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Learning is often assumed to improve with repetition. When tasks are practiced repeatedly, performance is expected to stabilize and skills to consolidate.
Under conditions of uncertainty, this process becomes fragile.
This article explains why learning fails to consolidate when rules, contingencies, or feedback remain unstable, even when practice is frequent and effort is sustained.
In this context, rules do not refer to formal instructions or explicit guidelines. They refer to the underlying and repeatable relationships between cues, actions, and outcomes that allow predictive models to stabilize during learning.
For learning to consolidate, cognitive systems rely on:
These conditions allow prediction error to decrease over time, enabling internal models to converge and skills to become durable.
When these conditions are met, practice leads to stable improvement.

Under uncertainty, the structure that supports learning weakens.
Rules may:
As a result:
Learning remains provisional rather than cumulative.

A common assumption is that more practice will eventually overcome instability. In uncertain environments, repetition alone does not resolve the problem.
When rules and feedback remain unstable:
Experience accumulates, but it does not settle into a stable skill.

Under uncertainty, performance may improve temporarily as individuals adapt to local patterns or short-term regularities.
However, when conditions shift:
This pattern is often misinterpreted as inconsistency or poor retention. In reality, it reflects learning that never fully stabilized.
The primary constraint in these environments is reduced predictive reliability. Secondary cognitive costs emerge as a consequence.
Because internal models cannot settle:
These effects are structural, not motivational.
Fragile learning under uncertainty is often attributed to:
While these factors may matter in stable environments, they are insufficient explanations when rules and feedback remain unreliable.
Misattributing the cause leads to inappropriate corrective strategies that do not address the underlying constraint.
Learning instability is a direct consequence of uncertainty. When predictive models cannot reliably converge, skill acquisition remains provisional and susceptible to breakdown.
This pattern reflects broader principles of Cognitive Performance Under Uncertainty, where informational instability—not effort or engagement—limits consolidation.
When learning fails to stabilize despite repeated practice, the issue is not always how much training occurred or how it was delivered.
It may instead reflect the absence of stable rules and reliable feedback needed for predictive models to converge.
Understanding this distinction clarifies why learning can remain fragile in uncertain environments, even under sustained effort.








Welcome to the Research and Strategy Services at in today's fast-paced.

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