Scale-invariant temporal history (SITH): optimal slicing of the past in an uncertain world
Tyler A. Spears, Brandon G. Jacques, Marc W. Howard, Per B. Sederberg

TL;DR
The paper introduces SITH, a scale-invariant, neurally plausible memory model that enhances artificial agents' ability to learn from long-term past experiences across various environments.
Contribution
It proposes SITH, a novel scale-free memory representation inspired by neuroscience, improving long-term learning in AI agents compared to traditional fixed buffers.
Findings
SITH outperforms fixed buffers in learning complex video games.
SITH maintains relevant information over longer timescales.
Representing past events more clearly improves learning efficiency.
Abstract
In both the human brain and any general artificial intelligence (AI), a representation of the past is necessary to predict the future. However, perfect storage of all experiences is not feasible. One approach utilized in many applications, including reward prediction in reinforcement learning, is to retain recently active features of experience in a buffer. Despite its prior successes, we show that the fixed length buffer renders Deep Q-learning Networks (DQNs) fragile to changes in the scale over which information can be learned. To enable learning when the relevant temporal scales in the environment are not known *a priori*, recent advances in psychology and neuroscience suggest that the brain maintains a compressed representation of the past. Here we introduce a neurally-plausible, scale-free memory representation we call Scale-Invariant Temporal History (SITH) for use with…
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Taxonomy
TopicsNeural dynamics and brain function · Time Series Analysis and Forecasting · Complex Systems and Time Series Analysis
MethodsExponential Decay
