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Learning to Reason with Third Order Tensor Products
Imanol Schlag · Jürgen Schmidhuber

Tue Dec 04 07:45 AM -- 09:45 AM (PST) @ Room 210 #89

We combine Recurrent Neural Networks with Tensor Product Representations to learn combinatorial representations of sequential data. This improves symbolic interpretation and systematic generalisation. Our architecture is trained end-to-end through gradient descent on a variety of simple natural language reasoning tasks, significantly outperforming the latest state-of-the-art models in single-task and all-tasks settings. We also augment a subset of the data such that training and test data exhibit large systematic differences and show that our approach generalises better than the previous state-of-the-art.

Author Information

Imanol Schlag (IDSIA)
Jürgen Schmidhuber (Swiss AI Lab, IDSIA (USI & SUPSI) - NNAISENSE)

Since age 15, his main goal has been to build an Artificial Intelligence smarter than himself, then retire. The Deep Learning Artificial Neural Networks developed since 1991 by his research groups have revolutionised handwriting recognition, speech recognition, machine translation, image captioning, and are now available to billions of users through Google, Microsoft, IBM, Baidu, and many other companies (DeepMind also was heavily influenced by his lab). His team's Deep Learners were the first to win object detection and image segmentation contests, and achieved the world's first superhuman visual classification results, winning nine international competitions in machine learning & pattern recognition. His formal theory of fun & creativity & curiosity explains art, science, music, and humor. He has published 333 papers, earned 7 best paper/best video awards, the 2013 Helmholtz Award of the International Neural Networks Society, and the 2016 IEEE Neural Networks Pioneer Award. He is also president of NNAISENSE, which aims at building the first practical general purpose AI.

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