Predictive Attractor Models
Ramy Mounir, Sudeep Sarkar

TL;DR
Predictive Attractor Models (PAM) offer a biologically plausible, online learning sequence memory architecture that avoids catastrophic forgetting and can generate multiple future possibilities, advancing AI and cognitive science.
Contribution
PAM introduces a novel, biologically inspired sequence memory model that learns online, prevents forgetting, and generates multiple future predictions using attractor dynamics.
Findings
PAM learns sequences with only one pass per input.
PAM avoids catastrophic forgetting through lateral inhibition.
PAM can generate multiple future predictions from the same context.
Abstract
Sequential memory, the ability to form and accurately recall a sequence of events or stimuli in the correct order, is a fundamental prerequisite for biological and artificial intelligence as it underpins numerous cognitive functions (e.g., language comprehension, planning, episodic memory formation, etc.) However, existing methods of sequential memory suffer from catastrophic forgetting, limited capacity, slow iterative learning procedures, low-order Markov memory, and, most importantly, the inability to represent and generate multiple valid future possibilities stemming from the same context. Inspired by biologically plausible neuroscience theories of cognition, we propose \textit{Predictive Attractor Models (PAM)}, a novel sequence memory architecture with desirable generative properties. PAM is a streaming model that learns a sequence in an online, continuous manner by observing each…
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Taxonomy
TopicsNeural Networks and Applications
MethodsSparse Evolutionary Training
