Supervised Generative Reconstruction: An Efficient Way To Flexibly Store and Recognize Patterns
Tsvi Achler

TL;DR
This paper introduces supervised generative models that emulate traditional recognition algorithms while avoiding catastrophic interference, offering a brain-like approach to pattern recognition and storage.
Contribution
It demonstrates how generative models with feedback can prevent forgetting and interference, providing a novel framework for flexible and stable recognition systems.
Findings
Generative models store information as fixed points, reducing interference.
Mathematical analysis shows emulation of feedforward algorithms without catastrophic forgetting.
Brain-like capabilities and limitations are exhibited by the proposed models.
Abstract
Matching animal-like flexibility in recognition and the ability to quickly incorporate new information remains difficult. Limits are yet to be adequately addressed in neural models and recognition algorithms. This work proposes a configuration for recognition that maintains the same function of conventional algorithms but avoids combinatorial problems. Feedforward recognition algorithms such as classical artificial neural networks and machine learning algorithms are known to be subject to catastrophic interference and forgetting. Modifying or learning new information (associations between patterns and labels) causes loss of previously learned information. I demonstrate using mathematical analysis how supervised generative models, with feedforward and feedback connections, can emulate feedforward algorithms yet avoid catastrophic interference and forgetting. Learned information in…
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Taxonomy
TopicsNeural Networks and Applications · Cognitive Science and Education Research · Computability, Logic, AI Algorithms
