neural Networks and Learning Systems, 2016; 1 DOI: 10.1109/TNNLS.2016.2614653
Source: ScienceDaily