While great advances are made in pattern recognition and machine learning, the successes of such fields remain restricted to narrow applications and seem to break down when training data is scarce, a shift in domain occurs, or when intelligent reasoning is required for rapid adaptation to new environments. In this work, we list several of the shortcomings of modern machine-learning solutions, specifically in the contexts of computer vision and in reinforcement learning and suggest directions to explore in order to try to ameliorate these weaknesses.
Bridging Cognitive Programs and Machine Learning
Amir Rosenfeld,John K. Tsotsos
Published 2018 in arXiv.org
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- Publication year
2018
- Venue
arXiv.org
- Publication date
2018-02-16
- Fields of study
Mathematics, Computer Science
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